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Review

Amalgamation of Customer Relationship Management and Data Analytics in Different Business Sectors—A Systematic Literature Review

by
Lewlisa Saha
1,
Hrudaya Kumar Tripathy
1,
Soumya Ranjan Nayak
2,
Akash Kumar Bhoi
3,4,* and
Paolo Barsocchi
4,*
1
School of Computer Engineering, Kalinga Institute of Industrial Technology, Bhubaneswar 751024, India
2
Amity School of Engineering and Technology, Amity University Uttar Pradesh, Noida 201301, India
3
Department of Electrical and Electronics Engineering, Sikkim Manipal Institute of Technology, Sikkim Manipal University, Majitar 737136, India
4
Institute of Information Science and Technologies, National Research Council, 56124 Pisa, Italy
*
Authors to whom correspondence should be addressed.
Sustainability 2021, 13(9), 5279; https://doi.org/10.3390/su13095279
Submission received: 17 March 2021 / Revised: 29 April 2021 / Accepted: 3 May 2021 / Published: 9 May 2021
(This article belongs to the Special Issue Sustainable Customer Relationship Management)

Abstract

:
Customization of products or services is a strategy that the business sector has embraced to build a better relationship with the customers to cater to their individual needs and thus providing them a fulfilling experience. This whole process is known as customer relationship management (CRM). In this context, we extensively surveyed 138 papers published between 1996 and 2021 in the area of analytical CRM. Although this study consisted of papers from different business sectors, a fair share of focus was directed to the telecommunication industry and generalized CRM techniques usages. Different science and engineering-based data repositories were studied to ascertain significant studies published in scientific journals, conferences, and articles. The research works on CRM were considered and separated into IT and non-IT-based techniques to study the methods used in different business sectors. The main target behind implementing CRM is for the better revenue growth of the company. Different IT and non-IT-based techniques are used in the analytical CRM area to achieve this target, and researchers have been actively involved in this domain. The purpose of the research was to show the impact of IT-based techniques in the business world. A detailed future course of research in this area was discussed.

1. Introduction

These days CRM is the center of attraction of every other scholar and expert. As each day passes by, many companies are adopting the concept of CRM in their business to stay updated with the customer-oriented market. It is gradually sinking in the desperate need of exhaustively detailed familiarity of their customers’ behavior to strengthen their bond with their customers. The evolution of highly efficient algorithms and platforms has altered the way of connecting with customers, leading to a better situation with the marketing, sales, and customer service functions in organizations. From a professional’s perspective, CRM serves to grasp a full insight into one’s customers’ needs and desires and design convenient platforms for the customers to improve their relationship with the companies. This paper presents a detailed overview of customer relationship management’s different aspects and the analytical aspect of it in different business organizations. Every business group’s main target is to emerge an abiding relationship with its customers to cultivate its balance in today’s flourishing market. The customers nowadays anticipate the best services and products and want a personalized service in which they expect to get precisely what they call for and also at a quick pace.
Marketing scholars are improving their perception concerning the importance and method of reciprocal communication between clients and retailers by gaining knowledge about the essence and extension of CRM. Intellectuals involved with multiple marketing branches are also committed to contemplating and examining the abstract infrastructure of managing the connection with the customers. They are intrigued by the methods used for classifying and selecting the customers; personalized connection with every customer; primary account management and clientele’s business progress; density marketing, loyalty project, cross-selling and up-selling events, and different forms of collaborating with customers. It also covers co-branding, joint-marketing, co-development, and alternative forms of crucial alliances. Even though the current market is all about gaining and retaining customers, not all customers are equally important for a particular organization. That is why choosing the right customer is essential for future customer retention purposes. Every business is different; hence their targeted group of customers is also different. Therefore, segmentation of the customer type is necessary. Acquisition of customers is the first step of a customer life cycle, which is required for a long-term relationship between the customers and the organization. With time the business focus has drifted from transactional to relationship marketing, and the customers are no longer just a commercial audience but business associates. The involvement of technology in the management has increased, and so has the value of information over the years due to the need to personalize the market approach. Some of the areas where CRM strategy is being used are hotel industry, banking and insurance sectors, healthcare, higher education, agriculture, and so on.
One of the most popular business-sector deals with the most diverse group of customers is the telecommunication industry. In this day and age, where people, irrespective of their age, gender identity, profession, and location, use some communication medium, the telecom sector probably has the most requirement to study their customers’ needs. Designing the service according to the customers’ needs helps any business earn customer satisfaction and loyalty. Currently, the mature telecom market needs to properly understand customers’ needs so that they can retain the existing customer by gaining their loyalty. Initially, when the telecommunication industry was new in the business scenario, the market was predominantly young, and new customers’ incoming was also very high. With time the market has matured to a level where the competition among service providers is extremely high. As of March 2019 [1], the overall teledensity of the Indian population has risen to 90.1%. As the number of new incoming customers reduces with time, the need to retain the existing customer has increased over the years. The teledensity of urban India as of March 2019 was 159.66%, and that of rural India was 57.5%. This shows the vast difference in the people’s socio-economic status depending on the place they belong. For example, the metro city teledensity of Delhi was 238.57%, Kolkata was 165.51%, and Mumbai was 165.62%, while teledensity of the state of Bihar was 59.95%, Assam was 68.81%, and so on. Therefore, place plays a huge role in defining the needs and requirements of the customers. This condition urges us to take the next step in customer relationship management, which is customer segmentation. Every customer out there may not be the ideal target customer for that particular business. A company needs to understand whether investing in a certain customer is worth it or not. If a certain customer is going to churn in the end, it would not be ideal for a company to invest in them, and hence comes the crucial step of customer churn detection.
The Indian telecommunication industry is mostly based on customers’ behavioral data rather than the customer demographic data, which also plays a vital role in this. Study [1] suggested that 96% of Indian subscribers are constantly changing service providers searching for a better deal. Since it is much costlier to get a new customer than trying to keep an old one, the Indian telecommunication industry is very interested in bringing down the churn rate, which leaves us with a huge opportunity to explore the area. A customer’s churn can be of two types: voluntary and involuntary. Involuntary churn can be due to reasons such as reallocation of the customer to a different place, death, and so on. These types of churns are excluded from the churn prediction analysis.
The remaining paper’s organization is as follows: Section 2 provides a brief idea about the theoretical foundation of CRM and CRM analytics. Section 3 describes the review methodology. The distribution of the articles reviewed is presented in Section 4. Section 5 discusses the referred articles. Section 6 presents the discussion and the future scope of the review. Section 7 concludes the paper.

2. Theoretical Foundation

2.1. Customer Relationship Management

CRM is a business policy that has existed since the very concept of business started. It is a concept and strategy used to build a relationship with the customers, which helps the companies increase revenue, customer value, and service quality by understanding and satisfying every customer’s needs. The concept of CRM itself is old, but due to the continuous increase in the market demand, the need to customize every product or service offered by a company has become a basic necessity. As stated by Chen and Popovich [2], CRM links the front- and back-office functions with the customers. CRM is a combination of many different customer-focused management approaches, which helps build a long-term relationship with the customers.
CRM system helps many business functionalities such as data warehousing, sales force automation, data mining, decision support, and reporting tools. As shown in Figure 1, there are mainly three types of CRM: operational, analytical, and collaborative systems. The operational CRM system uses automation and increased efficiency. The analytical CRM system is used to analyze customer data, and the collaborative CRM system is used to manage and integrate communication channels and customer interaction touchpoints.
Successful customer relationship management consisting of both front- and back-office applications is mainly managed by technology by analyzing the data. The front office maintains the continuous flow of information with the customers, and the back office analyzes these. As stated by Renartz et al. [3], the key theoretical foundation of CRM research is the literature on relationship marketing. According to the authors, the first aspect is building and nurturing the relationship with the current customers. The second aspect is acknowledging that the relationships evolve with phases by the CRM process. Thirdly, the evolution of relationships impacts the organization, and the firms are supposed to handle the interaction and the relationship with their customers differently at each stage, and for the fourth aspect, the non-homogeneous distribution of the relationship value to the firm.

2.1.1. Customer Life Cycle

According to Krishna and Ravi [4], there are three phases in the customer’s life-cycle model, which includes, acquiring new customers, enhancing the profitability of existing customers, and retaining profitable customers, whereas Kuruganthi and Basu [5] in their work showed a customer’s life-cycle model with four phases to it, including, acquiring the right customer, enhancing usage from existing customers, selling more products and services to existing customers, and retaining the right customer.
As shown in Figure 2, in the first stage, new customers are acquired through proper customer segmentation following target marketing. Advertising products do direct or target marketing to a specific group of customers. Then, in the second stage, different CRM techniques enhance customer usability and increase profit. The third stage manages the existing customers by selling more products or services to their customers, which ultimately leads to higher profit. In the fourth stage, a company retains the right customer who helps gain more benefits. This can be done by determining the customer churn rate and performing some sentiment analysis.

