1. Introduction
A company often implements a strategic management method to be sustainable and competitive. It most certainly includes a resource-based perspective of the firm (e.g., strategies, skills, business innovation, product development, and research implications) as well as theoretical extensions such as business expert systems, knowledge development, utilization capabilities, and generating long-term (competitive) business advantages [
1]. Over the last two decades, the majority of companies around the world including both small- and medium-sized enterprises (SMEs) and large corporations have attempted to develop and maintain their e-commerce websites, acknowledging that having an online presence provides numerous competitive advantages over conventional ‘brick-and-mortar’ rivals [
2]. E-commerce is a modern business strategy that assists firms in maintaining a competitive advantage in a rapidly changing business environment by lowering customer expenses, improving the quality of goods and services provided, and speeding up the delivery process [
3,
4].
E-commerce, often known as electronic commerce, refers to the online purchase and sale of goods and services. This can include business-to-business (B2B), business-to-consumer (B2C), and even consumer-to-consumer (C2C) transactions on platforms such as online marketplaces. With the proliferation of the Internet and mobile technology, e-commerce has grown in popularity. It has numerous advantages including convenience, a vast assortment of products, reasonable costs, and the opportunity to shop anywhere at any time. E-commerce platforms typically consist of an online storefront or website where customers can explore products, add them to shopping carts, and complete transactions using secure payment systems. In addition, e-commerce frequently employs digital marketing strategies such as search engine optimization, social media marketing, and email marketing to contact potential customers and increase sales. The rapid growth of digital technology has completely changed how organizations run and communicate with their stakeholders. The idea of sustainability has drawn a lot of attention in recent years, reflecting the rising concerns regarding environmental, social, and economic challenges. E-trust has concurrently come to be recognized as a crucial element in determining the nature of online interactions and transactions. This study examined the connection between e-trust and sustainability, illuminating their interaction and adding to the present scholarly conversation.
In Türkiye, where digital transformation is experienced in every field, large enterprises, SMEs, society, and individuals are inevitably involved in this transformation. During the previous 20 years, buying–shopping behaviors have altered due to the growth of the e-commerce sector and the advancement of Web 2.0 technologies [
5]. With ongoing advancements in Internet technology, quick access to data is expanding; as a result, the number of e-commerce websites will keep increasing, and commercial rivalry between e-commerce sites can become increasingly fierce. Due to the technological breakthrough of recent advancements, our quick acceleration into the age of available information has been substantially expanded; the number of e-commerce websites will swiftly rise, and the friction of rivalry between these sites will put business pressure to grow [
6].
E-commerce volume in Türkiye is continuing to show a growing trend. E-commerce, among the most dynamic sectors, is growing and expanding at an unstoppable pace. According to the report, retail e-commerce sales in 2021 were expected to be valued at around USD 5.2 trillion worldwide [
7]. Likewise, online shopping was anticipated to constitute 19.7% of the global retail sector by 2022 [
8]. This indicates the dramatic changes in shopping habits. According to [
9], the effects of e-commerce have transformed how people access and transmit information and purchase things. Consumer purchase habits are simplified and individualized when e-commerce is well-developed. Because of the rapid expansion of e-commerce, customers may now access information, utilize, and engage with new marketplaces and goods.
Moreover, customers have increased their willingness to find information about the items they seek online and evaluate the many benefits and offerings. This conduct contributes to the consumers’ inclination to lessen their allegiance to e-commerce businesses [
10]. Consumers are more linked to brands, merchants, and goods than ever before because of e-commerce.
COVID-19 especially made online Internet shopping widely attractive among people of every demographic. Because people stayed at home for a long time during the quarantine period, their time and effort were considerably reduced. As a result, Internet markets and websites became increasingly popular, and people’s reliance on online technology is still growing [
11].
The reasons for those who prefer online shopping can be listed as follows: advantageous prices, discount options, same-day delivery, saving on time, the opportunity to compare products and prices, payment convenience, product variety, ease, convenience shopping, and ease of product replacement and refund.
