How to Evaluate and Improve E-Commerce Implementation and Administration Success State? a New Approach for Managing Success-Relevant Activities

Document Type : Research Paper

Authors

1 Assistant Professor, Department of Cyberspace Research, Shahid Beheshti University, Tehran, Iran.

2 Assistant Professor, School of Industrial Engineering, Iran University of Science and Technology, Tehran, Iran.

Abstract

Achieving e-commerce success is influenced by a variety of interrelated activities. Identifying, analyzing and prioritizing these activities enable decision-makers firstly to evaluate the current success state of Electronic Commerce (EC) businesses more accurately and then to develop an efficient improvement plan to allocate limited resources to achieve a higher level of success. In this research, a Fuzzy Cognitive Maps- analytical hierarchy process (FCM-AHP) approach is used to address this issue by (1) determining interrelationships between influential activities, (2) determining how much these activities influence each other and the overall success, and (3) prioritizing activities to develop a sound improvement plan. In this approach, the FCM technique is used to indicate all possible causal interrelationships between activities and consider all feedback loops between them. Then, the AHP technique is used to determine the contribution weights of activities to the overall success. The obtained management matrices that make it possible to categorize influential activities and the results of improvement scenarios help the decision-makers to develop the most efficient improvement plan and gain the maximum benefit from the allocation of limited resources. An empirical study is implemented to serve as an example to indicate how the approach works.

Keywords

Main Subjects


Introduction

E-commerce has shaken the foundation of different types of businesses around the world and can be defined as the process of buying, selling, or exchanging products, services, and information via computer networks including the internet (Turban et al., 2017). Despite the outwardly prevalent usage of e-commerce in business activities, there is considerable potential for e-commerce growth; for example, in 2018 e-commerce accounted for only 11.9% of the whole retail sales worldwide (Statista). Although there is an untapped potential for e-commerce growth, the failure rate among EC businesses is overwhelmingly high. According to the research conducted by Practical E-commerce in 2014, the failure rate of EC businesses is roughly 80% (Practical e-commerce, 2014-11-07).

If decision-makers of EC businesses aspire to succeed and avoid failure, they need to evaluate their current state and then devise an improvement plan accordingly. To do so, firstly, the influential activities that affect the successful implementation and administration of e-commerce must be identified and categorized. Secondly, an evaluation model must be provided to evaluate the current success state of EC businesses. Finally, decision-makers must consider the current success state, develop an improvement plan and choose a set of activities for improvement based on the categorization and ranking of activities to reach the highest success state possible.

In the context of e-commerce success, a lot of studies have been conducted to illuminate different aspects of this process. Some of these studies tried to identify activities, or motivations that affect the success or adoption of e-commerce (Beldad, De Jong, & Steehouder, 2010; Chaparro-Peláez, Agudo-Peregrina, & Pascual-Miguel, 2016; Choshin & Ghaffari, 2017; Jennex, Amoroso, & Adelakun, 2004; Laosethakul & Boulton, 2007; Sung, 2006). Furthermore, it has been indicated that these influential activities are interrelated, and any improvement in one of them influences other activities (D. Lee, Park, & Ahn, 2001; Tsai, Chou, & Lai, 2010).

Another stream of research is done to develop several evaluation models in order to assess the current state of EC businesses (Delone & Mclean, 2004; Huang, Jiang, & Tang, 2009; Kong & Liu, 2005; Y. S. Wang, 2008) or to evaluate the quality of EC businesses’ website from different aspects (Agarwal & Venkatesh, 2002; Baloglu & Pekcan, 2006; Barnes & Vidgen, 2003; Chiou, Lin, & Perng, 2010). Some of these studies prioritize influential activities and factors using different methods based on the contribution of activities to the overall success (Kabir & Hasin, 2011; Valmohammadi & Dashti, 2016). Another branch of studies, after evaluating the website’s quality, proposes improvement plans (Tanjung & Dhewanto, 2014; Tsai et al., 2010). Table A (presented in Appendix) gathers the most related works in this domain, highlighting the advantages and limitations of each one.

Following the literature review, none of these studies has taken into account the causal relationship between activities, and their role in the evaluation models and improvement plans. The importance of considering causal relationships is that it enables decision-makers to measure all direct and indirect influences of an improvement in one activity on the other activities and on the overall success. In other words, taking into account the causal relationship enables decision-makers to evaluate the current success state of EC businesses and the results of different improvement plans more accurately. The outcome of this higher accuracy is focused on developing more practical and fruitful improvement plans.

From a conceptual perspective, this paper has a holistic and systematic perspective on companies that have developed e-commerce. In such companies as a live organism, all components which affect e-commerce success are influential on each other. In this paper, the inter-relationships between the effective components are investigated and a network model is developed. To the best of our knowledge, no previous study has this type of perspective in scrutinizing the concept of e-commerce success.

From a methodological perspective, most previous studies developed qualitative models for investigating e-commerce. This paper introduces a step-by-step instruction that enables decision-makers to quantify and evaluate the result of various improvement plans. As a result, decision-makers can calculate and compare the result of different improvement plans and adopt the most productive one.

From a practical perspective, decision-makers can use the approach to assess the current success state of e-commerce and analyze the effect of different improvement scenarios. As a result, the most productive improvement plan can be developed with regard to the limited available resources.

To formulate causal relationships between activities, the fuzzy cognitive maps (FCM) technique is used. This technique is an extension of a neural network with directed weighted networks and feedback loops which is used to model and analyze the behavior of complex systems (Ahmadi, Forouzideh, Alizadeh, & Papageorgiou, 2015). Then the analytical hierarchy process (AHP) technique is used to determine the contribution weight of each activity to the overall success by using the comparative judgment. By using these two techniques, the evaluation model is developed. In the next step, the results of the DEcision MAking Trial and Evaluation Laboratory (DEMATEL) technique which is two management matrices, as well as the result of improvement scenario (1) are used to prioritize and rank activities and devise the most effective improvement scenario.

This paper has a sound contribution to e-commerce research, by developing a new evaluation model for the success state of the EC business, as well as by exploiting different improvement scenarios and choose the most efficient one. In particular, after developing the evaluation model, activities are prioritized based on two criteria: (1) their causal relationships and interactions with other activities and (2) their contribution to the overall success. This prioritization enables decision-makers to determine where to focus the limited management effort and devise improvement plans more efficiently.

The remainder of this paper is organized as follows; the literature review of influential activities and their categorization are presented in section 2. The objectives and contribution of the research are explained in section 3. The FCM-AHP approach is explained in section 4. Section 5 indicates the results obtained from the application of the approach to make a decision in the case study, Digikala Company. Finally, Section 6 summarizes the main outcomes of this work and recommendations for future studies.