2.1.2. Customer Acquisition

According to Kuruganthi and Basu [5], customer acquisition mainly involves three steps, as shown in Figure 3. Firstly, to decide whom to target as your customer to offer the product or service. Secondly, to determine the type of product or service to provide a particular customer and, finally, provide those products and services to the customers. The first step is decided by customer segmentation, which breaks down the customers into different groups, which leads us to the second step, where depending on the segmented groups, the products and services are decided. Lastly, various distribution methods are agreed to keep in mind the criteria of the derived groups.

2.2. CRM Analytics

According to Reinartz et al. [3], information technology is a critical moderator of a firm’s economic performance. CRM analytics is the implementation of different analytical techniques in CRM for better customer relationship maintenance. The possibilities of IT-based CRM techniques go to a considerable extent, from identifying the customers’ need to improve the organization’s performance in the market. The full advantages of implementing IT in CRM enable companies to identify customer patterns, understand their behavior, perform predictive analysis, customize products and services, etc. With all the information from the customer interaction, the company can get an overall view of the customer’s needs and predict what kind of product and service to offer. Hence effective management of the information is a vital part of CRM, and data warehouses, enterprise resource planning (ERP) systems, and the Internet are central infrastructures to CRM applications. These days businesses are mostly based on their data analysis capabilities. According to Anshari et al. [6], only 8% of businesspersons have all-inclusive and productive solutions in collecting and analyzing these data. According to the data analytics survey in an organization conducted by Evans Data Corporation (Figure 4), departments that deal with customers such as marketing, sales, and customer service are the predominant users for 38.2% of all big data and advanced analytical applications. Among these, the marketing department (14.4%), IT (13.3%), and research for 13% are the most frequent users.
In the last two decades, the amount of data has grown excessively due to the IT industry’s growth. Alongside there has been considerable progress in data analysis. Different new approaches and techniques have been introduced to collect the information from the collected data. The relevant information obtained by applying the analytic data techniques is already hidden in the gathered raw data. These analytic data techniques can be used in many different areas. Data analysis deals with both structured and unstructured forms of data and in vast quantities, which would be very hard to work on using conventional database management systems. Big data open a massive collection of applications and opportunities in multiple vertical sectors including, but not limited to, telecommunication, retail business, insurance, and financial services, healthcare, television and media, utility services, medicine and pharmaceutical, governance, and national security.

3. Review of Different Methodology

3.1. Techniques Referred to in the Review

As Krishna and Ravi [4], in their survey have reviewed articles using EC techniques, therefore, in our review, we broadened our research area by including both IT and non-IT-based methods. In Table 1, a brief overview of the IT-based techniques used in the reviewed articles is discussed, along with their advantages and disadvantages.

3.2. Flowchart of the Review Methodology

In this section, a flowchart of the review process is shown in Figure 5, which shows the step-by-step process that was followed to perform the survey on the different aspects of CRM and its application from a different business perspective. Both online and offline data repositories were referred to for this survey, and based on preferences, the papers were sectioned for further studies.

4. Distribution of the Articles Reviewed

For this survey, a total of 138 papers were considered. Five papers mainly concentrate on discussing the background of CRM and its working in a very generalized perspective; 41 articles are studies on techniques used in different aspects of CRM. There are 91 papers that are business-specific CRM applications focusing on the healthcare system, hotel management, hospitality management, banking, retail industry, and so on and among which 50 research papers focus specifically on the CRM application in the telecommunication industry.
Figure 6 shows a year-wise citation representation of the articles reviewed, and Figure 7 shows the number of publications each year.
A business-specific description is presented in Figure 8, which indicates the number of articles from each area, and a technique-wise representation is given in Figure 9.
Figure 10 represents the areas where the techniques have been applied, and Figure 11 shows the number of papers that referred to different aspects of CRM in the telecom industry.
Finally, Figure 12 shows the accuracy obtained by different authors using supervised learning techniques (decision tree, Naïve Bayes, support vector machine, neural network, regression analysis).

5. Review of the Related Works

5.1. Background Study on CRM

Customer relationship management (CRM) is more than just a buzzword going around in the business world. It is a process of building a proper relationship between the customers and the company so that both sides can gain out of it. An enormous amount of research work has been done and still going on implementing CRM in the business sectors properly. However, for that, we need to understand the working and details behind that concept of CRM. Rababah et al. [7] conducted an extensive study on the CRM processes concentrating on different viewpoints, types, and levels of CRM processes. Their research revealed four critical positions: customer-facing level processes, cross-functional CRM processes, customer-oriented processes, and CRM macro-level processes. According to their work, a better understanding of the different levels of CRM processes is required. To implement these processes, businesses need to grasp better process reengineering and effective management of the changes. Parvatiyar and Seth [8], in their work, ventured into the theoretical foundation of customer relationship management to study the existing literature on marketing and other areas that contribute to CRM. They proposed a process framework on CRM that is based on other process models for relationship development. Their paper also showed some of the implementation challenges that CRM faces and its potential to become a discipline of its own. In their work, Khodakarami and Chan [9], suggested that the effect of CRM on the customer knowledge formation process also includes internalization, combination, socialization, and externalization. The authors’ analysis revealed an analytical CRM system actively supports the combination process. Their work showed that collaborative systems support externalization and socialization within an organization, whereas the operating system allows socialization with customers and collaborative and analytical support internalization process. Understanding the customers and maintaining the relationship between them and the company has become a common trait among the researchers. Reinartz et al. [4], in their work, concentrated on theorizing the CRM process, validating the construct, and examining the effect of CRM process implementation on the organizational performances. They used two cross-sectional studies on four different industries and three countries to answer their research question. Their first outcome was a tentatively working CRM process, and the second was a positive effect of CRM implementation on company performance. CRM, the amalgamation of people, processes, and technology, is used to retain customers by developing their relationships. However, a successful application of the concept can be hard for many companies. Chen and Popovich [2], in their work, provided a better understanding of the reengineering of the customer-focused business process.