However, along with the benefits of online shopping, some challenges can cause consumers to be confused and make the right choices. Because of the lack of face-to-face encounters with shops and untrustworthy information in virtual environments, online purchasing can present more obstacles than offline shopping [
12]. For example, because of the difficulties connected with Internet purchases, establishing online loyalty is more challenging than establishing offline loyalty.
Low customer switching expenses (e.g., preventing the potential of the physical effort required to transit to another store), distrust [
12,
13], quick word-of-mouth dissemination [
12], ease of information seeking and price comparison at competing stores [
13,
14], and ambiguity (e.g., insufficient details in product assessment procedures and making informed decisions, trust in online retailer, displeased processes) [
12,
13,
14] are some examples.
Hence, decision making has become one of the most critical strategies in online purchasing. A decision denotes an action or series of actions chosen from many alternatives.
In the decision-making process, the fact that many factors and objectives must be evaluated together can complicate the decision-making function due to the general conflict of objectives. Organizations using modern decision support methods gain a significant competitive advantage in an increasingly complex business environment. When the chain of decisions of individuals or institutions is considered a cycle, the factors that ensure the formation of this cycle are as follows: decision-maker(s), decision environment (constraints), objectives (criteria, targets), alternatives, resources, and method [
15].
From the consumer’s point of view, the decision-making process is when a consumer chooses the most suitable online platform or a few available alternatives. Companies must offer high-quality websites that give both attractiveness and utility to consumers to succeed in such a company setting. Consequently, there is an underlying necessity to comprehend all parts of e-commerce websites to achieve the essential apex of appealing functioning [
16]. In addition, e-marketplaces need to be aware of the critical success factors that bring them sustainable competition on the web as well as identify the factors that customers consider when purchasing goods or services online. Furthermore, the decision-making process is not always straightforward and can be influenced by various external factors such as cultural, social, and economic factors. For instance, a consumer’s decision to purchase a product might be influenced by their cultural background, personal preferences, or social status. Therefore, understanding the decision-making process and the factors that influence it is crucial for businesses to develop effective marketing strategies and target the right audience.
Nevertheless, evaluating e-commerce websites is an MCDM issue since it requires examining qualitative and quantitative elements [
17]. Several MCDM approaches require data on the MCDM problem’s criteria and choices such as weights, order connections, and preference functions [
18].
The literature has a wide variety of MCDM techniques of which the most well-known methods are the AHP, TOPSIS, DEMATEL, VIKOR, ANP, CODAS, MARCOS, PROMETHEE, and EDAS.
The MCDM methods that sort in the set of alternatives are known as outranking methods in the literature. A wide variety of methods sort in MCDM methods: ELECTRE, PROMETHEE, QUALIFLEX, REGIME, ORESTE, ARGUS, EVAMIX, and MELCHIOR.
Although different MCDM methods have many uses, the ORESTE method has been applied less than the others. Therefore, this study examined the most preferred online shopping platforms utilizing the ORESTE method, which is in the outranking class of MCDM approaches. Although the ORESTE approach is an effective decision-making tool, it cannot represent fuzziness or ambiguity. As a result, a fuzzy expansion is essential to render the approach more competent.
Hence, the study proposed an extended ORESTE method under the intuitionistic fuzzy (IF) environment. In order to understand the success factors of Turkish e-commerce platforms, the following research questions were answered:
To the best of our knowledge, this study serves as the initial effort to implement the IF to the ORESTE approach, which has been absent in the literature in the setting of the Turkish e-commerce industry.
3. Method
3.1. Collection of Data
In a competitive industry, marketing to female consumers swiftly boosts revenue, market dominance, and profitability.
Nearly 85% of all consumer expenditure in the U.S. is controlled by women, and they also make 70% of the big financial decisions that affect them and their family members [
86]. The reasons why the female consumer market is more profitable are:
Since the rate of e-commerce usage is very high for women, this study set a female constraint as gender.