Background

Functional areas and influential activities

In order to achieve success in the implementation and administration of e-commerce, it is necessary to consider a lot of activities (Beldad et al., 2010; Valmohammadi & Dashti, 2016). In this research, activities have been considered that decision-makers of EC businesses can change. Factors such as computer literacy of customers, or internet connection have been mentioned as influential factors on the success of e-commerce (Laosethakul & Boulton, 2007). However, decision-makers of EC businesses have limited ability to influence this type of factor. As a result, we have excluded this type of activity from this research. In the following, the influential activities and their categorization are described.

Generally, the success of e-commerce is hugely dependent on using security features and providing customers with a private assurance policy to decrease customers' concerns and increase customers' trust (Lawrence & Tar, 2010). Furthermore, devising plans to handle the intrinsic technical complexity of e-commerce implementation is another activity that decision-makers must address (Sila, 2013).

To launch and administer successful e-commerce, it is necessary to provide sufficient financial resources (Gunasekaran, McGaughey, Ngai, & Rai, 2009) and increase awareness regarding the costs, benefits, and essence of e-commerce (Valmohammadi & Dashti, 2016). To highlight the importance of this awareness, Darch & Lucas (Darch & Lucas, 2002) showed that the lack of awareness decreases the speed of e-commerce implementation. Furthermore, devising plans to decrease the cost of implementation and administration of e-commerce is vital to increase the probability of success (Darch & Lucas, 2002).

Another influential activity is increasing the knowledge of staff to handle different tasks of implementation and administration of e-commerce (Kshetri, 2007), where this knowledge decreases organizational resistance to any change that is resulted from e-commerce implementation (Gunasekaran et al., 2009). In other words, successful implementation of e-commerce requires staff's adaptation to the resultant changes. As a result, devoted to decreasing this adverse resistance, EC businesses need to have top management support (H.-C. Chiu, Hsieh, & Kao, 2005) and develop a comprehensive change plan (MacGregor & Vrazalic, 2005).

To administer and implement e-commerce successfully, it is necessary to obtain appropriate and efficient software and infrastructure (Valmohammadi & Dashti, 2016) and choose suitable products and services regarding the essence of e-commerce (Rao, Metts, & Monge, 2003). To do so, it is necessary to evaluate the suppliers of technology in the market and conduct market research to offer suitable products and services on the website. Consequently, a thorough assessment of the environment is important to increase the probability of success.

Every EC business must be able to attract and retain customers to survive. To do so, online stores should offer competitive prices (C. M. Chiu, Wang, Fang, & Huang, 2014), satisfactory shipping fees and an acceptable speed of shipment (Lewis, 2006), a wide range of products and services (Cho & Park, 2001), and a clear return and refund policy (Bonifield, Cole, & Schultz, 2010). The idea of providing customers with a lot of choices can act as a double-edged sword. Whereas the absence of a wide range of choices can harm the trust of customers, a very wide range of choices can confuse customers and decrease the sale (Iyengar & Lepper, 2000). Thus, the decision-makers of an EC business should consider a balance between the range of offered products and the simplicity of purchase for customers.

In addition to considering customers’ needs, the administrators of online stores must extend the market share by using marketing techniques (Hanssens & Pauwels, 2016). Thus, online stores need to use various marketing channels (Verhoef, Kannan, & Inman, 2015), do continuous marketing (Currim, Lim, & Zhang, 2016; Levinson, 2007), apply analytical methods and tools to assess the efficiency of marketing plans (Hanssens & Pauwels, 2016) and use CRM methods and tools to improve the retention rate of customers (Stein, Smith, & Lancioni, 2013). The necessity of using different channels for marketing is that customers use different channels and devices during their decision-making and buying process (Yellavali, Holt, & Jandial, 2004). Thus, online stores should develop plans, and allocate sufficient resources to do marketing in different channels.

In addition to the aforementioned activities, there are a set of activities that affect customers' trust. Trust-building activities have been included in this research because a direct relationship exists between the level of trust and the intention of customers to buy from an online store (Gefen & Straub, 2004; Mou, Shin, & Cohen, 2017; W.-T. Wang, Wang, & Liu, 2016). In other words, if decision-makers of EC businesses seek to succeed and attract customers, they should gain customers’ trust.

One of the main ways to earn customers' trust is through features that are provided for customers on the website of an EC business. To launch a trust-earning and reliable website, it should be easy to use (Cebi, 2013), has informative and comprehensive information about products, services, and processes that directly affect customers (Sun, Cárdenas, & Harrill, 2016), has a high-quality graphical user interface (Al-Qeisi, Dennis, Alamanos, & Jayawardhena, 2014),  has the capability of customization based on user’s requests (Krishnaraju, Mathew, & Sugumaran, 2016), has signs of being connected to a well-known and reputable third party (Ponte, Carvajal-Trujillo, & Escobar-Rodríguez, 2015), provide customers with the possibility to chat online and view customers’ review (Ou, Pavlou, & Davison, 2014), has a mobile-responsive interface (Sonika Singh & Swait, 2017), and provide social presence signs (Guillory & Sundar, 2014). The issue of social presence signs comes from the absence of face-to-face communication in e-commerce. Thus, EC businesses’ websites should convey the perception and feeling of being connected to another intelligent entity through a text-based encounter in their communications with their customers (Tu & McIsaac, 2002). Another point about this type of activity is the notion of third-party guarantee that comes from the concept of trust creation based on the transference process (Doney, Cannon, & Mullen, 1998). This concept argues that having signs of connectedness and support from a well-known and reputable third party on the website increases the level of trust in the online stores.

In addition to earning customers' trust in an EC businesses' website, the firm that administrates the website should undertake a set of activities to win customers' trust in the firm itself (Beldad et al., 2010). However, at some point, it is confusing to differentiate between the firm behind a website and the website itself. One of these activities is devising plans to increase the offline presence (Herhausen, Binder, Schoegel, & Herrmann, 2015). The effect of offline presence on customers’ trust is controversial. Whereas some researchers believe that the offline presence increases customer trust (Chaouali, Yahia, & Souiden, 2016; Kuan & Bock, 2007), other researchers argue that the offline presence affects customers’ trust insignificantly (Teo & Liu, 2007). Another activity is devising plans to increase the reputation of online stores among the community of customers (Walsh, Bartikowski, & Beatty, 2014). This aim can be achieved by doing continuous marketing (Levinson, 2007), having signs of being connected to a well-known and reputable third party (Ponte et al., 2015), and a set of other activities.

To conduct the AHP technique and calculate the contribution weight of activities on each other and the overall success, it is necessary to classify influential activities. Regarding the essence of activities, 8 functional areas are developed.

  • Technical area: this area demands technical ability and planning to handle the technical challenges of successful implementation and administration of e-commerce.
  • Financial area: this area covers activities that are related to the financial aspects of e-commerce.
  • Individual area: this area deals with activities that need to be done on an individual scale in an EC business to achieve success.
  • Environmental area: this area includes activities that are related to the environment of an EC business.
  • Customer care: this area deals with the required services that an EC business must provide to respond to its customers' needs and demands.
  • Marketing area: this area includes activities that administrators of online stores must do to acquire and retain customers.
  • Website area: this area covers features that a website must have to earn customers’ trust and increase customers’ intention to buy.
  • Organization area: this area includes activities that affect customers’ trust significantly, but do not fall into the website area.