5.2. CRM Analytics

Hypotheses testing is one of the widespread techniques used in CRM analytics to validate their assumptions’ feasibility. Authors have used hypotheses testing to show IT’s influence on CRM based on different models and techniques. Similarly, Li et al. [10], in their study, showed that the functional benefits of CRM lead to firms’ high revenue per employee and high profitability. In contrast, the strategic interests of CRM lead to firms’ high customer satisfaction, high profitability, and market valuation. Their work’s limitation lies in the lack of comprehensive analyses of the different types of usage and their corresponding performance effect. Nam et al. [11] also challenged the lack of proper research on business analytics (BA) by working on customer relationship management in BA using the empirical model. According to the result, data management connects IT competence and BA use, whereas customer response connects BA use and CRM performance. In another work, Dong et al. [12] used hypotheses testing as one of the first efforts to examine and explain big data analytics’ effect on the market performance by using social media analytics as an instance. Here the authors described the reason behind the creation of superadditive value in social media analytics and further extended their theory by considering differences between different enterprises (small, medium, and large) that ultimately combine social media diversity with big data analytics.
The empirical analysis showed a positive effect on market performance when social media interacted with big data analytics. It was used by Fink et al. [13] in their paper, which aimed at connecting the gap between information technology (IT) value creation and business intelligence (BI) by developing and testing a model based on BI value creation. Nyadzayo and Khajehzadeh [14] tried to explain how the quality of CRM influences service quality, customer value, and customer satisfaction, which also helps with customer loyalty. They also took into consideration the effect of brand image on the relationship with the customer. The findings state that a better brand image indirectly helps achieve customer satisfaction and thus increases customer loyalty. Verhoef [15] used the survey to get the different impacting factors of customer retention. According to their research, aspects such as affective commitment and loyalty programs positively impact customer retention and customer share development.
Structural equation modeling (SEM) is a commonly used statistical analysis technique in CRM analytics. Mikalef et al. [16] addressed the question of “how big data can help attain a competitive advantage.” The study covered the dynamic capabilities view, resource-based view, and the link between a firm’s significant data analytics capability (BDAC) and competitive performance. They proposed that BDACs empower firms to predict and adapt to the continuously changing market scenarios. Shi et al. [17] integrated the concept of bias when it comes to a customer’s brand loyalty. According to the results, inertia influences a customer’s brand loyalty. They also showed that deliberate inertia and cognitive lock-in have a conclusive outcome on it. In another work Benitez et al. [18], it was established that IT offers a business the flexibility of opportunity exploration, which helps exploit those opportunities by using SEM. E-CRM is vastly used in significant companies without much concern regarding the misuse of information. Pradana et al. [19] addressed the issue as mentioned above by referring to PT Garuda Indonesia, known for using e-CRM to provide better service.
According to the result, the quality of service and the behavior of the kinds of staff influence customer satisfaction. Navimipour and Soltan [20] tried to determine the most effective factors for a better performing E-CRM. They assessed the causal model and reliability and validity of the measurement model. The result of the analysis shows the effects of technology on the performance start with the infrastructure’s capability, ease of use, and E-learning systems. The research also indicated the positive influence of the customer cost on customer relationship performance.
Equivalence class transformation is a depth-first search algorithm used for proper itemset mining, a significant step in association rule mining. Chen et al. [21] used the behavioral pattern of customers to define the usage characteristics and calculate customers’ heterogeneity. According to their research, behavioral attributes provide a better measure for customer segmentation than demographic characteristics.
Topic modeling is an unsupervised machine learning technique used for text mining and was used by Prollochs et al. [22] in their work on strategic management. The authors’ work, which necessitates a valuation of a firm’s internal and external situations, extended management tools by building an automated text mining framework. They also quantified the usage of language and two scopes—risk and optimism—which divulges into a firm’s strong and weak points by recognizing business units, events, and identifying processes that are prone to risk, and studying it concerning competitors or the market.
Gradient boosting machine (GBM), a broadly used machine learning technique for regression and classification problems, has a wide range of practical applications. Hu et al. [23] proposed a two-part framework: development of the downward prediction process and establishment of the methodology for identifying the cause behind the downward trend. This approach can find the silent sufferers, and these bad experiences are used to develop the framework. The marketing A/B test was used to validate the framework, and it lifted the purchase volume by 88.5%.
Clustering divides massive datasets into smaller groups where the smaller groups are known as clusters containing similar objects. This data-mining technique is very much applied to customer segmentation in CRM. In their paper, Manu [24] provided a detailed study of the different clustering techniques that are used in CRM.
Some non-IT-based techniques are used in CRM analytics for different studies. One example of such a study Krishnamoorthi et al. [25] extends an existing model to business analytics to identify elements of technological assets and their business analytics capability to grasp the mechanism of business value creation means of numerous case studies. They showed how analytical resources influence business performance by creating operational and organizational performance measures. Again, QFD (quality function development), a non-IT-based customer-oriented technique used for product design, uses a generalized customer requirement to gain maximum customer satisfaction. However, with time, the customers’ needs have diversified due to their varied preferences. Luo et al. [26] proposed a QDF-based product planning approach that considers the heterogeneity of CRs by implementing consumer choice behavior analysis. The author introduced customers’ purchase choice rules in the QDF-based product planning method, proposed two new QDF-based optimization models under deterministic and multinomial logit consumer choice rules, and extended these models for both continuous and discrete target values.
Few kinds of research offer a brief idea about the current work in CRM analytics and the application of IT in it. Anshari et al. [6] aimed to examine the effect of big data in CRM’s scenario. The data were collected through literature review and thematic analysis from recent studies for this research. According to the survey, CRM, combined with big data, has facilitated businesses to become more dynamic in marketing strategy. Soltani and Navimipour [27] addressed the lack of comprehensive and methodic study on analyzing the techniques used to build and maintain a profitable relationship. They conducted a detailed survey on the most recent technologies used in CRM by considering five groups: knowledge management, data quality, E-CRM, data mining, and social CRM. Krishna and Ravi [3] surveyed 78 papers published throughout 1998 and 2015, which were based explicitly on evolutionary computing techniques in CRM tasks. Through their investigation, the authors showed the adaptability of EC methods in CRM when applied to the service industry. Ngai et al. [28] suggested providing a classification scheme to classify articles over 2000 and 2005, which covered 24 journals. These included categorizations based on four CRM dimensions and seven data-mining functions. Table 2 discusses the techniques and datasets used in each of the articles reviewed in this section.
An additional classification of the CRM elements was performed based on the data-mining techniques. The research revealed that most research was conducted in customer retention, and classification and association models were the most frequently used ones. Earley [46] discussed different aspects and advantages of CDPs (customer data platforms), an aggregation of data from various sources, to get a clear idea about the customer. Bahrami et al. [47] evaluated the impact of information technology on CRM by developing a framework for the necessary infrastructure. According to them, the result should be a better relationship with the customers, workable advantages, and cost reduction in the current market where CSPs (communication service providers) have very similar service offers; providing a better customer experience is a significant priority. In their work, Spiess et al. [48] investigated different ways of implementing big data to improve customer experience. The authors mainly concentrated on the technology from Alcatel-Lucent and Bell Labs for improving business performances. According to their statement, Alcatel-Lucent provides a proper structural linkage between the customer and CSP life cycle and the tool, improving net promoter score and higher customer value.

