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Article

The Impact of Organizational Context on the Levels of Cross-Border E-Commerce Adoption in Chinese SMEs: The Moderating Role of Environmental Context

Department of Management Science and Engineering, Business School, Nankai University, Tianjin 300071, China
*
Author to whom correspondence should be addressed.
J. Theor. Appl. Electron. Commer. Res. 2021, 16(7), 2732-2749; https://doi.org/10.3390/jtaer16070150
Submission received: 12 August 2021 / Revised: 28 September 2021 / Accepted: 29 September 2021 / Published: 11 October 2021
(This article belongs to the Section Digital Business Organization)

Abstract

:
With the rapid technological developments, cross-border e-commerce (CBEC) as a sector is also expanding rapidly. In the past couple of decades, China has become a major force in promoting and developing CBEC and, therefore, it was needed to explore the various antecedents and outcomes of Chinese CBEC to expand the understanding and existing CBEC scholarship. Ample studies have been conducted to understand the antecedents and outcomes of CBEC. However, limited studies have explored such variables which can mitigate the adoption of CBEC. With this background, this empirical study was focused on addressing this gap by studying the moderating role of environmental context between organizational context and the four levels of CBEC adoption with the help of a technology-organization-environment framework. SMEs operating in China were targeted for data collection, where data were collected through an online survey. A final sample size of 208 was recorded. It was found that the organizational context has a direct and positive impact on all four levels of CBEC adoption. Furthermore, the moderating role of environmental context on Level 1 and 2 was not supported. Finally, the moderating role of environmental context on Level 3 and 4 was supported by the data. It was concluded that the organizational context plays a significant role in shaping CBEC at all four levels, whereas the environmental context has the potential to mitigate the relationships between organizational context and CBEC Level 3 and 4.

1. Introduction

With the backdrop of rapid technological developments, organizations across the globe are adopting the latest technologies mainly because they bring more efficiency, cut costs, and give access for frequent interactions with stakeholders. Consequently, the adoption of the latest technological tools has become a matter of managerial concern [1]. This rapid technological advancement has made it possible for organizations to communicate, retrieve, respond, collaborate, and share knowledge not only within its employees but also with their other stakeholders such as customers, vendors, investors, and suppliers, etc. In a way, technology has democratized the usage of knowledge and information and thereby promotes creativity and innovation [2]. With so much on the plate as its perks, it is vital to understand the drivers and motivators behind the technological adoption [3].
On the other hand, small and medium organizations (SMEs) are considered as the backbone of an economy because they play the role of a catalyst in boosting up rural and urban economies and have the flexibility to adopt to changing situations [4]. According to a study conducted by [5], SMEs in most Organization for Economic Co-operation and Development (OECD) countries account for 96–99% of the total businesses and contribute to 80% in their economic growth. SMEs are also considered as the biggest employment generation sector in any country. Although SMEs vary in size, number of employees, investment volume, and annual turnover, etc., they are considered as the drivers/bedrock of an economy [6]. Therefore, the importance of this sector in economic development of a country cannot be discounted or taken for granted.
To grow further and to take even more leverage, SMEs across the globe are turning to the adoption of innovative approaches. One such approach is the adoption of e-commerce, which provides innovative options and additional conduits to enter into different markets and expand its services, even to other countries [3], and is considered as cross-border e-commerce (CBEC). A system where the sale and purchase of goods and services are taking place from different countries through online platforms is called CBEC [7]. Studies suggest that CBEC operates between countries far from each other [8]. A study conducted by [9] reported that the volume of CBEC has reached USD 676 billion in 2018 and has recorded an impressive growth of over 27% over the last year. Another study reported that the overall volume of CBEC has reached USD 26.7 trillion in 2019 (UNACTD, 2020). This growth trajectory would even further accelerate in the aftermath of the COVID-19 pandemic and the global ban on travelling, restrictions on face-to-face interactions, and social distancing measures taken worldwide.
With this huge potential of opportunities for SMEs in CBEC, it is reasonable to understand the drivers, motivators, and even mitigating factors of CBEC adoption [3]. In the past, several studies on technological adoption have been conducted by scholars (e.g., [3,10,11,12,13,14], etc.); however, limited studies have considered the moderating role of potential variables that may mitigate the relationship of CBEC adoption [4,15,16,17]. Past studies found the moderating role of size between technological factors and health information system adoption [15]. However, this study was focused on the hospitality industry and the dependent variable was the health information system. Similarly, another study conducted in Iran by [18] tested the moderating role of organization culture in B2B e-commerce adoption by utilizing a technology-organization-environment (T-O-E) framework. In essence, literature on organization size and culture—key factors of organizational context in the T-O-E framework—vary from organization to organization and country to country [18]. It is similar to organizational context, and the environmental context for an organization would also vary, and therefore, has the potential to mitigate the CBEC adoption.
Keeping in view the above arguments, this study aimed to investigate the moderating role of environmental context between organizational context and the four levels of CBEC adoption. With few exceptions, i.e., [16,17], who have studied the moderating roles of size, industry and facilitating conditions, and trust, respectively, the overall environmental context as moderator is yet to be tested. Furthermore, three other contributions of this study can be noted. First, this study is aimed at SMEs, whereas the majority of the past studies conducted on technology adoption have focused on large organizations [1]. Second, this study is focused on the four levels of CBEC adoption as explained by [19]. Past studies are only limited to general technology adoption, which cannot clarify the impact of technology on each level of CBEC and hence is a grey area worth exploring. Third, this study explores the direct impact on different levels of CBEC adoption. Past studies have mostly taken CBEC as a single level variable. Those studies were mostly involved in studying the impact of T-O-E on general technology of e-commerce adoption [16]. Finally, the study will also help in furthering the understanding of the authors in the field of CBEC because this is a growing field and, therefore, has huge future potential career and policy level implications for them. Furthermore, one of the authors is actually practicing CBEC and, therefore, it is of high importance for him to understand the contextual influences on CBEC (see Figure 1 for conceptual framework).
In the next part of the paper, hypotheses development and literature around the topic is given. This section is then followed by detailed discussion of the methodology adopted to complete this study. Results follow suit and are further followed by detailed discussion on the results and findings, implications, and limitations, which concludes the paper.