In the following, Table 1 is presented to indicate functional areas and their related activities.

Table 1. An overview of the activities that influence e-commerce success

Area

No

Influential activities

References

Technical

F1

1

Using security features and providing a privacy assurance policy on the website to increase customers' trust

(Darch & Lucas, 2002; Lawrence & Tar, 2010)

2

Devising plans to handle the intrinsic technical complexity of e-commerce

(MacGregor & Vrazalic, 2005; Sila, 2013)

Financial

F2

3

Providing adequate financial resources

(Gunasekaran et al., 2009; Lawrence & Tar, 2010)

4

Devising plans to decrease the cost of e-commerce implementation and administration

(Darch & Lucas, 2002; Lawrence & Tar, 2010; Zaied, 2012)

5

Increasing awareness regarding the costs, benefits, and essence of e-commerce between administrators and decision-makers

(Lawrence & Tar, 2010; Valmohammadi & Dashti, 2016)

Individual

F3

6

Increasing technical skills and IT knowledge of the staff

(Darch & Lucas, 2002; Kshetri, 2007; Lawrence & Tar, 2010)

7

Achieving top management support

(Lawrence & Tar, 2010; S.-H. Liao, Cheng, Liao, & Chen, 2003)

8

Decreasing organizational resistance to change

(Gunasekaran et al., 2009; Lawrence & Tar, 2010; MacGregor & Vrazalic, 2005)

Environmental

F4

9

Finding a reliable supplier of technology

(MacGregor & Vrazalic, 2005; Valmohammadi & Dashti, 2016)

10

Choosing products and services that are suitable regarding the essence of e-commerce

(MacGregor & Vrazalic, 2005; Rao et al., 2003; Stockdale & Standing, 2004)

Customer Care

F5

11

Providing customers with competitive prices

(C. M. Chiu et al., 2014; Harn, Khatibi, & Ismail, 2006; Nagle & Müller, 2017)

12

Providing customers with a satisfactory shipping fee and acceptable speed of shipment

(Lantz & Hjort, 2013; Lewis, 2006; Trocchia & Janda, 2003)

13

Providing customers with a wide range of products and services

(Cho & Park, 2001; Page & Lepkowska-White, 2002)

14

Defining obvious return and refund policy

(Bonifield et al., 2010; Chang, Cheung, & Tang, 2013; Lantz & Hjort, 2013)

Marketing

F6

15

Using different and various channels of marketing

(Fensel, Toma, García, Stavrakantonakis, & Fensel, 2014; Rangaswamy & Van Bruggen, 2005; Verhoef et al., 2015)

16

Doing continuous marketing

(Currim et al., 2016; Levinson, 2007)

17

Using analytical methods and tools in marketing

(Hanssens & Pauwels, 2016; Järvinen & Karjaluoto, 2015)

18

Using CRM methods and tools

(Reichheld & Schefter, 2000; Stein et al., 2013)

Website

F7

19

launching a website that is easy to use

(Bart, Shankar, Sultan, & Urban, 2005; Cebi, 2013; Kim, 2012; S. Lee & Koubek, 2010)

20

Providing customers with complete, related, and up-to-date information about products, services, and processes that affect customers directly on the website

(H.-C. Chiu et al., 2005; C. Liao, Palvia, & Lin, 2006; Sun et al., 2016)

21

Designing a graphically attractive website

(Al-Qeisi et al., 2014; Cebi, 2013; Djamasbi, Siegel, & Tullis, 2010; Nathan & Yeow, 2011)

22

Providing customers with social presence cues on the website

(Gefen & Straub, 2004; Guillory & Sundar, 2014)

23

Providing customers with Customization capacity on the website

(Kaptein & Parvinen, 2015; Krishnaraju et al., 2016)

24

Demonstrating the signs of being connected to a reputable and well-known third party on the website

(Chang et al., 2013; Ponte et al., 2015)

25

Providing customers with the possibility to chat online, and view customers’ reviews

(Beldad et al., 2010; Ou et al., 2014)

26

Designing a Mobile-responsive website

(Mohorovičić, 2013; Sonika Singh & Swait, 2017)

Organization

F8

27

Devising plans to increase the offline presence of the firm

(Chaouali et al., 2016; Herhausen et al., 2015; Jones & Kim, 2010)

28

Devising plans to increase the firm’s reputation among customers community

(Ponte et al., 2015; Walsh et al., 2014)

 

Objectives and contributions

As mentioned earlier in the introduction section, there is a need to develop an evaluation model that takes into account the causal relationships between influential activities. To make the approach more understandable and provide practical instruction to apply the proposed method, the approach is divided into two steps:

  • Evaluate the current success state of the EC business.
  • Develop different improvement scenarios and choose the most efficient one.

It is possible to regard the issue of reaching a higher level of success as a problem. In other words, the issue of increasing the probability of success can be regarded as the problem of decision-makers. With this restructuring of the issue in mind, problem-solving is defined as the process of determining the current situation, desired situation, and the path between these two situations (Garrette, Phelps, & Sibony, 2018).

To follow the proposed definition, it is necessary to determine the current state of EC businesses. The proposed evaluation model is founded on the combination of FCM and AHP techniques. Using the FCM technique enables decision-makers to illustrate all of the causal relationships between influential activities. The importance of these causal relationships is that they help decision-makers to measure the result of a change in one activity on other activities and the overall success of the EC business. Added to these considerations, the successor state of the influential activities is subjective. Consequently, to determine the success state of the activities and formulate the interrelationship between them, the FCM technique is used (Kosko, 1986). Furthermore, calculating the current success state of the EC business also requires the contribution weight of activities that come from the employment of the AHP technique. Determining the current success state equals determining the current situation in the process of problem-solving.

The desired situation is the highest success state possible by the lowest consumption of resources. This concept is defined by a numerical value and is the overall success state of the EC business after implementing the most efficient improvement plan. This is the point where the strength of the proposed FCM-AHP technique is revealed. As will be shown in the case study, the combination of causal relationships and the contribution weight of activities makes it possible for decision-makers to measure the result of improving different activities separately.

In the last step, it is necessary to determine the path between the two situations. In other words, we have to choose the improvement plan that yields the highest improvement by considering the current success state of the EC businesses. As mentioned before, the employment of the FCM-AHP technique enables decision-makers to evaluate the result of different improvement scenarios, and choose the most efficient one. In this approach, 2 criteria are defined to assist decision-makers with choosing the most fruitful activities for improvement:

  1. Two management matrices that help decision-makers to categorize activities based on their interaction with other activities.
  2. The result of improvement scenario (1) that ranks activities based on their contribution to the overall success.