5.3. Business-Specific CRM Applications

The banking sector is a data-intensive subject due to its massive number of customers, which requires better strategic management. This makes it a desirable area for different research work. Olaniyan et al. [49] addressed the current problem of achieving customer satisfaction being faced by the Nigerian Banking industry. According to the authors, qualitative research was performed to identify the purpose of customer satisfaction. As stated by the authors, the data were exported to WEKA and then analyzed. Again, Hassani et al. [50] collected and analyzed the data sources, research focus, technologies being used, and data analytical tools, giving a better understanding of DM’s application in the banking sector. Iriqat and Daqar [51] determined the role of CRM on customer satisfaction in the banking sector of Palestine. The data collected showed that the two predictors—service quality and CRM system integration—explained 64.2%v of the variance showing a positive impact on customer satisfaction. In another research, Ghalenoonie and Sarvestani [52] demonstrated the efficiency of properly collected human resources through a case study on private banks of Shiraz city. The obtained data were analyzed to prioritize human factors in CRM. According to the findings, the view, understanding, and self-recognition are the elements of human resources that have the most positive impact on CRM. Ennew and Binks [53] worked on customer retention in the bank and other small businesses in the UK. They focused on the relationship between service quality and customer relationships and the impact of customer loyalty on retention. Their results show a positive effect on retention and loyalty.
Online marketing is a significant business domain in today’s world, opening it up as a research hotspot for researchers. Chiang [54], concentrated on gathering customer knowledge by using a data-driven CRM system of the travel industry of Taiwan. According to the result, air travelers can be partitioned into eight markets using the proposed model. AHP can be used to rank the markets, and the customer value equation can be used to estimate the customers’ values. Ballestar et al. [55] presented a customer segmentation of a cashback website depending on the criteria of their commercial activity and website’s social network activity. According to this study, the customer’s behavior and commercial activity on the website are determined by its role on the social network. Customer segmentation shows their profitability and seniority, and the findings explain their behavior in e-commerce and the importance of using customized retention strategies.
The retail sector is one of the most significant marketing sectors and contains customers all around the globe. Hence it is necessary to analyze the data available for better business performance. Gilboa et al. [56] interviewed owners of small businesses and customers to identify that communication and personal care help gain customers’ trust and commitment. Amendola et al. [57] accepted the viewpoint of systems thinking and service logic in their research work and attempted at a twofold aim where it provides the perspective of both the researchers and customers in the fashion industry. According to the work findings, three of the four assumptions cannot be rejected, contributing to the existing knowledge of management in the fashion industry. The lack of big data systems and CRM inclusion in the Pakistan retail sector has led Mahesar et al. [58] to explore the area in their work. In this study, the authors investigated the positive effects of analytical CRM in the retail stores for which they referred to both primary and secondary data. According to their result, the integration improved sales, helped to deal with the data, and diversified business. Bradlow et al. [59] explored the rising potentials of applying big data in retailing based on five data scopes: customer data, location, time, product, and channel. They also discussed issues related to statistical analysis, Bayesian analysis, and predictive analysis in retailing. The authors addressed the privacy issues that may arise due to the big data application in retail.
Retailing being India’s most significant industry contributes to 10% of the country’s GDP and 8% of the employment. Mathur and Samma [60] studied the retail market of Udaipur. According to the result acquired by customer loyalty, it is prominent in the industry considering consumers change preferences very frequently. Milovic [61], discussed the different industries CRM is used in due to the customer being the center of the business. This paper discussed the different aspects of CRM that are evaluated in the large and small companies such as customer loyalty, services, behavior, need, retention, etc. Koster [62] addressed the challenges in the distribution strategies faced by the retailer for their internet customers. The variables considered in this research were estimated delivery time, selection of assortment, type of retailer, and orders. According to their results, distribution channels should be integrated into the existing operation.
CRM in higher education is an area that is hardly explored from a research aspect but has high potential. Badwan et al. [63] looked into the benefits of electronic CRM in a higher education institute when taken from students’ perspective. They used different statistical tools to analyze the data and test the hypotheses. The findings show that adopting electronic customer relationship management helps with increased performance and better management and improves relationships with the existing and potential students.
The service industry includes many business sectors, among which the telecommunication industry constitutes a significant part, which is the topic of detailed discussion in the next section. Some other sectors of the service industry that demand our attending for research are the hospitality industry, broadband service provider, etc. Schilke and Wirtz [64] developed a model in their work to help the consumers’ acceptance of the service bundles in a broadband triple play. They divided the model into four general construct types—usefulness, service characteristics, behavioral intention, and attitude—and derived twelve hypotheses that were tested empirically. Kandampully et al. [65] reviewed customer loyalty in the hospitality industry due to the drastic changes in the marketplaces. They used a conceptual model to build a better framework to understand customer loyalty and customers’ developing role. As per the authors’ advice, companies should invest in a more emotionally engaging band ambassador and focus more on customer and employee engagement, brand citizenship, and so on.
In hotel management, the customers get influenced by hospitality management to a vast extent. That is why the need to achieve customer satisfaction is also very high. In their work, Nemeschansky et al. [66] developed a customer-driven menu analysis (CDMA) model to analyze the profit of a restaurant using cost management and experience accounting. The four phases in their CDMA model were tested in a restaurant in Auckland, New Zealand. Their model can visualize the price structure depending on customers’ opinions to make an improved financial decision for better performance. The lack of existing research works in hospitality management by applying different significant data methods on the customer profiles encouraged Talón-Ballestero et al. [67] to apply big data on the client data for proportion testing. They found high consistency among repetitive travelers without children, with the most similarities among German and British travelers and the main differences with Spanish travelers being age and stay duration. Amoako et al. [68] tried to show the impact of CRM on customer loyalty in the hotel industry. According to their results, 46.3% were females, and the remaining 53.3% were males; 40% became aware of the hotel through newspaper and 30% through word of mouth; 80% were ready to refer the hotel to other people whereas 90% were satisfied with the services of the hotel. Most of the customers agreed to come back to the hotel, which confirmed their loyalty. Sim et al. [69] concentrated their work on the effects of customer satisfaction and customer retention in the hotel industry and how these two factors of CRM impact each other. They also considered the influence of genders and added values in achieving customer satisfaction and retention. According to their results, customer retention depends on customer satisfaction, and the added value is positively affected. Syaqirah and Fuizurrahman [70] researched customer retention in the hotel industry in their paper, focusing on a three-star hotel in Malaysia. They used room service quality and customers’ consumption emotion, followed by customer satisfaction. This helped them determine whether the customer would choose the same service for their next stay. This would help in strategizing the room service quality.
In the healthcare system, when taken into consideration from a business perspective, the patients are the customers, and their satisfaction is achieved from the curing of the diseases, which requires a massive data generation that requires proper analysis. Khedr et al. [71] proposed a framework for including BI in the healthcare system consisting of six tiers: data source; extract, transform, and load (ETL); data storage; analytics; optimization; and presentation tier. Yaghoubi et al. [72] researched the connection between CKM (customer knowledge management) and CRM in the healthcare system. They also used SPSS and Amos software for this research work. Table 3 discusses the techniques and datasets used in each of the articles reviewed in this section.

5.4. CRM Analytics in Telecommunication Industry

Customer churn is the number of customers leaving the company, and managing that is one of the keys to customer retention in this competitive market. Amin et al. [90] showed an approach to customer churn prediction, which works on the concept of classifier’s certainty estimation using distance factor. Different state-of-the-art evaluation measures were applied to show that the classifier’s certainty profoundly influences the distance factor, and depending on the distance factor’s value, the classifier showed higher accuracy for higher costs. Amin et al. [91] In another study, the author worked on cross-company churn prediction by devising and presenting a model based on different data transformation methods.
Customer retention is a significant aspect in today’s business world since the telecom market has reached its maturity peak. The number of new incoming customers is much lower. Kim et al. [92] addressed the following research gap: the lack of work done in the area of customer welfare and bundle subscription, based on pros and cons that lead to the customer subscription, subscription switching cost, and customer retention. They concluded that switching cost is usually higher for subscribers than stand-alone users, and bundle subscription is influenced by lock-in, performance, and economic benefits. Lee et al. [93] estimated the interest caused by the extra services provided by B2B in South Korea and the cost estimation of switching telecom service providers. This research led them to conclude that reducing service fees for extra services and exploiting market share would help gain revenue. Ammari and Bilgihan [94] offered a framework that investigates the impact of customer satisfaction and loyalty on customer retention. According to their result, the factor of distributive justice regulates the connection between satisfaction and loyalty, which are the critical factors in customer retention. Mohammed [95] discovered the relationship marketing approaches practiced by the Indian telecom sector at Airtel and the Iraqi telecom sector at Zain. The study revealed that even though Airtel is quite ahead of Zain, the third-largest telecom service globally, the customer’s obligation to Zain is much higher, and the customer churn rate is lower than Airtel. In their work, Joshi [96] provided a detailed overview of the current status of the Indian telecom sector, the issues and challenges, and the emerging trends. They divided their review into three phases. The first phase was the structural status of the Indian telecom market in comparison to the global scenario. The second phase discussed the existing work on CRM in telecommunication and a proposition of a conceptual framework. The final stage covered the issues and challenges of the Indian telecom market.
Customer satisfaction is a measurement factor used to determine whether the product or services meet the customers’ expectations. Valentim et al. [97] aimed to propose a CRM optimization system using business intelligence (BI) targeted toward the telecommunication sector. In the first phase of their work, they carried out a literature survey strictly on the Scopus and Web of Science databases for the area’s available tasks. In their second phase, new concepts were added to the current work, and finally, in the third phase, the newly proposed method was applied in a Brazilian telecom company. Shao et al. [98], in their study on the performance of the services of the telecommunication industry, broke down MTFPI into three aspects, such as technical change represented as innovation, real efficiency changes as catch-up, and scale efficiency change as demand fluctuation. Their results conclude that telecommunication service industries present a more substantial productivity growth due to their high acceptance of technological advances. Gerpott et al. [99] focused on the correlation between MI (mobile Internet) usage and MV (mobile voice) calling pattern. The findings show a balanced relationship between MV and MI usage. Those who send few SMS, are on the younger side, are of foreign nationality, use a smartphone, and have a tariff tenure of a more extended period benefit most from this relationship. Jose et al. [100] tried to identify the key factors influencing the telecom contact center’s performance, which plays a vital role in gaining customer satisfaction. The authors conducted a case study on implementing big data analytics on the inbound and outbound telecom contact centers. According to their results, despite having multiple challenges in implementing big data, its scopes are unparalleled. Katona et al. [101] showed the extent of the CRM capabilities in telecommunication companies compared to other companies in the utility market. This entire study revealed the three chosen and remarkable skills associated with the CRM category customer interaction: channel capacity management, channel integration, and customer information availability. According to their research, the telecommunication market’s CRM capabilities are much ahead of the utility market. Camilovic [102] surveyed the different data-mining applications used for CRM in telecommunications. While providing data-mining applications, this research also discussed the causes behind these applications and the kinds of data to be mined.
Customer loyalty is a factor that needs to be achieved to avoid customer churn, which is generally directly dependent on the achievement of customer satisfaction. Belwal and Amireh [103] worked on the Omani telecommunication sector in their paper to assess the quality of service of two major Omani telecom companies: Omantel and Ooredoo. This was applied to the attitudinal loyalty of customers to test how the five SERVQUAL dimensions influence them. The result shows a positive influence of reliability and assurance dimension. They concluded that focusing on customer reliability and assurance would gain the companies’ higher profit and loyalty. Tong et al. [104] discussed an approach to increase customer loyalty by using net promoter score (NPS) data mining. They tried to find the reasons for customer loyalty and to conclude the effect of the customer group aspect on the connection between NPS and financial performance. Ragel et al. [105] examined the potential of relational bonds on customer loyalty with the conciliation of customer satisfaction among mobile telecommunication service providers. The author aimed to detect how customer satisfaction and reliability are influenced by the relationship’s level, relationship, and impact. It was concluded that creation, reinforcement, and customer loyalty could be made possible by developing the relationship between the customers and service providers. Dubey et al. [106] showed the positive impact of service quality on customer loyalty and customer relationship management in the Indian telecom sector. Here the authors took five antecedents of service quality, viz. empathy, assurance, responsiveness, tangibility, and reliability. The result states that service quality has a significant and positive impact on customer relationship management and customer loyalty. Haridasan et al. [107] investigated the effectiveness of mobile service provider on customer loyalty. They explained how the two loyalty indices are affected by CRM. Kim et al. [108] examined the impact of “customer satisfaction” and “switching barrier” on “customer loyalty.” This paper also analyzed the alternation effect of switching barriers on customer satisfaction and customer loyalty. According to the author, the study’s primary purpose was to examine the business strategies used by the Korean telecommunication market. Amin et al. [109] tried to identify the causal factors of customer loyalty in Malaysia’s telecommunication providers. The result shows trust, switching cost, service quality, and corporate image influence customer loyalty. Service quality remained the most vital factor in influencing loyalty.
Customer segmentation is the process of dividing customers into groups to provide more personalized services. Zhang et al. [110] proposed a three-dimensional model of customer segmentation from the customer behavior perspective. In this work, the customer segmentation model was based on the business experience whose nationality was verified by factor analysis. Based on these customer characteristics, marketing strategies are made. Nagarajan et al. [111] aimed to design a CPU-effective algorithm CIMTEL to discover closed frequent calling forms in a telecom database. According to the authors, this algorithm exceeds the previous “COLTEL,” “CHARM,” and “EXPEDITE” algorithms by order of two for a worst-case situation. They stated that CIMTEL can be adopted to apply any association rule to obtain knowledge to control any “fraud detection,” “network fault recovery,” etc. Weiss [112] provided a detailed description of the types of data available in the telecommunication industry and what purpose they serve if analyzed. Multiple data-mining applications were described in the paper, and when taken together, they can be used to identify telecommunication fraud, improve marketing effectiveness, and identify network faults. Their work also showed various vital issues that dampen the ability to mine data. Arumawadu et al. [113] proposed a modified k-means clustering method to calculate the customers’ profit in the Sri Lankan telecommunication industry. Bascacov et al. [114] analyzed the usage of data-mining techniques for calling pattern recognition of the employees and its influence on the business. Again, Routray et al. [115] used a modified version of various pattern growth approaches for pattern recognition on the telecom dataset. Hwang et al. [116] designed a customer lifetime value model considering previous profit, potential profit, churn probability, and another framework for the analysis of customer value and segmentation. Table 4 discusses the techniques and datasets used in each of the articles reviewed in this section.