2. Conceptual Framework and Hypotheses Development

2.1. Organizational Context and the Four Levels of CBEC

To explain the underlying mechanism between the proposed variables, this study adopts the T-O-E framework which suggests that three main factors or contexts are affecting the adoption of technology in any organization, i.e., technological context, organizational context, and environmental context [20]. This framework is strongly backed by numerous empirical studies in the extant literature [11,18,21,22] and hence it is the right model for explaining the proposed framework of this study. As evident from its name, the three factors affect an organization’s decision for adopting any kind of technology [23]. Among these factors, technological factors cover internal and external technologies including hardware and software through which organizations extract benefits [21]; organizational factors include organizational size, managerial support, organizational policies and procedures, technological resources, organizational structure, and human resource, etc. [20], whereas environmental factors cover the competition’s pressure, suppliers’ pressure, regulatory and legal environment, and the country’s e-readiness [23], see Table 1.
As far as the levels of CBEC are concerned, a review of the literature shows that there are several models of CBEC available from various authors (e.g., [24,25,26,27,28,29]). However, the most widely used and authentic model is the six-stage model of Lefebvre [19]. The first two levels of this model are associated with non-adopters’ organizations or those SMEs who are planning to adopt CBEC in the future. To effectively address their needs, SMEs tend to adopt the four levels of CBEC; however, their effectiveness is linked with the level of adoption [30]. According to Lefebvre [19], at Level 1, SMEs make a static website to secure an online presence only. These SMEs only display basic organizational and product information along with contact details of the key personnel. There is no facility for interacting with the stakeholders, including customers, vendors, and suppliers, etc. At Level 2, SMEs further strengthen their online presence and offer the facility on their website to communicate with their customers, vendors, and suppliers, etc. At Level 3, in addition to the facilities available at Level 2, the SMEs also provide the facility for online transactions and payments to be undertaken through their websites. Customers now have the facility to pay for the products, customize their orders, and can have a two -way communication with the organization [30]. At Level 4, SMEs electronically integrate their business operations with supply chain partners and suppliers, constituting an “online collaboration” [30].
There are numerous studies available in the extant literature that have explored the impact of organizational factors, as explained earlier, on technology adoption (see [11,18,22]), etc. Organizational factors are those characteristics of a firm which can affect the decision of adoption or non-adoption of technology, such as the levels of CBEC. For example, among the most widely held characteristics of organizational factors are the top management support and the size of an organization. It is argued that without the support of top management, organizations cannot successfully adopt any technology because it requires commitment and the decision to allocate required financial and physical resources, as well removing the barriers in implementation of CBEC [31]. On the other hand, size of an organization has mixed results. For example, a study conducted by [32] found that size has an impact on the adoption of technology, whereas [5] found no support for the organizational size in relation to the adoption of technology. Other authors argued that, compared to the large organizations who are handcuffed because of their size and less flexibility, SMEs are better positioned to adopt new technologies because of their agility [33]. Similarly, because of the constant support from the governments across the world to their informal sector (SMEs), this also gave them the opportunity to raise funds and adopt new technologies [5].
Apart from these two organizational factors, organizational readiness and skilled human resources are also key players in influencing the decision of adoption of CBEC. SMEs, because of their small size, have more highly skilled and specialized individuals. Such staff increase the potential of an organization to innovate different processes through the adoption of the latest tools and effectively take care of more complex tasks [34]. Similarly, [35] argued that an organization’s HR policies depict its culture and values which play a key role in shaping the decision of technology adoption. The study further argued that those SMEs who invest more in the training and development of employees are more likely to adopt new technologies. Likewise, the decentralization level of an organization also makes them more prone to the adoption of new technologies. If organizations allow line managers to make some decisions on their own, they would better facilitate the adoption of technology [36,37,38]. SMEs are having small size and less hierarchy. Therefore, decision-making powers are often given to the line managers to speed up the processes. This approach is more susceptible to CBEC adoption.
Past studies also found positive impact of organizational factors on technology adoption. For example, [39] found the positive impact of organizational factors on the intention to adopt new technologies, [1] found a positive impact on the web knowledge exchange in SMEs, and [40] found support for adoption of e-commerce communications and application technologies (EC). In line with these findings and the earlier arguments, this study proposes that:
Hypothesis 1 (H1).
Organizational context will have a positive impact on CBEC Level 1 adoption.
Hypothesis 2 (H2).
Organizational context will have a positive impact on CBEC Level 2 adoption.
Hypothesis 3 (H3).
Organizational context will have a positive impact on CBEC Level 3 adoption.
Hypothesis 4 (H4).
Organizational context will have a positive impact on CBEC Level 4 adoption.