Decision-Making Trial and Evaluation Lab (DEMATEL) is used to develop criterion 1, and to prioritize activities according to their interaction with other activities. In fact, DEMATEL helps find the most important causal activities where there are very complex interrelationships between activities. Using DEMATEL enables decision-makers to categorize influential activities in a management matrix with four management zones. This matrix helps choose activities for improvement, and allocate limited resources effectively to gain the maximum benefits. These two criteria assist decision-makers in choosing activities for improvement more evidence-driven and reach a higher level of success more efficiently.

Conducting improvement scenario (1) that is introduced as the second criteria are recommended to the decision-makers of all EC businesses. This improvement scenario is conducted to rank activities based on their influence on the overall success of an EC business. To implement this improvement scenario, each activity is improved by one level and its effect on the overall success is measured. The result of this improvement scenario enables decision-makers to identify activities that have the highest effect on the success of an EC business. As a result, decision-makers will be able to develop the most effective improvement scenario that results in the highest improvement to the overall success of an EC business.

To conclude, one of the main contributions of this paper is taking into account the causal relationship between the influential activities to develop an evaluation model that measures the currents state of an EC business and the result of different improvement scenarios more accurately. Generally, this approach provides a practical and data-driven framework for decision-makers and practitioners who aspire to improve the success state and performance of an EC business.In the following, the proposed evaluation model and improvement plan are described thoroughly.

An e-commerce success management approach

Table. 2. Shows the proposed FCM-AHP approach for e-commerce success management with the required data and used approach. Evaluation model development that is implemented by using experts' opinions is the first phase of the approach. This success evaluation model includes the causal relationship between activities and their contribution weights to the overall success of EC business. The second phase is model analysis in which the EC business develops an action plan for improving the overall success after assessing the current success state. In the following section, five steps of the approach are explained.

Table 2. Key phases and steps in the FCM-AHP method

Phase

step

Method

Output

Evaluation model development

Step 1: Formulate the relationship between activities that were identified in the literature review

Using the FCM technique

The success evaluation model

Step 2: calculate the success contribution weight of activities

Using the AHP technique

Model analysis

Step 3: evaluate the current success state of activities

Using a set of six linguistic terms to represent the six-state of success

1. The overall success of the EC business

Step 4: evaluate the overall success of the EC business

Using FCM inference process

2. An action plan for allocating limited management efforts and improving the overall success

Step 5: Analyze the result of the e-commerce success evaluation

Using the DEMATEL technique and the management matrix

 

 

Step 1: Formulate the relationship between activities

As has been discussed in the literature review, there are 28 activities that affect the success of EC. The experts and managers of the EC business assign the causal relationship between activities by discussing questions like the following:

“Which activity B, C, D, etc. will be influenced by any change in activity A?” (Stach, Kurgan, Pedrycz, & Reformat, 2005).

Using an if-then rule enables us to determine the weight (strength) of each causal relationship. The form of this rule is as follows:

If activity Ai faces a change in its value, then this will cause a change by a {very small, small, medium, large, or very large amount} in activity Aj.

The influence of activity Ai on activity Aj can be one of 13 linguistic terms given in Table 3. The negative membership in Table 3 indicates that an increase or improvement in activity Ai causes a decrease or deterioration in activity Aj.

Since several experts are asked to create their own final matrix of activities, a consensus between different experts' opinions is needed to be reached. The augmented FCM method (Salmeron, 2009) enable us to reach this agreement. This approach is used when experts' opinions have equal weights. In this approach, an average between corresponding cells in the final matrices of activities received from experts is calculated and the final connection matrix (W) is created. This matrix is used to draw the graph form of the FCM model.

Table 3. Linguistic terms used for assessing the causal relationship between activities

Linguistic term

Crisp value

µcn= Completely negative

-1

µnvs = Negative very strong

-0.9

µns = Negative strong

-0.7

µnm = Negative medium

-0.5

µcw = Negative weak

-0.3

µnvw = Negative very weak

-0.1

µz = Zero

0

µpvw = Positively very weak

0.1

µpw = Positively weak

0.3

µpm = Positively medium

0.5

µps = Positively strong

0.7

µpvs = Positively very strong

0.9

µcp = Completely positive

1

                       

Step 2. Measure the contribution weight of the activities to the overall success

To calculate the contribution weights of activity, it is possible to use either absolute judgment or comparative judgment (Saaty, 2006; Yeh & Chang, 2009). Comparative judgment is the process of comparing activities against each other and determining their relative importance in this way (Shidpour, Shahrokhi, & Bernard, 2013). On the other hand, contribution weights in absolute judgment are obtained by giving each activity its own single weight regardless of other activities. In the context of e-commerce success, there are no scales to evaluate the influence of activities on the overall success; furthermore, the result of comparative judgment is more reliable because in many cases there is no scale to weighing the decision criteria (Saaty, 2006). Considering the aforementioned points, comparative judgment is accomplished.

Experts, by using the linguistic terms given in Table 4 and the following question, compare the importance of all activities against each other to measure the contribution weight of activities to the overall success.

“How important is activity A compared to activity B in determining the overall success?”

As discussed in the literature review, there are eight functional areas of activities. To evaluate how each activity contributes to the overall success three following steps should be followed (Yeh & Chang, 2009):

  1. Activities within each functional area should be compared against each other to determine their contribution weights in each functional area. This calculation determines the local contribution of each activity.
  2. Functional areas should be compared against each other to determine how each area contributes to the overall success. This calculation determines the local contribution of each functional area.
  3. The two sets of local weights of activities and areas should be used to calculate the global contribution weight of activities

To assess the local and global contribution weights of activities ,  within functional area Fk is given below:

  1. Because there is only one comparison matrix, the Normalization method makes it possible to obtain the local weight of each activity and each functional area.

 

                        1, 2… n                                                                                 (1)

After calculating the normalized value of each cell, we calculate the average amount of each row to determine the local weight of activities and functional areas.

  1. the global weights of each activity Ai are calculated as follows:

 

                                                                                                                  (2)

 

Where the functional area k ( ,  is the local weights of each functional area in association with other m-1 functional areas,  is the local weight of each activity in its corresponding functional area with  associated activities.

 

 

Table 4. Set of Linguistic terms used for pairwise comparisons between the activities

Linguistic term

Crisp value

Just equal (JE)

1

Weakly more important (WI)

3

Strongly more important (SI)

5

Very strongly more important (VSI)

7

Absolutely more important (AI)

9

 

Step 3. Evaluate the success of the activities

As shown in Table 5 a set of linguistic terms is used to represent the six success states of e-commerce activities. Because experts' evaluations are full of imprecise and subjective notions, it is intuitively much easier to reflect experts' opinions using linguistic terms instead of crisp numbers (Yeh & Chang, 2009).