6. Discussion

IT-based CRM techniques have been dominating the business world consistently, and the continuous upcoming methods have left them fertile for further research. Our survey indicated the growing scope of study in the area, and in that context, we listed some open research problems and future work directions [140].
The most prominent observation made through the review was the dominant use of IT-based techniques over the non-IT-based ones in all the business sectors over the years. Analytical techniques provided results with higher accuracy irrespective of the business sector and type of dataset, making these the obvious options. Using different data analytical techniques has increased over the years, making it a very adaptable and performative research field.
Supervised learning techniques were the most predominant method throughout the review, with classification and regression analysis offering the most efficient results [141,142,143,144,145]. Among different classification techniques that have been used, the most explored ones are the decision tree and Naïve Bayes. This leaves us with many classification techniques that have not been used in this field of work.
Hypothesis testing and structural equation modeling of statistical analysis are the two other most frequently used techniques that showed higher efficiency. SEM has been mostly used in generalized CRM applications, whereas hypothesis testing has been used in different business applications and widespread CRM applications. Table 4 provides a brief idea about the machine learning techniques referred to in this work.
According to our survey, even though determining the customer’s pattern is one of the main goals behind applying analytical techniques in CRM, pattern recognition and the usage of rule-mining technologies have not been the most preferred approach. Association rule mining could be applied more in this area for a better pattern detection of the customer behavior, which may lead to getting a better idea of the customers’ needs. This can mainly help in online shopping and telecommunication industries so that the right products can be offered to the right customers at the right time.
Over the years, the amount of research in CRM analytics has increased, and these increasing possibilities will open more scopes for future research. Areas such as customer segmentation and customer retention can use more research because other factors such as customer retention, satisfaction, and loyalty are directly or indirectly dependent on them. For mature markets such as the telecom industry, retention of old customers is vital in doing business. Customer segmentation, without it recommending the right product to the right customer at the right time, would be hard [146,147,148].
Since most of the research has been done using a real-life dataset obtained from individual companies or through direct surveys, the techniques’ accuracy and efficiency may vary vastly depending on the kind of dataset they are being applied to. The dataset difference makes this research area much broader and versatile, thus opening many prospects of work. A similar technique can produce different results when applied to a different dataset. Hence, a technique working for a certain business sector’s dataset may not work for another business sector. It may vary from company to company and place to place.
Many business sectors remain unexplored and lack sufficient research on its CRM application such as the education system, healthcare system, online marketing, and so on. The students and the patients can be considered customers when taken into account from a business perspective, making these sectors very applicable for service customization. A vital part of the online market analyzes the customer’s buying pattern to suggest the right product combinations. Rule-mining techniques can play a major role, as stated previously. In healthcare, the patient’s disease determines the course of treatment to be taken, and the socio-economic status can determine the facilities to be recommended. Similarly, in different business sectors, the customers’ demographic data can be used to determine the product or service they might opt for [149,150,151,152].
Customer churn prediction is one of the significant aspects of research in the telecom industry due to its high market competition and customer segmentation being the lesser-explored area in recent times. Churn’s prediction helps with getting to know which customer will leave the service provider so that they can try and retain the customer. Hence this field could use research for better prediction techniques. Customer segmentation also helps determine which customer the company should try to retain, and different groups of customers have different demands and needs. Therefore, it requires more research [153,154].
Irrespective of the business sector, customer loyalty is a significant determining factor for customer retention, directly influencing the customer churn factor. More case studies in this area can help increase the business revenue by earning the customers’ trust. Customer loyalty is a very important factor in the business sector such as hotel management, online marketing, hospitality management, healthcare, etc.
According to our research, business sectors have become customer-centric. Hence, rather than just making profits, companies need to work on long-term plans to satisfy their customers. Analytical CRM plays a major role in that scenario, and the different perspectives of this area broaden the research spectrum.

Future Course of Action

The future course of action should include a detailed descriptive analysis of customers’ behavioral and demographic data to get a better understanding of customers’ needs. This can help with proper customer segmentation so that it is easier to identify the right product or service for the right customer. It can also help with detecting certain behavioral patterns of customers. The first step to achieving this must be studying customers’ profiles. The researchers need to understand what the factors that are influencing the customers’ behavior are. This must be followed by a thorough understanding of customers’ socio-economic backgrounds that play a pivotal role in their behavioral pattern. From the telecommunication industry perspective, the type of services or tariff plans customers are opting for will vary depending on their location, economic background, age group, gender identity, etc. For example, the services opted by a working adult from a metropolitan city will not be similar to the services opted by a housewife from a rural area. This is why proper customer segmentation is necessary, and it also helps with better personalization of services provided by companies. Researchers need to study the existing techniques that other sector companies are using to study their customers’ data.
One of the major challenges faced by the telecommunication industry is customer churn. Thus, to address this issue, the predictive analysis must be performed on the customers’ behavioral data to predict if they are going to churn. With customer retention as the target, proper service designing is necessary. A comparative study must be conducted on the existing techniques in the market to determine which technique provides a better result in a particular dataset so that the relationship with their customers can be improved. Another course of action should be directed toward designing a model that will combine both demographic and behavioral data to understand the customers’ needs better. This can help detect patterns in customers’ behavior from different socio-economic backgrounds, and we can also find out the effects of different demographic features on the behavioral pattern.
A proper market survey is also necessary to comprehend the maturity level of the market. Understanding the competition is required for better decision making. It can also help with getting updated with the current trends so that organizations can stay up-to-date with the market demands. In the telecommunication industry, the competition is very high, and the number of new customers incoming in the market has decreased over the years. For example, the current market survey on the Indian telecommunication industry shows high teledensity in the urban areas and metropolitan cities, which is why customer retention is necessary for these areas. As the rural areas show low teledensity, the scope of new incoming customers is higher. Proper research on the customers’ profiles can help with bringing in new customers.
Analyzing the customers’ feedback can provide insightful knowledge on the different problems faced by the customers. Addressing these problems with proper techniques will lead to better business decision making. This feedback collected from different platforms such as call centers, social media, web-portals, and so on can be analyzed using big data analytics or sentiment analysis, ultimately helping achieve customer satisfaction. Incorporating big data analytics and business intelligence in CRM can help in marketing, sales, and customer services, improving business process efficiency, financial values, employee values, customer values, and technical values. Researchers can work with BI and CRM-influenced tools to reach their target of better decision making.