Teens and young people have the edge over older generations when it comes to Internet purchasing since they have rapidly become accustomed to the world of online shopping. Older generations are unlikely to purchase online since they are unfamiliar with the new setting and adapt more slowly to the new environment. According to one study [
26], online shoppers aged 25–34 years old preferred Internet stores due to the reduced pricing and wider selection of items.
A questionnaire was prepared with the help of Google Forms, and is given in the
Supplementary Materials. Five Turkish female experts (DM
1, DM
2, DM
2, DM
4, DM
5) were requested to provide the first preferred criteria value and rate the websites according to the criteria. These were heavy buyers from online marketplaces, thus, they have a lot of information in which to evaluate online marketplaces. The decision-makers’ importance was determined by ranking them according to their shopping frequency. When people do not shop frequently, they might not be able to assess the websites accurately, even if they correctly define the importance degree of the criteria. The detailed information related to decision-makers is given in Table 5. The criteria weights might considerably influence the evaluation outcome. Nevertheless, crisp numbers are problematic for accurately representing criteria weights in complicated contexts. Experts, on the other hand, may perform subjective judgments between criteria.
Each decision-maker was weighted, and after their assessments, all individual choice views were merged into a group opinion throughout the group decision-making process to develop an aggregated IF decision matrix.
Gender and age constraints and customer preference criteria are also important determinants in choosing an online shopping platform. Consumers place their orders from online shopping sites by paying attention to many criteria.
These criteria are listed in
Table 4:
3.2. The IF ORESTE Methodology
The IF-ORESTE method was introduced in this study and the IF-ORESTE workflow is demonstrated in
Figure 1 below. The IF-ORESTE methodology consists of three stages. The stages are explained in the following subsections.
The first two steps were performed in the first stage, which covered the experts’ evaluations of the criteria and alternatives. Thus, in the second stage, to calculate the weight of each criterion concerning Xu’s IF method, the IF-weighted averaging operator (IFWA) was utilized in this research. The process is explained in the next parts. Steps 3 to 9 were conducted in this stage. The criteria weights and the final decision matrix were obtained from this stage and utilized in the third stage, where the ORESTE method was applied.
3.3. The Classical ORESTE Method
There are two separate stages in solving decision-making problems with ORESTE [
51]. First, establishing a global full preliminary ranking of alternatives based on the order of the alternatives depending on the criteria with the criterion order (ORESTE I) and second, establishing a partial pre-ranking on alternatives after performing contradiction and indifference analyses (ORESTE II).
In the ORESTE method, two clusters are created. The first is a set of options with m elements; A = (a1, a2, a3, …, am) is the finite alternative set. The second is the finite set of criteria C = (c1, c2, c3, …, ck), which has k elements and is expressed as the criteria set.
For example, let the alternative set consist of three alternatives:
A = (a1, a2, a3)
The set of criteria consists of three criteria:
C = (c1, c2, c3) clusters will be evaluated.
The weights show the relative importance of the criteria in rank. Their general structure is the preferred structure. There are two groups: preorder and weak order. The relationship between the criteria in the preliminary ranking is as follows: S = (P or I). P (preference), asymmetric, expresses the criterion’s preference over the other criterion; I (indifference) shows a symmetrical relationship, meaning that there is no difference between that criterion and the other criterion.
In the same way, this relative ranking, which is j = (1, 2, 3, …, k) among the criteria, is made to comprehend the structure of the alternatives according to the criteria. The ultimate goal is to establish a global preference structure that shows the assessment results of alternatives according to each criterion in cluster A.
Continuous example: First of all, a preference structure will be established to determine the relative importance of the criteria. In this step, the criteria are listed in order of importance from the largest to the smallest, and the relations between the criteria are expressed as symmetrical or asymmetrical.
c1 P c2 I c3
When the order and relationships of the criteria are shown as follows: criterion 1 is preferred to criterion 2 and criterion 3, criterion 2 and criterion 3 are indifferent to each other.