2.2. Moderating Role of Environmental Factors

Despite the availability of ample evidence in the extant literature on the positive impact of environmental factors on the adoption of technology (e.g., [6,23,41], etc.), no scholar has attempted to explore the moderating role of environmental factors. As explained earlier, environmental factors include the pressure of competition, the pressure of suppliers, government rules and regulations, and country’s e-readiness, etc.
The pressure of competition as a moderator has been used in the past by [42,43,44], etc. All these studies have emphasized the market orientation of corporate managers and the intensity of competition. They argue that managers, while keeping in mind the limited resources available, carefully assess the cost and benefit analysis for their organizations. If the expected benefits are exceeded by the expected cost while keeping a market orientation, managers will change their focus. Linking this argument to our study, we propose that if managers in SMEs perceive that competition in the market is extensive and that it is beneficial for the organization to respond to such pressures such as the adoption of new technology, they will respond accordingly. However, if the competitive pressure is less severe, managers may divert their focus to other areas. Our argument is in line with that of [41,43], who suggest that the greater the strength of competition, the more hostile an organization should be to know the customer needs and wants and then respond accordingly. Therefore, more pressure from competition will make an organization more market oriented and pressure them to adopt innovative approaches for catering to customers’ needs, such as adoption of CBEC. Other studies also found that if a firm believes that adoption of technology will strengthen their position against their competition, they will adopt it; however, if they believe that the benefits are less than its cost, they will not adopt it [18].
Similarly, the pressure of suppliers has been studied in a direct relationship with the adoption of technology. However, its mitigating role has been generally ignored, which may lead to uninformed decision making [16]. Studies on other related terms, such as coercive power [45] and power exercise [16], have covered the pressure of suppliers as the possessors of coercive power or power exercise. Using these studies as our theoretical foundation, we believe that if suppliers are strong enough to influence the decision making of an organization, they would coerce them to change their policies, and in this case, adopt CBEC. This is largely true in the case of SMEs because of their resource dependency on such suppliers. The greater the supplier’s pressure, the more likelihood of an organization to adopt new technology [18].
The same argument can be also used for the governmental pressure and rules and regulations. Governments often make new policies and procedures which organizations must adopt. Past studies suggest that the more favorable the policies of the government are, the more chances for adoption of CBEC [18]. The legal infrastructure of a country is an essential component in determining the success or failure of e-commerce [46]. It is worth noting that if the government policies are more open and relaxed, it will open up opportunities for hackers and, therefore, chances are that e-commerce will be negatively affected. However, if the policies are more stringent, it may not be feasible for the organizations to adopt new technology. Governments’ supportive legislation also play a key role in the e-readiness of a county. The more supportive the legislation is, high speed internet connectivity is available, and organizations are facilitated for adoption of new technologies, the higher chances of its adoption, and in this case, CBEC [18]. However, the opposite will inhibit such adoption.
Therefore, in line with these arguments, we propose that:
Hypothesis 5 (H5).
The relationship between organizational context and CBEC Level 1 adoption is moderated by environmental context.
Hypothesis 6 (H6).
The relationship between organizational context and CBEC Level 2 adoption is moderated by environmental context.
Hypothesis 7 (H7).
The relationship between organizational context and CBEC Level 3 adoption is moderated by environmental context.
Hypothesis 8 (H8).
The relationship between organizational context and CBEC Level 4 adoption is moderated by environmental context.

3. Methodology

3.1. Research Design

The focus of this study was to investigate the moderating role of environmental context between the relationship of organizational context and the four levels of CBEC adoption. We collected the data from CEOs and owners of SMEs in China because the study was focused on the organizational level. The questionnaire was designed from extensive studies of the prior research on similar themes and the scales were adopted from these studies. Although the questionnaire contained items related to our study variables, to assess the demographics of the respondents, we also collected data about their position, age, location, type of SME, number of employees, current focus of business, and other relevant variables.
Before collecting the data from our target respondents, the questionnaire was vetted from three managers who had a master’s degree in business studies to assess its adequacy. The questionnaire was also sent to three experts in China for double verification and adequacy assessment. Items related to organizational context, environmental context, and the four levels of CBEC were designed and measured via Likert scale ranging from 1 = strongly disagree to 5 = strongly agree.