7. Conclusions

In this survey, we reviewed articles from 1996 to 2021 related to CRM, CRM analytics, and its applications in different business sectors. This paper discussed the most commonly used techniques in analytical CRM, various business sectors implementing CRM techniques, and different CRM aspects in the telecommunication industry. The most frequently used methods are supervised learning (32%), hypothesis testing (30%), statistical analysis (17%), and so on. We concluded that irrespective of the business area, IT-based CRM techniques help with revenue growth, and their flexible nature works well with the customization process. Hypothesis testing has been the most widely used technique irrespective of the business sector. Determining the customer churn rate in the telecommunication industry has been the most targeted research area. Pattern recognition can be explored more by the researchers, and rule-mining techniques could be used for such purposes. We also found a co-dependency of customer loyalty, customer satisfaction, and customer retention. The importance of proper customer segmentation was highlighted throughout the work. The future work direction can be useful for the researchers looking to work in this area.

Author Contributions

Conceptualization, L.S. and H.K.T.; methodology, L.S. and H.K.T.; software, L.S.; validation, H.K.T., A.K.B. and P.B.; formal analysis, L.S. and H.K.T.; investigation, L.S. and H.K.T.; resources, L.S., H.K.T., S.R.N. and A.K.B.; data curation, L.S.; writing—original draft preparation, L.S.; writing—review and editing, L.S. and H.K.T.; visualization, P.B.; supervision, H.K.T., A.K.B. and S.R.N.; project administration, L.S. and H.K.T. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. The interrelated CRM forms and processes.
Figure 1. The interrelated CRM forms and processes.
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Figure 2. Customer’s life cycle.
Figure 2. Customer’s life cycle.
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Figure 3. Steps of customer acquisition.
Figure 3. Steps of customer acquisition.
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Figure 4. Big data analytics usage in organization. Sources: Evans Data Corporation.
Figure 4. Big data analytics usage in organization. Sources: Evans Data Corporation.
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Figure 5. Flowchart of the review methodology.
Figure 5. Flowchart of the review methodology.
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Figure 6. Citation-based representation.
Figure 6. Citation-based representation.
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Figure 7. Publication count representation.
Figure 7. Publication count representation.
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Figure 8. Industry-specific representation.
Figure 8. Industry-specific representation.
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Figure 9. Technique-wise representation.
Figure 9. Technique-wise representation.
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Figure 10. Different applications of CRM analytical techniques.
Figure 10. Different applications of CRM analytical techniques.
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Figure 11. CRM technique-wise representation.
Figure 11. CRM technique-wise representation.
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Figure 12. Accuracy representation of the supervised learning techniques.
Figure 12. Accuracy representation of the supervised learning techniques.
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Table 1. IT-based techniques.
Table 1. IT-based techniques.
IT-Based Techniques UsedBasic IdeaAdvantagesDisadvantages
Association Rule MiningAssociation Rule mining is a rule-based data-mining method used mainly for the purpose of frequent pattern recognition from any dataset or data repository. Rule mining uses the criteria support and confidence to identify the most important pattern.
Types of association rule mining used in the paper:
A priori;
FP growth.
A priori:
This algorithm has smallest memory consumption.
Simple implementation.
It uses a priori property for pruning. Hence, itemsets left for additional support checking remain fewer.
FP growth:
It is quicker than any other association rule mining algorithm.
It uses a compact representation of the original database.
The recurrent database scan is removed.
A priori:
It needs many examinations of database.
It permits only a single minimum support threshold.
It is suitable only for a smaller database.
It clarifies only the presence or absence of an element in the database.
FP growth:
The memory usage is higher.
It cannot be accepted for interactive mining and incremental mining.
The resultant FP Tree is not exclusive to a similar logical database.
ClassificationClassification is a data-mining technique in which itemsets are assigned to target classes or levels. The goal of this technique is to predict the right class for a particular data item correctly. It has two steps:
  • Training;
  • Testing.
Types of classification used in the paper:
k-nearest neighbor;
Decision tree;
Artificial neural network;
Support vector machine;
Bayesian classifier.
k-nearest neighbor:
It is easier to understand and simpler to implement a classification technique.
Training is extremely fast.
Healthy to noisy training data.
It is mainly well suited for multimodal classes.
Decision tree:
Nonlinear relationships amid parameters do not disturb tree performance.
Easy to understand and describe.
Artificial neural network:
Competently handles noisy inputs.
Computational frequency is high.
Support vector machine:
Contributes very precise classifiers.
Low overfitting, robust to noise.
Particularly prevalent in text classification problems where extremely high-dimensional spaces are the standard.
Memory-intensive.
Bayesian classifier:
To improve the classification performance by eliminating the unrelated features.
Better performance.
Less computational time.
k-nearest neighbor:
It is delicate for the local structure of the data.
Memory restriction.
Being supervised learning lazy algorithm, i.e., runs leisurely.
Decision tree:
Complexity.
Likelihood of repetition with the same sub-tree on diverse paths.
Artificial neural network:
It is semantically poor.
Harder to choose the type of network architecture.
Support vector machine:
SVM is a binary classifier. To do a multi-class classification, pair-wise classifications can be used (one class against all others, for all classes).
Computationally costly, thus runs slow.
Bayesian classifier:
Information theoretically infeasible.
Computationally infeasible.
ClusteringClustering is an unsupervised data-mining technique that divides a huge dataset into smaller groups by increasing inter-group similarity and reducing the intragroup similarity.
Types of clustering:
Partitioning clustering;
Hierarchical clustering;
Density-based clustering;
Grid-based clustering;
Model-based clustering;
Constraint-based clustering.
Partitioning clustering algorithm:
Relatively scalable and simple.
Suitable for datasets with compact spherical clusters that are well-separated.
Hierarchical clustering algorithm:
The number of clusters is not required to be defined in advance.
A whole hierarchy of clusters is calculated.
Good result visualizations combined into the approaches.
Makes use of dendrogram for graphical representation.
Installed flexibility concerning the degree of granularity.
Point connections.
Density-based clustering:
It detects clusters of any shape.
It deals with noise and outliers competently.
Grid-based clustering:
It is fast due to the lack of distance calculation.
Clustering is achieved on summaries.
Easy to check which clusters are adjacent.
Forms are restricted to an amalgamation of grid cells.
Not dependent on query, parallelizable, incremental update.
Model-based clustering:
Clusters can be categorized by a minor number of parameters.
The result pleases the statistical expectations of the generative models.
Constraint-based clustering:
Successfully enhanced the baseline MMC (maximum margin clustering).
It requires very low computational time.
The growing number of constraints condensed the computational time.
Partitioning clustering algorithm:
Severe effectiveness degradation in high-dimensional spaces.
Weak cluster forms.
Dependent on the user to stipulate the number of clusters in advancement.
Highly sensitive to initialization stage, noise, and outliers.
Incapability to work with non-convex clusters of different size and density.
Hierarchical clustering algorithm:
Unable to make modifications once the splitting/merging choice is made.
Absence of interpretability about the cluster descriptors.
An ambiguity of termination standard.
Excessively costly for high-dimensional and huge datasets.
Severe degradation ineffectiveness on high-dimensional spaces.
Density-based clustering:
Highly sensitive to the allocation of input parameters.
Weak cluster forms.
Inapt for high-dimensional datasets.
Grid-based clustering:
All the clusters’ borders are more horizontal or vertical than diagonal.
Model-based clustering:
Based on computation, it can be expensive if the quantity of distributions is large or the dataset covers very few detected data points.
It requires huge datasets.
It is difficult to approximate the number of clusters.