Likewise, in the case where the relative significance of the alternatives is explained as follows:
c1: a1 I a2 P a3
c2: a1 P a1 P a3
c3: a1 P a2 I a3
If we consider the c1 criterion, alternatives a1 and a2 are preferred to alternative a3 but are indifferent to each other.
At this stage, the Besson rank values should be found. After defining the relative significance of the criteria and alternatives by preliminary ranking, the Besson rank values should be determined to digitize the evaluations to be used in the analysis.
The Besson rank system assigns criteria and alternatives to the criteria and alternatives in order of importance, according to their rank values. If there is a preference between the criteria or alternatives (P, asymmetric relationship), the rank values are assigned directly according to the order in which they are found. If there is indifference between the criteria or alternatives (I, symmetrical relationship), the rank values are calculated with the arithmetic mean of the ranks of the criteria/alternatives.
Continuous example:
r(c1) = 1
rc1(a1) = = 1.5 rc1(a2) = 1.5 rc1(a3) = 3
Considering the c1 criterion, the relative ranking value between the criteria equals the rank value and is 1.
Considering the alternatives of the c1 criterion, this is computed by averaging the ranking values.
By considering the rank values of the alternatives/criteria, it is possible to determine the positions of the alternatives according to a selected origin point.
R = 1: Average rank (weighted arithmetic mean);
R = −1: Rank based on harmonic mean;
R = 2: Rank based on quadratic mean;
R = −∞: min((r(ci), rci(aj));
R = +∞: max (r(ci), rci(aj)).
Projection values are calculated according to Equation (1) below:
Continuing the example:
If we take the c1 criterion and a1 alternative in the example, the r(ci) values are the following.
r(c1) = 1 and rc1(a1) = 1.5.
The projection value for the a
1 alternative of the c
1 criterion is as follows:
The step of calculating global ranks consists of assigning Besson rank values to all of the calculated projection distances. The projection distances calculated using Equation (1) in the previous step were ordered from smallest to largest and took the Besson rank values according to the order in which they were found.
In the step of calculating the average ranks, the global ranks obtained in the previous step were obtained by summing them for each alternative. Then, Equation (2) was used to determine the average ranks:
After addressing the IFS rules, the IF-ORESTE method was detailed stepwise.
In a finite set U, IFS of G with the parameters
membership, and
non-membership function may be expressed as in Equation (3):
where
U: [0,1] and
is the hesitation degree in the IFS and is used to define
’s belongingness to G, where
for each
.
When the is small, there is higher certainty regarding . When is large, information about becomes increasingly questionable. Clearly, the conventional fuzzy set idea is restored when for all elements of the universe.
If A and B are two IFSs in U, then the multiplication operator is characterized as follows [
73]:
In the following part, the IF ORESTE method was introduced stepwise.
3.4. IF-ORESTE Method
Let symbolize a group of options and represent a set of criteria, and the approach for the IF-ORESTE technique is as follows:
Suppose the decision group has
l experts. The decision-makers’ importance is seen as linguistic phrases conveyed in intuitionistic fuzzy numbers. The fundamental definitions for the procedures employed are provided in [
76].
Assume
to be an IF number of the
pth expert rating. The weight of the
pth expert was then calculated as follows:
and
.
Not all criteria might be of equal relevance, and W characterizes a hierarchy of significance. All of the various experts’ judgments on the relevance of each criterion must be combined to reach W.
Let
be an IF number applied to criteria
by the
pth expert. The weights of the criterion were then computed utilizing the IFWA operator:
, where for every j = 1, 2, …, n.
Many authors have suggested score and accuracy functions for the defuzzification of IF sets. For example, [
99] considered only the membership
and non-membership (
) degrees, but the hesitancy (
was ignored [
100]. To overcome this issue,
and
were specified using max and min operators in the literature because their outputs had no notable disparities [
84,
85].
The IF has a positive ideal solution (), which is + = (1, 0, 0), and a negative ideal solution (), which is = (0, 1, 0).
