Amalgamation of Customer Relationship Management and Data Analytics in Different Business Sectors—A Systematic Literature Review
Abstract
:1. Introduction
2. Theoretical Foundation
2.1. Customer Relationship Management
2.1.1. Customer Life Cycle
2.1.2. Customer Acquisition
2.2. CRM Analytics
3. Review of Different Methodology
3.1. Techniques Referred to in the Review
3.2. Flowchart of the Review Methodology
4. Distribution of the Articles Reviewed
5. Review of the Related Works
5.1. Background Study on CRM
5.2. CRM Analytics
5.3. Business-Specific CRM Applications
5.4. CRM Analytics in Telecommunication Industry
6. Discussion
Future Course of Action
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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IT-Based Techniques Used | Basic Idea | Advantages | Disadvantages |
---|---|---|---|
Association Rule Mining | Association 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:
| A priori:
|
Classification | Classification 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:
| k-nearest neighbor:
| k-nearest neighbor:
|
Clustering | Clustering 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 algorithm:
| Partitioning clustering algorithm:
|
Regression | Regression is a data-mining technique used to predict a range of numeric values, given a particular dataset. |
|
|
Factor Analysis | Factor 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. |
|
|
Structural Equation Modeling | Structural 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. |
|
|
Statistical Analysis | Statistical 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:
|
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|
Hypothesis Testing | Hypothesis 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. |
|
|
Topic Modeling | Topic 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. |
|
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Data Envelopment Analysis | Data 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. |
|
|
Reference | Techniques Used (IT-Based) | Dataset Used |
---|---|---|
Li et al. [10] | Hypothesis Testing | Harte–Hanks CI Technology Database, Compustat, and ACSI as data sources. |
Mikalef et al. [16] | Partial Least Square (PLS) Structural Equation Modeling | Real-life survey data from Norwegian firms. |
Chen et al. [21] | Equivalence Class Transformation | Application called AppData based on Android mobile platform. |
Nam et al. [11] | Hypothesis Testing | Real-life survey data from firms. |
Prollochs and Feuerriegel [22] | Topic Modeling | Financial disclosure from firms. |
Dong and Yang [12] | Hypothesis Testing | Survey data from social media. |
Shi et al. [17] | Structural Equation Modeling | Survey data of smartphone consumers. |
Benitez et al. [18] | Partial Least Square Path Modeling | Real-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 Modeling | Survey data collected from PT Garuda Indonesia. |
Fink et al. [13] | Hypothesis Testing | Data collected through interviews in three firms. |
Nyadzayo and Khajehzadeh [14] | Hypothesis Testing | Customer data from three motor dealership brands in South Africa. |
Navimipour and Soltani [20] | Structural Equation Modeling | Employee data from East Azerbaijan Tax Administration in Iran. |
Chopra [24] | Cluster Analysis | N. A. |
Sundararaj and Rejeesh [29] | Chi-Square Method | Social networking site. |
Salehinejad and Rahnamayan [30] | Recurrent Neural Network | Ta-Feng dataset. |
Schaeffer and Sanchez [31] | Linear and Radial SVM | Client-transaction record of a Mexican parcel delivery company. |
Khalili-Damghani et al. [32] | k-means, IF-THEN rules | Real-life dataset from insurance company of Iran and a telecom company. |
Park [33] | Hypothesis Testing | Real-life dataset from Internet accommodation reservation Service. |
Khade [34] | C4.5 Decision Tree Algorithm | Real-time database systems. |
Aluri et al. [35] | Hypothesis Testing | Real-time datasets collected. |
Hallikainen et al. [36] | Hypothesis Testing | Real-life data collected using questionnaire. |
Zhao et al. [37] | Hypothesis Testing | Kaola.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 Technique | Principal scientific databases. |
Holmlund et al. [40] | Systematic Literature Review | Web of Science. |
Zhang et al. [41] | Hypothesis Testing | Real-life dataset from Chinese B2B market. |
Subramanian and Prabha [42] | Bagging Homogeneous Feature Selection, Naïve Bayes | UCI data repository. |
Khodabandehlou and Rahman [43] | RFM Model | Real data from a food store in Iran. |
Li et al. [44] | Decision Tree, Naïve Bayes, Cluster Analysis | Real-time dataset from Adventure Works DW database of Adventure Works Company. |
Sabbeh [45] | Decision Tree (CART), SVM, kNN, AdaBoost, Random Forest | Churn dataset from telecommunication company. |
Reference | Techniques 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 Analysis | Existing research work in banking. |
Ballestar et al. [55] | Cluster Analysis | Data from cashback websites of continental Europe. |
Ballestero et al. [67] | Hypothesis Testing | Client data in CRM system. |
Amendole et al. [57] | Hypothesis Testing | Customer survey from Italian stores. |
Khedr et al. [71] | Clustering and Classification Techniques | Patient records from the healthcare system. |
Badwan et al. [63] | Hypothesis Testing | Student data from Al Quds Open University in Palestine. |
Mahesar et al. [58] | Regression Analysis | Survey data from forty-eight employees of Hyperstar & Metro. |
Yaghoubi et al. [72] | Factor Analysis | Survey data from a military hospital in Tehran. |
Bradlow et al. [59] | Bayesian Analysis | Dataset from retail chain in US. |
Ghalenooie and Sarvestani [52] | Hypothesis Testing | Survey data from private banks in Shiraz. |
Schilke and Wirtz [64] | Hypothesis Testing | Student survey data from three German universities. |
Koster [62] | Hypothesis Testing | Survey data from online retailers. |
Sim et al. [69] | Structural Equation Modeling and Factor Analysis | Survey data of hotel customers in the San Francisco Bay Area. |