Constraint-based clustering:
It is not efficient when the data are not consistently distributed in the output area.
Clustering speed is deliberate.
It isn’t easy to form a cluster with high-dimensional data.
RegressionRegression is a data-mining technique used to predict a range of numeric values, given a particular dataset.
It helps determine which factors matter most, which it can ignore, and how these factors interact with each other.
Provides a powerful statistical method that allows a business to examine the relationship between two or more variables of interest.
Assumes that the cause-and-effect relationship between the variables remains unchanged.
The functional relationship that is established between any two or more variables on the basis of some limited data may not hold good if more and more data are taken into consideration.
Factor AnalysisFactor analysis is a technique that is used to reduce a large number of variables into fewer numbers of factors. This technique extracts maximum common variance from all variables and puts them into a common score. As an index of all variables, we can use this score for further analysis. Several methods are available, but principal component analysis is used most commonly.
High data reduction and aggregation.
Deals with measurement errors and others issues regarding it.
Helps with exploratory analysis or confirmatory analysis.
Final factors are difficult to interpret.
Based on the data, the aggregation and weight vary.
Structural Equation ModelingStructural equation modeling is a multivariate statistical analysis that combines factor analysis and multiple regression analysis. This technique is used to analyze the structural relationship between measured variables and latent constructs using two types of variables: endogenous and exogenous.
Allows using several indicator variables per construct simultaneously, which leads to more valid conclusions on the construct level.
Takes measurement error into consideration by openly including measurement error variables that resemble the measurement error portions of observed variables.
Allows to model and test complex patterns of relationships, including a multitude of hypotheses simultaneously.
It allows to test complex models for their compatibility with the data in their entirety and test specific assumptions about parameters for their compatibility with the data.
A multitude of parameters corresponding to various hypotheses is estimated simultaneously, only if the empirical data provide enough information to estimate all these parameters.
Simultaneously including a multitude of relationships is computationally intensive and can lead to estimation problems.
Statistical AnalysisStatistical analysis is used in business intelligence (BI) to collect and analyze every data sample in a group of items to draw samples. There are five steps for statistical analysis:
Describe the nature of the data to be analyzed.
Explore the relation of the data to the underlying population.
Create a model to summarize understanding of how the data relate to the underlying population.
Prove (or disprove) the validity of the model.
Employ predictive analytics to run scenarios that will help guide future actions.
Helps with sampling errors.
Provides simple answers to complex questions.
It helps in making accurate predictions.
If researchers collect data using faulty or biased procedures, the resulting statistical analysis will be misleading.
A tendency to jump to baseless assumptions about causal relationships.
If researchers do not measure the right thing, the analysis will fail.
Hypothesis TestingHypothesis testing is used in statistics to test the result of any experiments for its feasibility. Here, the results are tested for their validity by checking whether the experiment is repeatable or obtained by chance. If the experiment is not repeatable and the result was obtained by chance, it is of little to no use.
It forces us to think deeply about the possible outcomes of a study.
Restating questions as hypotheses involves prior evidence or theoretical argument.
It helps the researcher to see whether or not they are investigating a relationship.
Dependent on concentrations tested.
Inability to calculate confidence intervals.
Topic ModelingTopic modeling is an unsupervised machine learning technique whose main purpose is scanning a set of documents, spotting word and phrase patterns within them, and automatically clustering word groups and similar expressions that best characterize a set of documents.
Each document is assigned a probability of belonging to a latent theme or “topic.”
Employs more sophisticated iterative Bayesian techniques to determine each document’s probability associated with a given theme or topic.
Does not produce highly nuanced classification of texts.
It can easily be abused if it is wrongly understood as an objective representation of a text’s meaning.
Data Envelopment AnalysisData envelopment analysis (DEA) is a linear programming methodology to measure the efficiency of multiple decision-making units (DMUs) when the production process presents a structure of multiple inputs and outputs.
No need to explicitly specify a mathematical form for the production function.
It was proven to be useful in uncovering relationships that remain hidden for other methodologies.
Capable of handling multiple inputs and outputs.
Capable of being used with any input–output measurement.
The sources of inefficiency can be analyzed and quantified for every evaluated unit.
Results are sensitive to the selection of inputs and outputs.
The best specification cannot be tested.
Table 2. Techniques and datasets used in the articles related to CRM analytics.
Table 2. Techniques and datasets used in the articles related to CRM analytics.
ReferenceTechniques Used (IT-Based)Dataset Used
Li et al. [10]Hypothesis TestingHarte–Hanks CI Technology Database, Compustat, and ACSI as data sources.
Mikalef et al. [16]Partial Least Square (PLS) Structural Equation ModelingReal-life survey data from Norwegian firms.
Chen et al. [21]Equivalence Class TransformationApplication called AppData based on Android mobile platform.
Nam et al. [11]Hypothesis TestingReal-life survey data from firms.
Prollochs and Feuerriegel [22]Topic ModelingFinancial disclosure from firms.
Dong and Yang [12]Hypothesis TestingSurvey data from social media.
Shi et al. [17]Structural Equation ModelingSurvey data of smartphone consumers.
Benitez et al. [18] Partial Least Square Path ModelingReal-life survey data from Spanish firms.
Hu et al. [23]Gradient Boosting Machine (G.B.M.)Customer survey data.
Pradana et al. [19]Structural Equation ModelingSurvey data collected from PT Garuda Indonesia.
Fink et al. [13]Hypothesis TestingData collected through interviews in three firms.
Nyadzayo and Khajehzadeh [14]Hypothesis TestingCustomer data from three motor dealership brands in South Africa.
Navimipour and Soltani [20]Structural Equation ModelingEmployee data from East Azerbaijan Tax Administration in Iran.
Chopra [24]Cluster AnalysisN. A.
Sundararaj and Rejeesh [29]Chi-Square MethodSocial networking site.
Salehinejad and Rahnamayan [30]Recurrent Neural NetworkTa-Feng dataset.
Schaeffer and Sanchez [31]Linear and Radial SVMClient-transaction record of a Mexican parcel delivery company.
Khalili-Damghani et al. [32]k-means, IF-THEN rulesReal-life dataset from insurance company of Iran and a telecom company.
Park [33]Hypothesis TestingReal-life dataset from Internet accommodation reservation Service.
Khade [34]C4.5 Decision Tree AlgorithmReal-time database systems.
Aluri et al. [35]Hypothesis TestingReal-time datasets collected.
Hallikainen et al. [36]Hypothesis TestingReal-life data collected using questionnaire.
Zhao et al. [37]Hypothesis TestingKaola.com, one of the largest integrated B2C e-commerce platforms in China.
Nardi et al. [38]Hypothesis Testing, Meta-Analytic Structural Equation Modeling (MASEM)Six different electronic databases: Web of Science, EBSCO, Google Scholar, Scopus, Emerald, and ScienceDirect.
Fernández-Rovira et al. [39]Review of Literature with the Snowball TechniquePrincipal scientific databases.
Holmlund et al. [40]Systematic Literature ReviewWeb of Science.
Zhang et al. [41]Hypothesis TestingReal-life dataset from Chinese B2B market.
Subramanian and Prabha [42]Bagging Homogeneous Feature Selection, Naïve BayesUCI data repository.
Khodabandehlou and Rahman [43]RFM ModelReal data from a food store in Iran.
Li et al. [44]Decision Tree, Naïve Bayes, Cluster AnalysisReal-time dataset from Adventure Works DW database of Adventure Works Company.
Sabbeh [45]Decision Tree (CART), SVM, kNN, AdaBoost, Random ForestChurn dataset from telecommunication company.
Table 3. Techniques and datasets used in business-specific articles.
Table 3. Techniques and datasets used in business-specific articles.
ReferenceTechniques Used (IT-Based)Dataset Used
Olaniyan et al. [49]Hypothesis Testing, Logistic Regression, Support Vector Machine (SVM), Artificial Neural Network (ANN)Financial report 2017 for WEMA bank.
Gilboa et al. [56]Hypothesis Testing (Grounded Theory Approach)Questionnaire data from small business owner and customers.
Hassani et al. [50]Clustering and Classification AnalysisExisting research work in banking.
Ballestar et al. [55]Cluster AnalysisData from cashback websites of continental Europe.