The distance measure was calculated using the fuzzy normalized Euclidean distance function [
101]. In Equations (8) and (9),
and
represent the positive and negative distance metrics, respectively.
The PC is defined as follows using the equation below [
84].
To obtain the final decision matrix, the
values must be normalized. For normalization, Equation (11) below was utilized.
where
.
Let
represent each expert’s IF decision matrix.
denotes the weight of each expert, and
. All individual preference views must be combined into a group opinion throughout the decision-making stage to develop an aggregated IF decision matrix. The IFWA operator introduced by [
102] was employed to do this.
for each i = 1, 2, …, m and j = 1, 2, …, n.
The following is the aggregated IF decision matrix:
The aggregated IF decision matrix is formed when the criteria weights (
) and the aggregated IF decision matrix are estimated [
73]:
and
The aggregated weighted IF decision matrix may then be constructed, as shown below.
describes a component of the aggregated weighted IF decision matrix.
The ultimate weights were computed with normalization. To normalize the weighted IF values, the steps were followed to determine the final weights of the criteria (steps 3 to 6). The normalized value can be obtained using Equations (8)–(11).
The weighted normalized final decision matrix was obtained from step 9 of the methodology. The final normalized matrix values were ranked in ascending order. Based on the Besson rank orders connected with the k criteria, each option was assigned a rating for each criterion. Furthermore, each criterion was allotted a rating depending on its position in the criteria’s weak order.
The global distances were calculated using Equation (1). For each alternative under each criterion, the global preference score was calculated by multiplying the criteria weight with the global distance for each alternative and corresponding criterion. The values of were given the final weights of criteria () from step 6. After obtaining the global scores, the weak order of alternatives was determined. The summation of the global scores related to the criteria for each alternative indicates the weak rank of alternatives. The scores were ranked in descending order. The highest score took the last weak order. The first weak rank of the alternative took the higher preference degree.
The average and net preference intensities are needed to build the PIR (preference, indifference, and incomparability) structure. The average preference intensity
to
can be processed using Equation (15) and the net preference intensity as per Equation (16) below.
Initially, the principles of the indifference and incomparability examination (i.e., the conflict analysis) can be specified as follows:
When , then ;
When
, then
where
are the preference and indifference threshold parameters, respectively, and
. The parameters
can be determined using Equations (17) and (18), respectively.
is the preference intensity indifference threshold and is computed as follows:
The parameter “
” is the indifference relation with the minimum difference between two linguistic terms and is calculated from practical problems. More information about the selection of the parameters can be found in [
58].
The outcome is a common choice depending on the weak rank and the PIR structure. The weak rank and the PIR structure determine the alternative’s substantial rank. The rank of specific alternatives is calculated based on the P and I relations in the PIR structure. Then, the total rank may be inferred by integrating the weak rank when the R connection is present amongst many other possibilities. For example, if the weak rank of four choices is A1 > A2 > A3 > A4 and the PIR associations are as follows: A1 P A2, A1 P A3, A1 P A4, A2 I A3, A2 P A4, and A3 R A4 are then found using the P and I relations in the PIR structure. A1 > A2 because A1 P A2, A1 > A3 because A1 P A3, A1 > A4 because A1 P A4, {A2, A3} because A2 I A3, and A2 > A4 because A2 P A4, but the rank of options A3 and A4 cannot be immediately established by the PIR relations for A3 R A4. In this scenario, the low ranking of options A3 and A4 might be used as a guide. Because A3 > A4 is in the weak rank, the entire rank of possibilities is A1 > {A2, A3} > A4, and the strong rank is A1 > {A2, A3} > A4.
5. Conclusions
The IFSs were integrated into the ORESTE approach to evaluate the four most prominent e-commerce websites in Türkiye under the specified criteria. By soliciting the opinion of professionals, the experts ranked their online shopping experience by year. Their preferences regarding e-commerce websites and the criteria were converted into IF numbers to avoid information loss. The experts’ weights were derived by analyzing the variability of DMs with distinct characteristics. After establishing the criterion weights and generating the normalized weighted decision matrix, the global preference score was determined, and the conventional ORESTE method was implemented.