Syaqirah and Fuizurrahman [70] | Hypothesis Testing | Survey 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 Analysis | Real-life dataset from three five-star hotels of Turkey. |
Tehrani and Ahrens [74] | Logistic Regression | Real-life survey data from apparel retailer from Germany. |
Gera et al. [75] | Hypothesis Testing | Real-life dataset from life insurance company from India. |
Pizam et al. [76] | Statistical Analysis | Existing works on hospitality management. |
Sano et al. [77] | K-Medoids | Real-life dataset from groceries in Kanto area of Japan. |
Diaz et al. [78] | Clustering Analysis | Real-life dataset from cinema complex of Spain. |
Brito et al. [79] | K-Medoids and CN2-SD | Real-life dataset from bivolino.com, a manufacturer of custom-made shirts. |
Chou et al. [80] | Structural Equation Modeling | Real-life dataset of consumers from Taiwan. |
Koehn et al. [81] | Recurrent Neural Network | Real-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 Theory | Interview data of smartphone consumers in UK. |
Adekunle and Ejechi [84] | Hypothesis testing | Real-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 questions | Existing research works. |
Garg et al. [87] | Hypothesis testing | Real-life data collected through telephone. |
Ying et al. [88] | Statistical software | Real-life data from the retail sector in Singapore. |
Li et al. [89] | RFM, Clustering, Decision Tree | Real-life patient data from outpatient department. |
Reference | Techniques Used (IT-Based) | Dataset Used |
---|---|---|
Amin et al. [90] | Naïve Bayes | Publicly 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 Analysis | Real-life data from Korean company. |
Lee et al. [93] | Conjoint Analysis | Real-life survey data from South Korean telecom. |
Belwal and Amireh [103] | Partial-Least-Square-Based Structural Equation Modeling | Survey data from Omani telecom industry. |
Tong et al. [104] | Information Gain on Decision Tree Model and k-means Clustering | Survey data from customers of telecom industry. |
Jose et al. [100] | Principle Component Analysis (PCA), Factor Analysis, Regression Analysis, and Cross Tabulation | Data 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 Analysis | Mobile 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 Analysis | Real-world cross-sectional data from a large European telecommunication provider. |
Newton and Ragel [105] | Correlation and Regression Analysis | Customer data in mobile telecommunication industry in Batticaloa. |
Ammari and Bilgihan [94] | Hypothesis Testing | Customer survey data from mobile telecom industry in Tunisia. |
Bi et al. [118] | Clustering Techniques | Dataset from China telecom industry. |
Dubey and Srivastava [106] | Exploratory Factor Analysis, Regression Analysis | Customer survey data from Indian telecommunication industry. |
Lu et al. [119] | Boosting and Logistic Regression | Telecommunication company dataset. |
Almana et al. [120] | Neural Network, Statistical Analysis, Decision Tree, Covering Algorithm | Customer data from telecom industry. |
Kamalraj and Malathi [121] | J48 and C5.0 of Decision Tree | Dataset from Orange database. |
Zhang et al. [110] | Kohonen Clustering | Consumption data of a telecom enterprise in the region of Liaoning. |
Nagarajan et al. [111] | Rule-based Data-Mining Technique | Telecommunication database. |
Haridasan and Venkatesh [107] | Frontier Analysis | Dataset from mobile telecommunication company in Chennai, Tamil Nadu, India. |
Katona and Baier [101] | Hypothesis Testing | Dataset from telecom and utility company in Germany. |
Camilovic [102] | Clustering and Classification Techniques | Dataset from telecommunication industry. |
Arumawadu et al. [113] | k-means Clustering | Customer data in telecommunication industry in Sri Lanka. |
Kim et al. [108] | Hypothesis Testing | Survey data from mobile telecommunication company in Korea. |
Bascacov et al. [114] | Clustering Technique | Call detail record (CDR) from telecom industry. |
Routray et al. [115] | Association Rule Mining | Data from Indian telecom industry. |
Hwang et al. [116] | Logistic Regression, Neural Network, Decision Tree | Six-month service data of one wireless communication company in Korea. |
Amin et al. [109] | Regression Analysis | Customer survey data from telecommunication users. |
Verhoef [15] | Hypothesis Testing | Customer 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 Tools | Dataset from Reliance Jio. |
Caigny et al. [124] | Decision Tree, Logit Leaf Model | Fourteen different datasets. |
Shouchen et al. [125] | Distance Method by Norm Method | Dataset from China telecommunication industry. |
Nkordeh et al. [126] | Literature Survey | Existing working in Nigerian telecommunication industry. |
Bibin and Ramanathan [127] | Conjoint Analysis | Survey data of students. |
Vafeiadis et al. [128] | Boosting, Artificial Neural Network, SVM, Decision Tree, Naïve Bayes, Logistic Regression | UCI Machine Learning Repository. |
Stripling et al. [129] | Profit Maximizing Logistic Regression, Genetic Algorithm | Real-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 Logit | Real-life survey data from Peru. |
Al-Zadjali and Al-Busaidi [133] | Hypothesis Testing | Survey data collected using questionnaire. |
Jin et al. [134] | Hypothesis Testing | Major telecommunication operator in China. |
Ascarza et al. [135] | Field Experiment and Manual Calculations | Real-life data from South American wireless communication company. |
Friesen and Earl [136] | Non-IT-based Technique | Real-life data collected from graduate and postgraduate students. |
García-Mariñoso and Suárez [137] | Logit Model | Real-life survey data collected by Spanish Markets and Competition Authority. |
Gerpott and Meinert [138] | Regression Analysis | A dataset of residential users of mobile communication services. |
Gerpott and Meinert [139] | Hypothesis Testing | Data 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
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 StyleSaha, 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 StyleSaha, 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