3.2. Data Collection Technique

Due to the COVID-19 pandemic, several restrictions were in place in China inhibiting close interactions, hand shaking, and other social gatherings; therefore, it was impossible to physically approach the respondents and collect the data from them. Therefore, an online survey (e-survey) using an online platform called wjx.com was designed to reach our target respondents. This technique of data collection also helped us in speeding up the whole process, reducing the chances of mistakes in data entry, and gave more flexibility to respondents and the researchers [47]. The time period for data collection was mid-August to early-September in the year 2020. We further set conditions that those respondents who took less than 200 s on filling the questionnaire would not be incorporated in the final analysis. The purpose of this was to ensure that the respondents paid adequate attention to the questions and only then checked the appropriate responses. Keeping in view this condition, along with the filled questionnaire criteria, a final sample size was recorded as 208 respondents.

3.3. Scales Used in the Study

3.3.1. Levels of CBEC Adoption

As explained in the earlier part of the research, we adopted the four levels model developed by [19]. The four levels are (i) existence of a static website, (ii) online ordering facility, (iii) the facility for online transactions, and (iv) integration of supply chain through online systems. It was a 12-item scale with 3 items for each level. A sample item from Level 1 is “we advertise our products/services through online ads”.

3.3.2. Organizational Context

For developing the scale to measure organizational context, we considered the studies of [48] for top management support; [49] for measuring the size of the organization; and [48] and [49] for measures related to human resource, technological resource, decentralization level, and formalization level. This was a 19-item scale and a sample item from the decentralization level is “Small matters can be dealt with by operational level staff”.

3.3.3. Environmental Context

For measuring the environmental context, we developed a scale which had 28 items from 8 different dimensions. These dimensions include 3 items for competitive pressure, 3 items for supplier pressure, 4 items for customer pressure, 4 items for regulatory and legal environment in China, 5 items for regulatory and legal environment of the targeted country, and 5 items for e-readiness and support in China. The items for these scales were adopted from [40,50,51,52,53].

3.4. Data Analysis Technique

The adequacy of the study variables was tested through the measurement model technique. Smart PLS 3 software [] was used for this purpose. Finally, the proposed hypotheses were tested through the partial least square structural equation modelling (PLS-SEM) technique. Smart PLS 3 software [8] was used for this purpose also. In the proceeding part of the paper, findings of these tests are explained in detail.

4. Data Analysis and Results

Following the data collection, this section comprises the results of our proposed hypotheses. However, before testing the hypotheses, the reliability and validity of the scales were assessed for adequacy. The SmartPLS 3 software [8] was used for testing the reliability, validity, and hypotheses of the study variables. Results of these tests are discussed below.

4.1. Reliability and Validity Analysis

The measurement model was used to assess the reliability and validity of the constructs. Reliability and validity were assessed both for lower order constructs and higher order constructs. First, the factor loadings of all the items in the model had a value greater than the minimum acceptable value of 0.50 [54]. None of the items were removed due to low factor loadings. In the current study, only a single item (ORGFL2) was removed due to high cross loadings. Reliability was assessed using Cronbach’s alpha and composite reliability, and statistics for both were greater than the recommended value of 0.700 [55] for both lower order constructs and for the higher order constructs (Table 2), hence indicating good reliability [56].
Convergent validity was acceptable because the AVE was higher than 0.500 for all the lower order and higher order constructs except for ORG (higher order), which was approximately 0.50. Discriminant validity was assessed by comparing the correlations among the latent variables with the square root of AVE [57]. The square root of AVE for the construct is higher than its correlation with all other constructs. Hence, discriminant validity was established for lower order (Table 3) and higher order constructs (Table 4).
Additionally, discriminant validity was also assessed using the hetero-trait-monotrait ratio (HTMT) (Table 5 for LOCs and Table 6 for HOCs); all values were lower than 0.90, except for one value, where the ratio between Level 3 and Level 4 was over 0.90. However, when cross loadings were assessed, the difference in loadings was greater than 0.10 and the square root of AVE was also found higher in the Fornell and Larcker criterion.

4.2. Structural Model

Before testing the hypotheses, the variance inflation factor (VIF) was checked to assess the issue of collinearity among the study variables. As per the recommended criteria [54], the values were below 5 and hence no issue of collinearity was predicted. Likewise, the standard root mean square residual (SRMR) value was recorded as 0.098 and the chi square value as 1117.761, indicating a good fit for analysis.
The structural model reflects the paths hypothesized in the research framework. A structural model is assessed based on the R2, Q2, and significance of paths.
In order to assess the goodness of the model, the strength of each structural path determined by R2 value for the dependent variable was assessed [58], and the R2 statistics shall be equal to or over 0.1 to establish predictive capability [59]. The results in Table 7 show that all R2 values were over 0.1, establishing the predictive capability. Furthermore, Q2 ascertains the predictive relevance of the endogenous variables. A Q2 statistic over 0 establishes the predictive relevance. The results (Table 7) show Q2 is over 0 for all endogenous constructs, hence establishing predictive relevance.
Further hypotheses were tested to ascertain the significance of the relationship. The results revealed a significant impact of organizational context on Level 1 (β = 0.330, t = 4.447, p < 0.001), Level 2 (β = 0.311, t = 4.369, p < 0.001), Level 3 (β = 0.183, t = 2.863, p = 0.004), and Level 4 (β = 0.255, t = 4.433, p < 0.001), supporting H1, H2, H3, and H4.
The study’s 5000 resamples also generated 95% confidence intervals. A confidence interval different from zero indicates a significant relationship. Hypotheses testing results are summarized in Table 7.