Ballestero et al. [67]Hypothesis TestingClient data in CRM system.
Amendole et al. [57]Hypothesis TestingCustomer survey from Italian stores.
Khedr et al. [71]Clustering and Classification TechniquesPatient records from the healthcare system.
Badwan et al. [63]Hypothesis TestingStudent data from Al Quds Open University in Palestine.
Mahesar et al. [58]Regression AnalysisSurvey data from forty-eight employees of Hyperstar & Metro.
Yaghoubi et al. [72]Factor AnalysisSurvey data from a military hospital in Tehran.
Bradlow et al. [59]Bayesian AnalysisDataset from retail chain in US.
Ghalenooie and Sarvestani [52]Hypothesis TestingSurvey data from private banks in Shiraz.
Schilke and Wirtz [64]Hypothesis TestingStudent survey data from three German universities.
Koster [62]Hypothesis TestingSurvey data from online retailers.
Sim et al. [69]Structural Equation Modeling and Factor AnalysisSurvey data of hotel customers in the San Francisco Bay Area.
Syaqirah and Fuizurrahman [70]Hypothesis TestingSurvey data from three-star hotel’s customer in Malaysia.
Ennew and Binks [53]Logit Analysis (Statistical Analysis)Survey data from the Forum of Private Business in spring–summer 1992.
Dursun and Caber [73]RFM AnalysisReal-life dataset from three five-star hotels of Turkey.
Tehrani and Ahrens [74]Logistic RegressionReal-life survey data from apparel retailer from Germany.
Gera et al. [75]Hypothesis TestingReal-life dataset from life insurance company from India.
Pizam et al. [76]Statistical AnalysisExisting works on hospitality management.
Sano et al. [77]K-MedoidsReal-life dataset from groceries in Kanto area of Japan.
Diaz et al. [78]Clustering AnalysisReal-life dataset from cinema complex of Spain.
Brito et al. [79]K-Medoids and CN2-SDReal-life dataset from bivolino.com, a manufacturer of custom-made shirts.
Chou et al. [80]Structural Equation ModelingReal-life dataset of consumers from Taiwan.
Koehn et al. [81]Recurrent Neural NetworkReal-world dataset of online shop focused on fashion items.
Park et al. [82]Linguistic Inquiry and Word Count (LIWC)Customer behavioral data collected through online hotel reservation service in Seoul, South Korea.
Appiah et al. [83]Grounded TheoryInterview data of smartphone consumers in UK.
Adekunle and Ejechi [84]Hypothesis testingReal-life dataset of smartphone users of Nigerian.
Kim et al. [85]Long short-term memory (LSTM)Real-life dataset of smartphone users.
Baashar et al. [86]Research questionsExisting research works.
Garg et al. [87]Hypothesis testingReal-life data collected through telephone.
Ying et al. [88]Statistical softwareReal-life data from the retail sector in Singapore.
Li et al. [89]RFM, Clustering, Decision TreeReal-life patient data from outpatient department.
Table 4. Techniques and datasets used in article of telecom industry.
Table 4. Techniques and datasets used in article of telecom industry.
ReferenceTechniques Used (IT-Based)Dataset Used
Amin et al. [90]Naïve BayesPublicly available dataset on telecommunication industry.
Amin et al. [91]Baseline Classifiers (Naïve Bayes, k-Nearest Neighbor (KNN), Gradient Boosted Tree (GBT), Single Rule Induction (SRI), Deep Learning Neural Network (DP)Publicly available dataset on telecommunication industry.
Kim et al. [92] Statistical AnalysisReal-life data from Korean company.
Lee et al. [93]Conjoint AnalysisReal-life survey data from South Korean telecom.
Belwal and Amireh [103]Partial-Least-Square-Based Structural Equation ModelingSurvey data from Omani telecom industry.
Tong et al. [104]Information Gain on Decision Tree Model and k-means ClusteringSurvey data from customers of telecom industry.
Jose et al. [100]Principle Component Analysis (PCA), Factor Analysis, Regression Analysis, and Cross TabulationData from telecom contact center.
Shao et al. [98]Data Envelopment Analysis (DEA)Output performance of telecommunications service industries in 13 Organization of Economic Cooperation and Development countries from 2000 to 2011.
Gerpott et al. [99]Statistical AnalysisMobile Internet (MI) usage and mobile voice (MV) calling patterns among residential customers in one-member country of the Arabian Gulf Cooperation Council (GCC).
Coussement et al. [117]Logistic Regression AnalysisReal-world cross-sectional data from a large European telecommunication provider.
Newton and Ragel [105]Correlation and Regression AnalysisCustomer data in mobile telecommunication industry in Batticaloa.
Ammari and Bilgihan [94]Hypothesis TestingCustomer survey data from mobile telecom industry in Tunisia.
Bi et al. [118]Clustering TechniquesDataset from China telecom industry.
Dubey and Srivastava [106]Exploratory Factor Analysis, Regression AnalysisCustomer survey data from Indian telecommunication industry.
Lu et al. [119]Boosting and Logistic RegressionTelecommunication company dataset.
Almana et al. [120]Neural Network, Statistical Analysis, Decision Tree, Covering AlgorithmCustomer data from telecom industry.
Kamalraj and Malathi [121]J48 and C5.0 of Decision TreeDataset from Orange database.
Zhang et al. [110]Kohonen ClusteringConsumption data of a telecom enterprise in the region of Liaoning.
Nagarajan et al. [111]Rule-based Data-Mining TechniqueTelecommunication database.
Haridasan and Venkatesh [107]Frontier AnalysisDataset from mobile telecommunication company in Chennai, Tamil Nadu, India.
Katona and Baier [101]Hypothesis TestingDataset from telecom and utility company in Germany.
Camilovic [102]Clustering and Classification TechniquesDataset from telecommunication industry.
Arumawadu et al. [113]k-means ClusteringCustomer data in telecommunication industry in Sri Lanka.
Kim et al. [108]Hypothesis TestingSurvey data from mobile telecommunication company in Korea.
Bascacov et al. [114]Clustering TechniqueCall detail record (CDR) from telecom industry.
Routray et al. [115]Association Rule MiningData from Indian telecom industry.
Hwang et al. [116]Logistic Regression, Neural Network, Decision TreeSix-month service data of one wireless communication company in Korea.
Amin et al. [109]Regression AnalysisCustomer survey data from telecommunication users.
Verhoef [15]Hypothesis TestingCustomer survey data collected over telephone.
Amin et al. [122]Rule-based Decision-making Technique, Based on Rough Set Theory (RST)Publicly available dataset of telecommunication industry.
Haq [123]Simple Mathematical ToolsDataset from Reliance Jio.
Caigny et al. [124]Decision Tree, Logit Leaf ModelFourteen different datasets.
Shouchen et al. [125]Distance Method by Norm MethodDataset from China telecommunication industry.
Nkordeh et al. [126]Literature SurveyExisting working in Nigerian telecommunication industry.
Bibin and Ramanathan [127]Conjoint AnalysisSurvey data of students.
Vafeiadis et al. [128]Boosting, Artificial Neural Network, SVM, Decision Tree, Naïve Bayes, Logistic RegressionUCI Machine Learning Repository.
Stripling et al. [129]Profit Maximizing Logistic Regression, Genetic AlgorithmReal-life churn dataset from different telecommunication service providers.
Choudhari and Potey [130]Fuzzy Unordered Rule Induction Algorithm (FURIA)Telecom churn dataset.
Arifin and Samopa [131]Support Vector Machine (SVM)Real-life dataset from an Indonesian telecommunication company.
Diaz [132]Generalized Structural Equation Modeling (GSEM), Multinomial LogitReal-life survey data from Peru.
Al-Zadjali and Al-Busaidi [133]Hypothesis TestingSurvey data collected using questionnaire.
Jin et al. [134]Hypothesis TestingMajor telecommunication operator in China.
Ascarza et al. [135]Field Experiment and Manual CalculationsReal-life data from South American wireless communication company.
Friesen and Earl [136]Non-IT-based TechniqueReal-life data collected from graduate and postgraduate students.
García-Mariñoso and Suárez [137]Logit ModelReal-life survey data collected by Spanish Markets and Competition Authority.
Gerpott and Meinert [138]Regression AnalysisA dataset of residential users of mobile communication services.
Gerpott and Meinert [139]Hypothesis TestingData obtained from the German subsidiary of a large multinational MNO.
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Saha, L.; Tripathy, H.K.; Nayak, S.R.; Bhoi, A.K.; Barsocchi, P. Amalgamation of Customer Relationship Management and Data Analytics in Different Business Sectors—A Systematic Literature Review. Sustainability 2021, 13, 5279. https://doi.org/10.3390/su13095279

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Saha L, Tripathy HK, Nayak SR, Bhoi AK, Barsocchi P. Amalgamation of Customer Relationship Management and Data Analytics in Different Business Sectors—A Systematic Literature Review. Sustainability. 2021; 13(9):5279. https://doi.org/10.3390/su13095279

Chicago/Turabian Style

Saha, Lewlisa, Hrudaya Kumar Tripathy, Soumya Ranjan Nayak, Akash Kumar Bhoi, and Paolo Barsocchi. 2021. "Amalgamation of Customer Relationship Management and Data Analytics in Different Business Sectors—A Systematic Literature Review" Sustainability 13, no. 9: 5279. https://doi.org/10.3390/su13095279

APA Style

Saha, L., Tripathy, H. K., Nayak, S. R., Bhoi, A. K., & Barsocchi, P. (2021). Amalgamation of Customer Relationship Management and Data Analytics in Different Business Sectors—A Systematic Literature Review. Sustainability, 13(9), 5279. https://doi.org/10.3390/su13095279

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