Table 5. Activities’ success state

Linguistic term

Value

Not successful (NS)

0

Very weakly successful (VWS)

0.2

Weakly successful (WS)

0.4

Moderately successful (MS)

0.6

Strongly successful (SS)

0.8

Very strongly successful (VSS)

1

 

Step 4: Evaluate the overall e-commerce success

Having an initial success state of activities and the results of the FCM inference process (Salmeron, 2012) enable decision-makers to assess the overall success state of the EC business. In the FCM model, by using the FCM inference shown as following Eq (3) all activities reach a new value that is the result of the continuous influence of activities on each other (Froelich, Papageorgiou, Samarinas, & Skriapas, 2012). The new value is calculated by aggregating the initial success state of each activity with the summation of influences received from other activities. Assessing the new (final) value of each activity is calculated by

                                                                                               (3)

In this formula, the value of each activity (Ai) in t-th iteration is and the weight of the causal relationship between each pair of Aj and Ai is shown by ; furthermore, f is the hyperbolic tangent equation as shown in Eq. (4)

                                                                                                                          (4)

 

Where c>0 is the slope of the function which is constant.

The final success state of an EC business is calculated by multiplying the final success values of activities by their corresponding global weight. The complete equation is indicated below:

                                                                                                                  (5)

This approach  comes from the result of FCM inference shown in Eq (3) and the global weight of each activity  comes from the result of step 2.

Step 5. The evaluation model analysis

The results of applying the DEMATEL method to the evaluation's model connection matrix (W) enable decision-makers to prioritize activities based on their influential ability and their interaction with other activities. In other words, the result of this analysis enables decision-makers to classify activities into four management zones represented in Fig. 1. This matrix enables decision-makers to choose the activities for improvement that yields the most substantial benefits from the investment of EC businesses’ limited resources. (Ahmadi, Yeh, Papageorgiou, & Martin, 2015; Politis & Siskos, 2004; Yeh & Xu, 2013).

As mentioned before, the final connection matrix W is the input of the DEMATEL method that helps decision-makers determine the extent of each activity influences the others. The final connection matrix is denoted as . The steps of the DEMATEL method is shown below.

  1. The normalized final connection matrix is calculated and

 

                                                                                                                                   (6)

                                                                                                (7)

  1. The matrix that shows the direct and indirect relationships between activities is calculated as follows.

                                                                                                                              (8)

Where is the  identity matrix?

  1. Two values that are “R” and “J” can be extracted from the T matrix. The rows sums is a column named “R” and the column sums is a row named “J”. The “Ri (row sums) is used to determine how much the activity i influence other activities. On the other hand, the “ji (column sums) is used to determine how much influence activity i receives from other activities.
  2. Calculate (Ri+Ji) and (Ri-Ji) for each individual activity i. These values help decision-makers to assess the role of activities in the FCM model. The (Ri+Ji) shows the interaction degree of each activity with the other activities in the evaluation model. The index (Ri-Ji) enables us to compare the dispatching influence by activity to influences received from other activities. A high positive value of (Ri-Ji) means that the activity is highly influenced by dispatching and play an important role in improving the success state of other activities.

Using the results of (Ri+Ji) and (Ri-Ji) enables decision-makers to classify activities under four groups:

  1. Activities with a high level of (Ri-Ji) and a high level (Ri+Ji). These activities have a high priority while any change or improvement in this group of activities has a significant effect on other activities; furthermore, considering their high-level interaction in the network, any failure in reaching sufficient level of success related to this group of activities could result in failure in other activities.
  2. Activities with a high level of (Ri-Ji) and a low level of (Ri+Ji). Considering the high level of influencing of these activities on the other activities, they require specific attention. Investment in this class of activities will bring significant improvement to other activities.
  3. Activities with a low level of (Ri-Ji) and a high level of (Ri+Ji). These activities have a lower priority comparing with the two former groups. Since they only have interaction in the network model and are influence receivers, they need a regular attention
  4. Activities with a low level of (Ri-Ji) and a low level of (Ri+Ji). Considering the low interaction of these activities with other activities and the fact that they are just influence receivers, these activities require low attention.

Apart from the aforementioned grouping method, there is another method that can be used to categorize activities from another aspect. We can draw another management matrix, Fig.1, using two criteria that are the geometric mean (Yeh & Xu, 2013) of the influence (direct and indirect) of each activity on the others (vertical axis), and the mean of contribution weight of each activity (explained previously as on the overall success (horizontal axis). The vertical measure enables decision-makers to understand the extent of influence of any change in each activity on the success state of other activities. On the other hand, the horizontal measure shows the influence of this change on the overall success of the EC business.

High attention

1

Special attention

2

 

                                    High

 

The whole influence on other activities (Direct and indirect)

 

3

Low attention

4

Regular attention

 

 

 

 

Contribution to the overall success

                                     Low

                                          Low                                                                                       High   

                                                                                                                                                                 

Fig. 1. Management zones of the influential activities

To improve the success state of the EC business, it is recommended to pay special attention to the activities that are in the high attention zone (1) because of the influence that these activities have on the others and the overall success. Allocating sufficient resources to these activities is a sound plan. The success state of these activities should be under the constant supervision of decision-makers.

In zone (2) activities are characterized by their high influence in the network model and low contribution level. Because of influences in the model, decision-makers must pay special attention to the success state of these activities and ensure that sufficient resources are allocated to them. Allocating more resources to these activities can be one of the long-term plans of decision-makers.

Decision-makers should provide regular or periodic checks on the success state of the activities that belong to the regular attention zone (4). Furthermore, it is recommended that decision-makers pay minimal attention to the activities that fall into the low attention zone (3) only after allocating adequate attention to the other activities.

Empirical study

To provide step-by-step practical guidance on the proposed FCM-AHP method, we will apply it to Digikala, an EC business in Iran that has the biggest share of the e-commerce market. There are ten experts providing input information.

Step 1: Formulate the relationship between activities

In the first stage, we use the proposed FCM technique in Section 4.1 to formulate the interrelationship between activities. Experts and managers of Digikala assess the existence (columns 1, 2, and 3 in Table 1 Appendix) and weight (column 4 in Table 1 Appendix) of the interrelationship between activities by running some workshops and meetings.

Using the if-then rule explained in Section 4.1 and 13 linguistic terms given in Table 3 make it possible to obtain the weight (strength) of causal relationships between activities that are shown in column 3 of Table 1 of Appendix. As can be seen in Table 1 Appendix, a negative relationship is used in some cells to represent the reverse relationship that exists between activities. A reverse relationship means that any improvement in the first activity will affect the second activity adversely. In the next stage, the augmented weights are calculated shown in column 4 of Table 1 Appendix. Furthermore, these values fill the cells of the final connection matrix shown in Table 2 Appendix. This matrix indicates row activities influence column activities. Fig. 2 represents the final connection matrix visually. The direction of arrows indicates the direction of influence. To make the diagram less crowded and more readable, we have used the notation ; for example, the arrow   (down right on Fig.2) feeds into activity  (top right on Fig. 2).