The most favored e-commerce platform was A2, whereas A4 was required from both the weak and strong IF-ORESTE rankings.
The most important criterion was the reliability of the contracted sellers in the online marketplace while having a large brand volume was the least. Easy access to e-commerce platforms was the second most important factor for online purchasers, followed by quick delivery and positive feedback in user comments. Likewise, the decision-makers valued the criteria of offering regular discounts/promotions and the extensive filtering settings of websites equally crucial but less than quick delivery and positive feedback in user comments. The criterion partnered cargo companies was found to be more significant than the e-commerce platform’s installment options and its affordability compared to its rivals [
30,
106,
107,
108,
109,
110,
111,
112,
113,
114,
115].
Trust is crucial for long-term virtual commercial interactions, influencing consumer happiness and satisfaction. Online purchasing sites must gain consumer trust, as faith positively influences satisfaction. Trust is essential for secure and trustworthy transactions, and online businesses must maintain confidence to generate consumer attention. Frequent online shopping services generate increased consumer interest in transactions [
117]. In [
118], it was demonstrated that the most prevalent sort of trust was when customers, as trustors, anticipated another party (typically sellers) performing an expected action, and they offered a synthesis of the theories used in the review as it can also highlight the factors that could have been more focused on such as interpreting trust by different parties.
The decision of e-commerce platforms to establish the marketplace channel is complex due to competition and cooperation. Although suppliers face challenges such as commission fees and responsibility for sales and marketing activities, they benefit from the marketplace channel, allowing them to control product pricing and directly reach online consumers [
119]. The marketplace channel has been proven to be an efficient and effective transaction method. However, there have still been instances where it has been misused by certain suppliers selling counterfeit or substandard items, which ultimately negatively impact the marketplace’s reputation and can harm consumers. Counterfeit products, which appear identical to real ones, are a common type of fraud across different product categories on e-commerce platforms [
120].
Anti-counterfeiting measures are therefore necessary to protect the integrity of the consumer market and promote sustainable development. The blockchain anti-counterfeiting traceability system has emerged as a potential solution. It utilizes the features of blockchain technology such as distributed ledger record characteristics and the Internet of Things to trace every aspect of a product’s journey from raw material sourcing to production, processing, and logistics. This system ensures the authenticity of products and creates trust between brands and consumers. E-commerce platforms can implement different service models such as building their own blockchain anti-counterfeit traceability platform or collaborating with third-party platforms to provide anti-counterfeiting traceability services to consumers. However, these different models have varying costs and efficiencies and can affect the company and consumers differently [
121]. Additionally, smaller suppliers may not be able to afford the fees charged by e-commerce platforms, which could make it more challenging for them to compete with larger enterprises. Therefore, an integrated model is needed to challenge this problem.
Improved human–technology communication is essential to achieve sustainable growth in online businesses. Digital media help firms obtain marketing intelligence, incorporate knowledge into product creation and marketing plans, and obtain feedback for remedial action. Incorporating new technical tools into an enterprise’s operations is critical to satisfy consumer demand and boost resilience [
122]. The desire of a client to maintain their connection to a firm is determined by their view of the advantages of a high-quality service that delivers a constant flow of value [
123]. However, at this fast pace, customer demands are constantly changing. Companies must offer their users high-quality websites that are interesting and functional according to their wishes in order to compete. Firms exploring electronic data interchange will find these websites to be an appealing alternative. As a result, in the growing global economy, e-commerce has evolved into an essential component of company strategy [
124].
To remain competitive, e-retailers must supply special items, provide “a greater shopping environment, more customized options, and higher customer control”, and ensure that the online buying experience is simple and fast [
125]. A successful strategic management approach in e-commerce competitiveness necessitates a recognition of the drivers that influence the whole process [
126].