4.3. Moderation Analysis

Moderation analysis was performed to assess the moderating role of environmental context on the linkage between organizational context and different levels of CBEC adoption. The results (see Table 8) revealed insignificant moderating roles of environmental context on the linkage of organizational context with Level 1 of CBEC adoption (H5: β = 0.116, t = 1.499, p = 0.134) and Level 2 of CBEC adoption (H6: β = 0.115, t = 1.882, p = 0.060). However, environmental context positively moderated the relationship between Level 3 of CBEC adoption (H7: β = 0.182, t = 3.274, p = 0.001). This shows that environmental context strengthens the relationship between organizational context and Level 3 of CBEC adoption, revealing that a stronger environmental context will further strengthen the impact of organizational context on Level 3 of CBEC adoption. This is further evident in Figure 2 where the impact of organizational context on Level 3 of CBEC adoption is much steeper when environmental context is above +1. Furthermore, the study also revealed a significantly positive moderating role of environmental context on the relationship between organizational context and Level 4 of CBEC adoption (H8: β = 0.191, t = 3.975, p < 0.001). This shows that environmental context strengthens the relationship between organizational context and Level 4 of CBEC adoption, revealing that a stronger context will further strengthen the impact of organizational context on Level 4 of CBEC adoption. This is further evident in Figure 3 where the impact of organizational context on Level 4 of CBEC adoption is much steeper when environmental context is above average (+1). Figure 4 contains all the results in a pictorial model (Table 8).

5. Discussion and Implications

5.1. Discussion

In this study, we aimed to explore the moderating role of environmental context between the relationship of organizational context and the four levels of CBEC adoption. To explain the underlying mechanism, we used the T-O-E framework developed by [20]. Data were collected from SMEs in China. Initially, we tested the direct impact of organizational context on the four levels of CBEC adoption through Hypotheses H1, H2, H3, and H4. The results supported our proposed hypotheses. These findings are in line with the previous studies of [18,29]. The findings are also in line with the arguments of [60] and [6], who suggested that organizational context is a key predictor of technology adoption. Furthermore, our findings also confirm the claim of [18], who suggested that organizational context such as the size, top management support, centralization and formalization of an organization, and its policies and procedures are playing key motivating roles in adoption of technology, and in our case, in CBEC adoption.
We further tested the moderating effect of environmental context between the relationship of organizational context and the four levels of CBEC adoption through H5, H6, H7, and H8. Unlike our propositions in Hypotheses H5 and H6, which were about Level 1 and Level 2 adoption of CBEC, we did not find any support from the data. This is quite surprising for us because past studies who tested the moderating roles of trust between organizational factors and the intention to adopt B2B e-commerce [16] were found positive. However, that study was focused on the overall measurement of B2B e-commerce adoption and not on its levels. One possible explanation for these results could be that it has occurred by chance. The second explanation of this may be that SMEs may not be market centric and, therefore, may not consider environmental factors as mitigators for Level 1 and Level 2 adoption of CBEC. They may consider the adoption of Level 1 and Level 2 CBEC as a necessity and not triggered by any external pressure such as environmental context.
Furthermore, in line with our proposed Hypotheses H7 and H8, we found that environmental context moderates the relationship between organizational context with Level 3 and Level 4 CBEC adoption. These findings are in line with our arguments of the intensity of competitive pressure, suppliers’ pressure, governmental rules and regulations, and organizational e-readiness [18,44,45]. This finding is also in line with the argument of [4,14,15,16], who argued that the direct relationship as asserted by the T-O-E framework may not be fully explained and that ill-informed decisions are being made. They claimed that there are other intervening and/or mitigating variables, such as the environmental context in our case, that can strengthen or weaken these direct relationships.