 

 

Ai

 

                                    Activity i

Ri,j

                                   

                                    The causal relationship between activity i and activity j

 

Fig. 2. The causal relationship between the influential activities

 

Step 2: Assess the contribution weight of activities to the overall success

To calculate the contribution weight of activities, the hierarchical structure of activities and their corresponding, as shown in Table 1, is used. In each functional area, all pairs of activities are compared to obtain LWAi , then all pairs of functional areas are compared to obtain LWFk and finally by using Eq. (2) the global contribution weight of activities GWAi is calculated.

Fig. 3(a)-(i) are drawn to show the result of pairwise comparison within each area and among 8 functional areas.

 

(a)      irwise comparison in F1

 

A1

A2

LWA

GWA

A1

JE

WI

0.75

0.147

A2

1/WI

JE

0.25

0.049

 

 

 

        (b) Pairwise comparison in F2

 

A3

A4

A5

LWA

GWA

A3

JE

1/WI

1/VSI

0.08

0.113

A4

WI

JE

1/VSI

0.167

0.236

A5

VSI

VSI

JE

0.751

1.062

 

        (d) Pairwise comparison in F4

 

A9

A10

LWA

GWA

A9

JE

1/WI

0.25

0.031

A10

WI

JE

0.75

0.093

 

        (e) Pairwise comparison in F5

 

A11

A12

A13

A14

LWA

GWA

A11

JE

WI

WI

WI

0.485

0.225

A12

1/WI

JE

JE

WI

0.223

0.103

A13

1/WI

JE

JE

JE

0.161

0.074

A14

1/WI

1/WI

JE

JE

0.129

0.059

 

        (f) Pairwise comparison in F6

 

A15

A16

A17

A18

LWA

GWA

A15

JE

1/WI

WI

WI

0.282

0.089

A16

WI

JE

WI

WI

0.474

0.151

A17

1/WI

1/WI

JE

JE

0.121

0.038

A18

1/WI

1/WI

JE

JE

0.121

0.038

 

        (C) Pairwise comparison in F3

 

A6

A7

A8

LWA

GWA

A6

JE

WI

SI

0.633

0.437

A7

1/WI

JE

WI

0.259

0.179

A8

1/SI

1/WI

JE

0.106

0.073

 

        (g) Pairwise comparison in F7

 

A19

A20

A21

A22

A23

A24

A25

A26

LWA

GWA

A19

JE

JE

WI

WI

SI

WI

WI

SI

0.269

0.368

A20

JE

JE

JE

WI

WI

JE

WI

SI

0.192

0.263

A21

1/WI

JE

JE

WI

WI

JE

JE

JE

0.126

0.173

A22

1/WI

1/WI

1/WI

JE

JE

1/WI

JE

JE

0.06

0.082

A23

1/SI

1/WI

1/WI

JE

JE

1/WI

JE

JE

0.055

0.076

A24

1/WI

JE

JE

WI

WI

JE

WI

WI

0.157

0.216

A25

1/WI

1/WI

JE

JE

JE

1/WI

JE

WI

0.082

0.112

A26

1/SI

1/SI

JE

JE

JE

1/WI

1/WI

JE

0.055

0.076

 

       (h) Pairwise comparison in F8

 

A27

A27

LWA

GWA

A27

JE

1/SI

0.166

0.027

A27

SI

JE

0.833

0.138

 

       (i) Pairwise comparison between 8 functional areas

 

F1

F2

F3

F4

F5

F6

F7

F8

LWA

F1

JE

1/WI

1/WI

WI

JE

WI

1/SI

1/WI

0.085

F2

WI

JE

WI

SI

WI

SI

WI

SI

0.305

F3

WI

1/WI

JE

WI

WI

SI

JE

WI

0.179

F4

1/WI

1/SI

1/WI

JE

JE

JE

1/WI

JE

0.054

F5

JE

1/WI

1/WI

JE

JE

WI

JE

WI

0.101

F6

1/WI

1/SI

1/SI

JE

1/WI

JE

JE

WI

0.067

F7

SI

1/WI

JE

WI

JE

JE

JE

WI

0.145

F8

WI

1/SI

1/WI

JE

1/WI

1/WI

1/WI

JE

0.062

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

Fig. 3. Results of pairwise comparisons

­­­­

Step 3 and 4: Evaluate the success state of activities and the overall e-commerce success

The linguistic terms explained in Table 5 enable decision-makers to evaluate the current success state of Digikala. Column 2 of Table 6 shows the initial success state of the 28 activities.

In the next step, we calculate the influence of activities on each other using the FCM inference calculation Eq. (3). Then, the overall success state of Digikala, by using Eq. (5) and the contribution weights calculated in Step 2 and the final values of activities is calculated.

The current overall success value of Digikala is 0.6799. If Digikala’s decision-makers want to transform this value to a linguistic term, the success state is between moderately successful (MS) and strongly successful (SS). As a result, it can be inferred that Digikala is generally successful and its administrators have paid adequate attention to different aspects of this EC business.

Table 6. The initial and final success state of activities, and the overall success state of Digikala

Activities

Initial success state

The final value of success state

Activities

Initial success state

The final value of success state

A1

SS

0.8129

A15

SS

0.8101

A2

MS

0.5841

A16

MS

0.6108

A3

MS

0.6146

A17

MS

0.6088

A4

WS

0.4103

A18

SS

0.807

A5

SS

0.8

A19

MS

0.6181

A6

MS

0.6018

A20

SS

0.803

A7

SS

0.8408

A21

MS

0.6024

A8

SS

0.8408

A22

MS

0.6094

A9

WS

0.4

A23

WS

0.4075

A10

WS

0.4072

A24

VWS

0.2024

A11

SS

0.8084

A25

MS

0.6029

A12

SS

0.8078

A26

MS

0.6027

A13

VSS

1

A27

WS

0.4037

A14

VSS

1

A28

SS

0.8522

The overall success: 0.6799

Success state abbreviations come from Table 5.

 

Step 5: The evaluation model analysis

Activities planning and managing

Success evaluation model can be used to extract practical insight for decision-makers to develop improvement plans more efficiently. As mentioned earlier in section 4.5, we can categorize activities into two matrices, and based on four criteria: GWA, RiRi-Ji and Ri+Ji. These criteria assist decision-makers in choosing activities for improvement that yields the most favorable results.

The final connection matrix, shown in Table 2 Appendix, and the DEMATEL technique are used to categorize activities. Table 7 is drawn to indicate the result of this analysis.

These four criteria enable decision-makers to form two plots shown in Fig. 4(a) and (b). Fig 4(a) visualize the categorization of activities into four management zones using 2 criteria: Ri-Ji and Ri+Ji. In Fig. 4(b), the criterion GWA,  and activities’ overall influence on other activities (Ri,) are used to categorize the activities.

It is possible to combine the results that are shown in Fig. 4(a) and Fig. 4(b) to provide a better analysis. As Fig. 4(a) indicates, the four activities of A3, A4, A5, and A6 all have a high influencing degree and a high level of interaction in the network model while three of these activities including A4, A5, and A6 are also located in the high attention zone with high contribution weight and high influence on other activities. These activities can improve the overall success state of Digikala considerably and demand constant supervision of decision-makers.