To summarize, trust might be a driver as a success factor for e-commerce platforms, while positive feedback from customers might speed up the process of success.
5.1. Implications
There is an increasing importance in developing digital skills and promoting them in public education to narrow the digital divide. Policy recommendations include measures to increase ICT literacy and Internet accessibility, reduce the gender gap, improve security in online shopping, and encourage companies to focus on innovating and targeting market segments that are less likely to shop online.
The effectiveness of new e-commerce legislation in India is being questioned due to slow judicial processes, inadequate infrastructure, and corrupt practices. Consumer activists, policymakers, and researchers can collaborate to strengthen trust-building among online consumers. The research also contributes to understanding online trust and e-consumer protection as well as identifying crucial factors that affect customer loyalty. As the e-commerce industry constantly evolves, future research will be necessary to assess the effectiveness of the enacted legislation, promote trust-building, and protect consumer rights. The government’s policies also pose a challenge as they accelerate online transactions, emphasizing the need to maintain consumer protection in e-commerce.
On the other hand, e-commerce has resulted in changes in consumer behavior and the value of retail space, making it essential for urban management to track changes in shop rents and understand the logic behind them. Mapping shop rent distributions is necessary to optimize retail land returns, monitor dynamic changes in shop rents, study the spatial distribution of retail facilities, and optimize the layout of shop spaces. While the impact of e-commerce on consumer behavior and retail services has been widely studied, few studies have examined the changes in shop prices or rents. One study used geospatial big data and machine learning to identify factors impacting shop rents, the new logic of rent distribution in Guangzhou, and map changes in shop rent distribution. The study revealed the impact of e-commerce on changing customer behaviors and suggests the need to rethink the pricing mechanism to define the value of urban space. Future research should focus on finer mapping and the in-depth analysis of the rent distribution mechanisms by using machine learning algorithms for causal inference [
127].
Industries are adopting autonomous technology to increase production rates, but small- and medium-scaled industries face barriers when attempting to adopt such technology due to high costs and maintenance, a lack of skilled resources, increased maintenance costs, a decrease in the versatility of the technology, and an increase in unemployment as key factors [
128].
5.2. Limitations and Future Works
Further study may be conducted to expand the number of alternatives and criteria, and our IF-ORESTE rankings technique can be compared with other MCDM methods. Because limited factors were considered in this research, in the following studies, more factors might be included in the analysis and the results compared with each other. Another point is that the trust and reliability terms were generally considered; however, e-trust includes many aspects such as the imitation of products or false information, etc. Hence, in future studies, this term might be specified and reanalyzed.
On the other hand, this study can be compared with other fuzzy ORESTE methods using sensitivity analysis. For example, [
129] discussed different aggregating operators to assess the optimal solutions under the multi-attribute decision-making technique, specifically in handling uncertain and ambiguous information under the IF system. The authors studied triangular norms and their generalization in the form of robust aggregation tools using the Aczel Alsina operations. They developed a list of certain operators under the IF information system including the IFAAHM (intuitionistic fuzzy Aczel Alsina Heronian mean) and IFAAWHM (intuitionistic fuzzy Aczel Alsina weighted Heronian mean) operators, and extended the theory of GHM (geometric Heronian mean) tools. Since aggregating operators play a crucial role in MCDM methods, applying different aggregating operators can result in various options. Therefore, in further studies, these operators can be employed, and the findings can be compared. The study of the connection between e-trust and sustainability is crucial for the development of theories and methodologies. Through this study, we can learn important things about how e-trust influences sustainability, adding to both a theoretical understanding and real-world applications.
There is a need for a complete framework to identify critical technical requirements to improve sustainable e-commerce management practices. For example, using quality function deployment [
130] or Maclaurin symmetric mean aggregation operators based on novel Frank T-norm and T-conorm for intuitionistic fuzzy multiple attribute group decision-making [
131] for e-commerce industries might reveal the most important customer and critical technical requirements that can enhance a company’s technical capability.