5.2. Theoretical and Practical Implications

This study contributes in many ways to the existing literature on CBEC adoption. First, this study explored the direct impact on different levels of CBEC adoption. Past studies have mostly taken CBEC as a single level variable. Those studies were mostly involved in studying the impact of T-O-E on general technology of e-commerce adoption (see [16]). Second, our study was mainly focused on the SME sector. Although past studies have focused on this sector (e.g., [4,61]), the dependent variable in those studies were different than the one used in our study.
The third and one vital contribution of this study was to test the moderating role of environmental context. Past studies have used some characteristics of organizational factors as moderators, such as trust [16], size [15,17], demographic determinants [4], and organizational culture [18]. However, to the best of the authors’ knowledge, no study had previously explored the moderating role of environmental context. Exploring this dimension of CBEC is a novel addition in the existing literature. This finding also challenges the existing model of the T-O-E framework and its utility as proposed by [20]. Our study adds empirical evidence to the fact that environmental context has the potential to either enhance or decrease the adoption of CBEC. The pressure from competition, suppliers, or governmental rules and regulations may not always have a positive role but they may inhibit the adoption of CBEC in certain circumstances also. Fourth, with the help of this study, we have also addressed the research gap highlighted by [3], who recommended exploring different motivators and inhibitors of e-commerce adoption.
The practical implications of this study suggest that managers must not ignore environmental factors because they can give you clues and information about the time to adopt a new technology such as CBEC. The findings also help the managers identify the motivators and inhibitors in adopting CBEC. The evidence found from this study highlights the importance of top management’s support, the existence of skilled human resource, and less hierarchical structures at the time of adoption of CBEC. If they are not in place, it is unlikely that organizations will adopt CBEC. The paper also challenges the view that large organizations have more resources and that is why they can better adopt technology. We argued that SMEs, because of their small size, are more agile and prone to technological adoption. Keeping in view the importance of organizational context, the management team must allocate resources and give reasonable authority to the line managers so that they can take decisions and solve challenging and complex tasks through innovative approaches, such as the adoption of CBEC for entering a new market or expanding to a different country. This support can also be further extended through frequent interaction with the staff, more empowerment, and investing in their skill development.
The study also has several implications for the government and policy-making institutions. For example, government can support the adoption of CBEC by passing favorable legislation. They must also make such policies that can stop unethical and illegal practices such as hacking, etc. Government must also invest in developing a conducive infrastructure, such as availability of high-speed internet, etc. Finally, they may incentivize the SME sector and encourage them to adopt CBEC.

6. Conclusions

This empirical study was focused on the investigation of the moderating role of environmental context between the relationship of organizational context and the four levels of CBEC adoption. Data were collected via online survey from 208 respondents. SmartPLS 3 software was used to test the proposed hypotheses. Support for six out of eight hypotheses was found. More specifically, we found that organizational context has a positive impact on all four levels of CBEC adoption. Furthermore, we did not find support for the moderating role of environmental context between the relationship of organizational context and Level 1 and Level 2 of CBEC adoption. Thereby support for H5 and H6 was not found. Finally, we found the environmental context has a moderating role in Level 3 and Level 4 CBEC adoption.
It was concluded from the findings of this study that organizational context (size, top management support, human resource, decentralization level, and formalization) plays a significant positive role in shaping the decision of CBEC adoption at all four levels in SMEs of China. It was also concluded that environmental context (competitors’ pressure, customers’ pressure, suppliers’ pressure, regulatory and legal environment of both host country and the target country of CBEC along with both countries’ readiness) may support or inhibit the adoption of CBEC on Level 3 and Level 4. Hence, six out of the eight hypotheses were supported. However, the study may not be 100% perfect and there may be some areas that can be improved in the future studies.
Therefore, the following limitations of the study must be taken into consideration before interpreting its findings. First, the cross-sectional nature of the data, where they were collected at one point of time from the respondents, may limit their reliability. Future research may consider a more longitudinal approach to data collection. Second, the study used a single self-reported questionnaire. Studies suggest that this approach can be problematic. For example, the respondent’s attention span may affect the responses, their lack of information, and their interest in filling out the questionnaire, etc., all of which may affect the quality of the data [62]. This also raises the threat of biased responses [18]. Therefore, future studies may collect data from multiple respondents regarding the study variable. Third, this study took the overall environmental context as a moderator without studying the impact of individual factors in the organizational context, such as pressure of competition as a separate variable or pressure of suppliers or customers, etc [63]. Therefore, our understanding of the impact of individual factors is limited in this study. Future studies may consider studying the moderating roles of competition, suppliers, customers, government rules and regulations, and firm’s e-readiness as standalone variables to understand the individual strength and make more informed decision making. Fourth, the sample size of 208 SMEs may affect the statistical power of our results. Despite our repeated efforts to increase the sample size, we were unable to reach a bigger number of respondents. A major inhibiting factor in these efforts was the COVID-19 pandemic, and because of which, public face-to-face interactions were limited, and we had to rely on the online data collection only. Future studies may test the same with a bigger data set to validate our findings. Fifth, the study was conducted in China, which may inhibit the generalizability of our findings. Future research may conduct similar studies elsewhere to validate our findings. Finally, we have used a single self-reported questionnaire. Although we tested the data for reliability and validity, personal bias cannot be fully eliminated from single source data. Therefore, future studies may focus on collecting data from multiple sources to curtail the risk of biased responses.

Author Contributions

Conceptualization, A.A. and W.H.; methodology, A.A.; analysis, A.A.; writing, A.A.; editing and supervision, W.H. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Informed consent was obtained from all subjects involved in the study.