As can be seen in Fig. 4, while the activity of providing adequate financial resources (A3) has a  high influence on the other activity and also it has a high level of interaction with other activities it is located in the special attention zone. This activity has a low direct contribution to the overall success state of Digikala, however, it has a high positive influence on other activities; therefore, decision-makers should pay special attention to this activity.

Table 7: The result of DEMATEL analysis

Activity

Ri

Ji

Ri+ Ji

Ri- Ji

Activity

Ri

Ji

Ri+ Ji

Ri- Ji

A1

-0.025

0.161

0.136

-0.186

A15

-0.062

0.138

0.076

-0.2

A2

0.217

-0.158

0.059

0.374

A16

-0.047

0.136

0.089

-0.183

A3

0.218

0.161

0.379

0.057

A17

0.032

0.097

0.129

-0.065

A4

0.26

0.128

0.388

0.133

A18

0.086

0.074

0.159

0.012

A5

0.994

0

0.994

0.994

A19

0.059

0.22

0.279

-0.161

A6

0.307

0.025

0.332

0.282

A20

0.222

0.032

0.253

0.19

A7

0.119

0.534

0.653

-0.415

A21

0.065

0.025

0.091

0.04

A8

0.144

0.534

0.678

-0.389

A22

0.04

0.141

0.181

-0.101

A9

0.2

0

0.2

0.2

A23

0.057

0.079

0.136

-0.022

A10

0.158

0.076

0.233

-0.082

A24

0.057

0.025

0.082

0.032

A11

0.05

0.116

0.166

-0.065

A25

0.161

0.03

0.191

0.131

A12

0.039

0.124

0.163

-0.086

A26

0.101

0.029

0.129

0.072

A13

-0.037

0.092

0.055

-0.129

A27

0.116

0.06

0.176

0.055

A14

0.015

0.151

0.166

-0.136

A28

0.173

0.688

0.861

-0.515

 

 

(a) Categorization of the activities based on ( ) and ( )

 

(b) Categorization of the activities based on their contribution weight and influence on the other activities

Activity in the regular attention zone in Fig. 4(b)

Activity in the especial attention zone in fig. 4(b)

Activity in the high attention zone in Fig. 4(b)

 

 

 

 

 

 

 

Fig. 4. Management matrices of 28 influential activities

Improvement planning scenario analysis

After evaluating the current success state of Digikala, decision-makers should find the best improvement plan to improve the overall success state of Digikala. As mentioned before, the main advantage of taking into account the causal relationship in developing the evaluation model is to assess the success state of an EC business with considerable precision after conducting different improvement scenarios.

To the most efficient activities for improvement, a set of improvement scenarios is developed as follows:

  1. Apply one level up improvement in a single activity and evaluate its effect on the overall success. The results of this improvement scenario determine the activity with the highest influence in the model.
  2. Apply one level up improvement in activities of a single functional area and then measure this plan's effect. The improvement scenario distinguishes the best functional area to be improved.
  3. Improve one activity with the highest contribution to the overall success within each functional area.
  4. Improve a set of activities with an initial success state lower than the mean and ranking better than the average of activities.

After conducting these improvement scenarios and assessing their results on the success state of Digikala, the probability to find the most efficient improvement plan will increase.

In the first set of scenarios, all activities are improved one level up. It means if the current success state of activity is moderately successful (MS), then decision-makers improve it to strongly successful (SS). Table 8 is drawn to indicate the result of these 28 improvement scenarios on the overall success of Digikala. The column of "Value of overall success" in Table 8 expresses the result of each of these 28 improvement scenarios and the last column of this table indicates activities' improvement rank. As shown, activity A5 yields the highest overall success (0.7253) compared to improvements in other activities. As a result, if the decision-makers plan to improve the overall success state of Digikala by allocating resources to only one activity, the result of this analysis can be used. However, this conclusion should be considered with caution. It is necessary to consider required resources to improve activity by one level and compare the outcomes with the outcomes and required resources of improving other activities to determine the best activity to improve.

Table 8. Results of 28 one level up improvement scenarios

 

Scenario

Activity

Improvement scenario

Value of overall success

Rank a

1

A1

SS to VSS

0.6857

11

2

A2

MS to SS

0.6821

22

3

A3

MS to SS

0.6848

12

4

A4

WS to MS

0.6901

5

5

A5

SS to VSS

0.7253

1

6

A6

MS to SS

0.6986

2

7

A7

SS to VSS

0.686

10

8

A8

SS to VSS

0.6824

21

9

A9

WS to MS

0.6813

25

10

A10

WS to MS

0.6839

16

11

A11

SS to VSS

0.689

7

12

A12

SS to VSS

0.6841

15

13

A13

VSS

 

 

14

A14

VSS

 

 

15

A15

SS to VSS

0.6834

17

16

A16

MS to SS

0.6862

9

17

A17

MS to SS

0.6816

23

18

A18

SS to VSS

0.6815

24

19

A19

MS to SS

0.6955

3

20

A20

SS to VSS

0.691

4

21

A21

MS to SS

0.6873

8

22

A22

MS to SS

0.6834

18

23

A23

WS to MS

0.6831

20

24

A24

VWS to WS

0.6891

6

25

A25

MS to SS

0.6848

13

26

A26

MS to SS

0.6833

19

27

A27

WS to MS

0.6811

26

28

A28

SS to VSS

0.6843

14

In the second set of improvement scenarios, the eight functional areas are used. In this set of scenarios, each time, all the activities in one functional area were improved by one level up. Table 9 indicates the result of these 8 improvement scenarios.

As can be seen, in the first scenario, activities A1 and A2 are improved one level from their initial success state shown in Table 8. The overall success after conducting this improvement scenario is 0.6879.

The result of this analysis determines the functional areas where the decision-makers should concentrate their improvement efforts. Table 9 suggests that the Website area F7 (0.7328) and Financial area F2 (0.7404) are two functional areas that have the greatest effect on the improvement of other activities and the overall success of Digikala.

Table 9. Functional area improvement scenarios

 

Improving functional area

Activities within each functional area

Improvement scenario description

Value of overall success

F1: Technical

A1

SS to VSS

0.6879

A2

MS to SS

F2: Financial

A3

MS to SS

 

0.7404

 

A4

WS to MS

A5

SS to VSS

F3: Individual

A6

MS to SS

 

0.7070

A7

SS to VSS

A8

SS to VSS

F4: Environmental

A9

WS to MS

 

0.6854

A10

WS to MS

F5: Customer care

A11

SS to VSS

 

0.6932

A12

SS to VSS

A13

VSS

A14

VSS

F6: Marketing

A15

SS to VSS

 

 

0.6931

A16

MS to SS

A17

MS to SS

A18

SS to VSS

F7: Website-based trust

A19

MS to SS

0.7328

A20

SS to VSS

A21

MS to SS

A22

MS to SS

A23

WS to MS

A24

VWS to WS

A25

MS to SS

A26

MS to SS

F8: Organization-based trust

A27

WS to MS

0.6855

A28

SS to VSS

 

 

The third improvement scenario is improving activities with the highest rank within each functional area.

In the last improvement scenario, Digikala's decision-makers have tried to take into account the required resources in the process of choosing activities for improvement. To do so, activities with the highest ranking and lowest initial success state are chosen. There is an underlying assumption for choosing these activities. The assumption is that the lower the initial success state of activity, the fewer resources will be needed to improve that activity by one level. As can be seen in Fig. 5., activities fall into the area where the ranking is high and the initial success state is low are chosen. More specifically, activities including A3, A4, A6, A16, A19, A21, A24, and A25 are chosen. Furthermore, as mentioned earlier, management matrices are developed to help decision-makers choose activities for improvement more informed. Among the chosen activities for this improvement scenario, A3, A4, A6, and A24 belong to the group of activities that have a significant influence on the overall success of Digikala and need constant supervision of decision-makers.

 

 

FFig. 5. Categorization of activities for improvement scenario 4

Table 10 is drawn to compare the result of the last two improvement scenarios:

  1. Improve 8 activities with the highest rank where each of them is chosen from each functional area
  2. Improve set of top 8 activities that have high ranks and low initial success state In all of the improvement scenarios, the rank of activities comes from column 4 of Table 8.

It can be asserted that it is better for Digikala's decision-makers to follow the improvement scenario (3) compared to the improvement scenario (4). However, it is possible that the required resources for implementing improvement scenario (3) are much higher than the required resource for implementing improvement scenario (4). In other words, this analysis fails to take into account a very decisive point that is resources and efforts that must be allocated to these improvement scenarios. For example, further analyses are needed to determine whether improving the success state of two activities that are in the same functional area demands more resources rather than improving the success state of two activities that are in two different functional areas. Making a decision based on the result of improvement scenarios without considering the resources that must be allocated is impractical and unreasonable. As a result, if decision-makers want to choose between four improvement scenarios, they must take into account the required resources and results carefully.

Table 10. The result of improvement scenarios (3) and (4)

Functional area

 

Activities within each functional area

 

Improving top activities within each functional area

Improving activities with high rank and low initial success state

 

Chosen activity within each functional area

Improvement scenario description

Chosen activity based on Fig. 5

Improvement scenario description

F1: Technical

A1

11

SS to VSS

 

No change

A2

22

 

No change

 

No change

F2: Financial

A3

12

 

No change

MS to VSS

A4

5

 

No change

WS to MS

A5

1

SS to VSS

 

No change

F3: Individual

A6

2

MS to SS

MS to SS

A7

10

 

No change

 

No change

A8

21

 

No change

 

No change

F4: Environmental

A9

25

 

No change

 

No change

A10

16

WS to MS

 

No change

F5: Customer care

A11

7

SS to VSS

 

No change

A12

15

 

No change

 

No change

A13

 

 

No change

 

No change

A14

 

 

No change

 

No change

F6: Marketing

A15

17

 

No change

 

No change

A16

9

MS to SS

MS to SS

A17

23

 

No change

 

No change

A18

24

 

No change

 

No change

F7: Website-based trust

A19

3

MS to SS

MS to SS

A20

4

 

No change

 

No change

A21

8

 

No change

MS to SS

A22

18

 

No change

 

No change

A23

20

 

No change

 

No change

A24

6

 

No change

VWS to WS

A25

13

 

No change

MS to SS

A26

19

 

No change

 

No change

F8: Organization-based trust

A27

26

 

No change

 

No change

A28

14

SS to VSS

 

No change

Overall success

 

 

 

0.7892

 

0.7571

 

 

Conclusion

Decision-makers of EC businesses that aim to reach a higher success state in the administration and implementation of e-commerce must identify influential activities that lead to e-commerce success, use a model to evaluate the current success state, and devise an improvement plan accordingly. In this paper, we have identified influential activities, and have proposed a structured FCM-AHP approach to manage influential activities to reach a higher success state. This approach makes methodological and conceptual contributions to the field of e-commerce success. This approach proposes three advancements:

  1. The approach makes it possible to use causal relationships between influential activities to develop a more accurate evaluation model.
  2. The approach enables researchers to determine the extent of contribution of each activity to the overall success of EC businesses.
  3. The approach provides two criteria for choosing activities for improvement that help decision-makers to develop improvement scenarios more informed.

These features facilitate the analyzing process of e-commerce success. Using the causal relationships between influential activities clears the direct and indirect effect of any change or improvement in one or a set of activity(s) on the other activities and the overall success. As a result, assessing the effect of different improvement scenarios becomes possible. Another advantage of the approach is that it can be tailored to the special situation of every EC business. More specifically, the evaluation model that is the bedrock of improvement scenarios is generated based on the specific situation of each EC business. This feature provides decision-makers with the possibility to devise improvement plans based on the special success state of an EC business.

To illuminate different stages of the approach, we have applied the success management approach to Digikala and tried to indicate how the overall success of an EC business can be analyzed and then be improved. We have tried to indicate that this approach helps decision-makers to (1) evaluate the success state of an EC business more accurately by taking into account the causal relationships between activities, and (2) analyze effects of different improvement scenarios on the overall success and improve activities that yield the highest improvement possible. These are the approach's practical applications that make the proposed approach beneficial for an EC business to effectively manage its influential activities during the implementation and administration of e-commerce.

Finally, this research has some limitations that are (a) the difficult process of evaluating the success state of activities because of their qualitative nature, (b) the fact that the robustness and accuracy of developed evaluation model are mainly founded on the knowledge of experts, and the point that as the number of nodes increases the complexity of model will increase, and (c) the inability of the model to take into account the available resources of an EC business at the time of choosing the most effective improvement plan are the main limitations of this research. Future studies on this research area could be done for solving these problems by (a) devising new and more efficient approaches to evaluate the success state of the activities without omitting causal relationships, (b) decreasing the dependency of the model on the experts' knowledge by using historical data and automatic methods of FCM construction, and (c) developing an approach to taking into account available resources of EC businesses at the time of developing the most effective improvement plan. Finally, as Collins & Hansen (Collins & Hansen, 2011) mentioned, it is not judicious to think that the key to the success of a business is just finding a set of influential activities. In fact, developing a model to evaluate the current success state accurately and developing the most cost-effective improvement plan are other components of this process.  To conclude, we have tried to propose an approach that will increase the probability of success in the implementation and administration of e-commerce, and help decision-makers to devise improvement plans and allocate limited resources more efficiently.

Conflict of interest

The authors declare no potential conflict of interest regarding the publication of this work. In addition, the ethical issues including plagiarism, informed consent, misconduct, data fabrication and, or falsification, double publication and, or submission, and redundancy have been completely witnessed by the authors.

Funding

 The author(s) received no financial support for the research, authorship, and/or publication of this article.

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