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

References

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Figure 1. Conceptual framework.
Figure 1. Conceptual framework.
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Figure 2. ENV as moderator between ORG and Level 3.
Figure 2. ENV as moderator between ORG and Level 3.
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Figure 3. ENV as moderator between ORG and Level 4.
Figure 3. ENV as moderator between ORG and Level 4.
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Figure 4. Summary of the results of proposed hypotheses. Note: (**) indicates a significant relationship.
Figure 4. Summary of the results of proposed hypotheses. Note: (**) indicates a significant relationship.
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Table 1. Summary of study variables and their characteristics.
Table 1. Summary of study variables and their characteristics.
Organizational ContextTop management support,
Size of the organization,
Human resource,
Decentralization level,
Formalization level, etc.
Technological ContextInternal, external technologies (internet, etc.),
Software and hardware,
Relative advantage,
Complexity,
Compatibility, etc.
Environmental ContextCompetition’s pressure,
Customers’ pressure,
Suppliers’ pressure,
Regulatory and legal environment,
Country’s e-readiness, etc.
CBEC LevelsLevel 1: Static website
Level 2: Level 1 + communication with customers, vendors, suppliers
Level 3: Level 2 + online transaction and payment facilities
Level 4: Level 3 + integration of business operations with supply chain partners and suppliers (online collaboration)
Table 2. Reliability and validity analysis for lower order constructs.
Table 2. Reliability and validity analysis for lower order constructs.
LoadingsCronbach’s AlphaComposite ReliabilityAverage Variance Extracted (AVE)
Environmental Context (ENV)
CESH 0.8660.8880.616
ENVCESCH10.651
ENVCESCH20.800
ENVCESCH30.712
ENVCESCH40.865
ENVCESCH50.872
CEST 0.9320.9490.787
ENVCESTC10.898
ENVCESTC20.893
ENVCESTC30.876
ENVCESTC40.878
ENVCESTC50.891
CP 0.840.9040.759
ENVCP10.820
ENVCP20.904
ENVCP30.886
DCP 0.8680.9070.711
ENVDCP10.884
ENVDCP20.928
ENVDCP30.853
ENVDCP40.689
RLCH 0.9120.9370.789
ENVRLCH10.812
ENVRLCH20.899
ENVRLCH30.935
ENVRLCH40.901
RLTC 0.950.9640.869
ENVRLTC10.892
ENVRLTC20.948
ENVRLTC30.956
ENVRLTC40.931
SP 0.8320.8980.746
ENVSP10.877
ENVSP20.902
ENVSP30.808
Organizational Context (ORG)
DL 0.8130.8720.695
ORGDL10.914
ORGDL20.743
ORGDL30.836
FL 0.8810.940.887
ORGFL20.912
ORGFL30.971
FS 0.8450.9060.762
ORGFS10.885
ORGFS20.906
ORGFS30.826
HR 0.8460.8970.686
ORGHR10.827
ORGHR20.845
ORGHR30.896
ORGHR40.735
TECHR 0.8850.9210.744
ORGTECHR10.84
ORGTECHR20.855
ORGTECHR30.917
ORGTECHR40.837
TMS 0.9050.9320.775
ORGTMS10.885
ORGTMS20.941
ORGTMS30.853
ORGTMS40.839
Level 1 0.7710.8670.684
L1OCP10.819
L1OCP20.832
L1OCP30.831
Level 2 0.8230.8950.74
L2OO10.867
L2OO20.907
L2OO30.803
Level 3 0.870.9210.795
L3OT10.863
L3OT20.900
L3OT30.911
Level 4 0.8750.9230.801
L4OI10.873
L4OI20.916
L4OI30.895
Second Order
Environmental Context 0.8580.8900.538
CESCH0.631
CEST0.727
CP0.686
DCP0.819
RLCH0.741
RLTC0.779
SP0.738
Organizational Context 0.8020.8300.467
DL0.528
FL0.549
FSize0.696
HR0.879
TMS0.402
TR0.897
Note: CR: composite reliability, AVE: average variance extracted, CESH: country e-readiness and support (China), CEST: country e-readiness and support (the targeted country), CP: competitors’ pressure, DCP: distance customers’ pressure, RLCH: regulatory and legal environment (China), RLTC: regulatory and legal environment (the targeted country), SP: suppliers’ pressure, DL: decentralization level, FL: formalization level, FS: firm size, HR: human resource, TECHR: technological resource, TMS: top management support.
Table 3. Discriminant validity—lower order constructs—Fornell–Larcker criterion.
Table 3. Discriminant validity—lower order constructs—Fornell–Larcker criterion.
1234567891011121314151617
CESCH0.785
CEST0.2690.887
CP0.5710.2750.871
DCP0.5090.3980.7160.843
RLCH0.3860.5360.2930.4400.888
RLTC0.3810.6260.3000.4260.7600.932
SP0.4250.3860.6130.7490.3260.3590.863
DL0.3910.1420.3540.2560.1570.1080.2040.834
FL0.3690.2050.3990.3270.1790.1280.2670.7000.942
FSize0.1720.4120.0950.2360.3740.4170.1720.1800.2240.873
HR0.2620.2870.2520.3800.3600.3410.2710.3810.3730.4620.828
TMS0.4060.1550.5550.4520.1370.1100.3710.4330.4330.1270.3420.880
TR0.3240.3900.2600.4080.4130.4430.3440.4530.4440.4940.7090.2920.863
Level 10.1420.1240.1410.2440.1090.2010.1230.0710.1060.2230.3640.0840.3450.827
Level 20.1520.3070.1790.3330.2250.2950.2730.0840.1610.2790.3950.0630.4300.6720.860
Level 30.1600.3880.1880.3170.2580.3080.229−0.0050.0530.2600.3590.0180.3440.5260.7280.891
Level 40.1560.2790.1210.2370.1960.2470.1820.0350.0600.2790.3480.0050.3470.5400.7370.8060.895
Note: Diagonal and italicized are the square roots of the AVE. Below the diagonal elements are the correlations between the construct’s values.
Table 4. Discriminant validity—lower order constructs—HTMT.
Table 4. Discriminant validity—lower order constructs—HTMT.
1234567891011121314151617
CESCH
CEST0.268
CP0.6970.311
DCP0.5970.4300.862
RLCH0.4390.5730.3380.493
RLTC0.4130.6670.3370.4540.816
SP0.4910.4420.7420.8630.3700.405
DL0.5210.1610.4500.3830.2090.1450.272
FL0.4790.2230.4640.4180.2220.1560.3130.878
FSize0.1790.4720.1220.2410.4250.4650.1950.2230.262
HR0.3160.3130.2880.4310.3980.3760.3030.4770.4320.554
TMS0.4830.1730.6380.5320.1600.1260.4380.5250.4810.1380.387
TR0.3680.4300.3050.4500.4500.4830.3900.5540.5260.5650.8160.330
Level 10.1420.1430.1700.2670.1180.2270.1440.0810.1230.2640.4420.0950.413
Level 20.1480.3430.2160.3660.2410.3270.3180.1040.1830.3210.4690.1010.5010.840
Level 30.1440.4290.2180.3400.2740.3380.2630.0440.0670.3010.4090.0470.3900.6290.857
Level 40.1360.3060.1400.2520.2000.2680.2010.0670.0670.3160.3970.0430.3900.6440.8650.924
Table 5. Discriminant validity—higher order constructs—Fornell–Larcker criterion.
Table 5. Discriminant validity—higher order constructs—Fornell–Larcker criterion.
ENVORGLevel 1Level 2Level 3Level 4
ENV0.734
ORG0.5480.683
Level 10.2120.3630.828
Level 20.3570.4280.670.861
Level 30.3790.3560.5220.7270.891
Level 40.2890.3610.5360.7340.8080.895
Note: Diagonal and italicized are the square roots of the AVE. Below the diagonal elements are the correlations between the construct’s values.
Table 6. Discriminant validity—higher order constructs—HTMT.
Table 6. Discriminant validity—higher order constructs—HTMT.
ENVORGLevel 1Level 2Level 3Level 4
ENV
ORG0.677
Level 10.2510.358
Level 20.4050.4210.84
Level 30.4150.3010.6290.857
Level 40.3160.3030.6440.8650.924
Table 7. Testing direct relationships.
Table 7. Testing direct relationships.
CoefficientSTDEVt-Statisticsp-Values2.50%97.50%
H1: ORG→Level 10.3300.0744.4470.0000.1840.474
H2: ORG→Level 20.3110.0714.3690.0000.170.446
H3: ORG→Level 30.1830.0642.8630.0040.0470.299
H4: ORG→Level 40.2550.0584.4330.0000.1430.367
R2Q2
Level 10.1530.090
Level 20.2250.148
Level 30.2270.167
Level 40.2000.142
Table 8. Moderation analysis.
Table 8. Moderation analysis.
CoefficientSTDEVt-Statisticsp-Values2.50%97.50%
H5: Mod_ENV_L1→Level 10.1160.0771.4990.134−0.3090.169
H6: Mod_ENV_L2→Level 20.1150.0611.8820.060−0.1560.192
H7: Mod_ENV_L3→Level 30.1820.0563.2740.0010.0530.275
H8: Mod_ENV_L4→Level 40.1910.0483.9750.0000.0680.263
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Abdulkarem, A.; Hou, W. The Impact of Organizational Context on the Levels of Cross-Border E-Commerce Adoption in Chinese SMEs: The Moderating Role of Environmental Context. J. Theor. Appl. Electron. Commer. Res. 2021, 16, 2732-2749. https://doi.org/10.3390/jtaer16070150

AMA Style

Abdulkarem A, Hou W. The Impact of Organizational Context on the Levels of Cross-Border E-Commerce Adoption in Chinese SMEs: The Moderating Role of Environmental Context. Journal of Theoretical and Applied Electronic Commerce Research. 2021; 16(7):2732-2749. https://doi.org/10.3390/jtaer16070150

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Abdulkarem, Anaf, and Wenhua Hou. 2021. "The Impact of Organizational Context on the Levels of Cross-Border E-Commerce Adoption in Chinese SMEs: The Moderating Role of Environmental Context" Journal of Theoretical and Applied Electronic Commerce Research 16, no. 7: 2732-2749. https://doi.org/10.3390/jtaer16070150

APA Style

Abdulkarem, A., & Hou, W. (2021). The Impact of Organizational Context on the Levels of Cross-Border E-Commerce Adoption in Chinese SMEs: The Moderating Role of Environmental Context. Journal of Theoretical and Applied Electronic Commerce Research, 16(7), 2732-2749. https://doi.org/10.3390/jtaer16070150

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