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The Relationship between the Perceived Mental Benefits, Online Trust, and Personal Information Disclosure in Online Shopping

  • Received : 2019.07.27
  • Accepted : 2019.09.24
  • Published : 2019.11.30

Abstract

The study examines the relationship between perceived mental benefits, online trust, and personal information disclosure when shopping online in Vietnam. The e-commerce market has been booming in Vietnam since 2015. The number of online transactions and e-commerce sites has increased steadily in recent years. However, the number of online sales in Vietnam is still not high, and consumers are still limited in buying from websites when they have to provide too much information during and after the shopping process. The mix-method is used to ensure the scientific nature of the study. Qualitative research method (phenomenological research) along with the quantitative research method (survey) are applied to meet the research objectives. The data in the study was collected through the group discussion with eight experts and the survey with 917 respondents. Data processing result via SmartPLS software indicate the positive relationships between the factors in the research. The perceived mental benefits have the most potent influence on the online trust of Vietnamese customers; at the same time, both the perceived mental benefits and online trust affect customers personal information disclosure in electronic commerce. Some managerial implications relating increasing the perceived mental benefits, and customers' online trust are proposed for online businesses.

Keywords

1. Introduction

The number of e-commerce sites continuously increased from 2013 to 2017, especially increasing rapidly since 2015. Vietnamese enterprises established e-commerce site reached 18,783 in 2017 (Vietnam eCommerce and Digital Economy Agency, 2018). Vietnam e-commerce market is a vibrant market with both the number of buyers and sellers increasing every year. That also increases the competition between online businesses, and the success of an online retailer in the e-commerce market in Vietnam is difficult to achieve.

The success of e-commerce sites is determined through two parameters; that is, the number of visitors and the number of views per customer (Tarafdar & Zhang, 2008). In order to accomplish the two goals above, businesses must take care of and maintain regular contact with customers. The personal information provided by customers is one of the essential factors that help businesses accomplish this task. In e-commerce transactions, transactions are only completed when the customer provides personal information such as name, address, phone number, and payment information in the first transaction. However, to maintain a long-term relationship cannot happen if the user does not provide information to build customer profiles such as credit card information for one-click purchasing, or preferences (Campbell, 2019). Information exchange is one of the interactions between the customer and business, is a fundamental characteristic of relationships (Kelley, 1979). However, customers are often concerned about providing information to businesses (McCroskey & Richmond, 1977), especially in the online shopping environment due to concerns about privacy risks. Also, the attraction factors that an organization brings to customers have a significant impact on using an e-commerce site to shop (Campbell, Wells, & Valacich, 2013).

Many studies have shown that two of the more efficient means of creating customer loyalty are customer satisfaction (Lee, Lee, & Feick, 2001) and provide outstanding value from services and excellent product quality (Parasuraman & Grewal, 2000). Turner and Gellman (2013) argue that perceived benefits related to awareness of positive outcomes are due to a specific action. Perceived benefits in ecommerce indicate what customers achieve from online shopping (Forsythe, Liu, Shannon, & Gardner, 2006). Sheth (1983) proposed that the individual elements of traditional procurement can be widely understood as being affected by functional and non-functional benefits. Today, customers will be attracted by non-functional benefits such as shopping enjoyment (Forsythe et al., 2006), social interaction (Hennig-Thurau, Gwinner, & Gremler, 2002), privacy when shopping (Bhatia, Breaux, Reidenberg, & Norton, 2016), or perceived control (Huang, 2003). The studies of hedonic benefits and flow theory in the online environment have been increasingly popular recently.

Many empirical surveys and studies have examined the importance of intrinsic and extrinsic motivations in the nonmarketing section. However, very few studies have investigated consumer motivation in marketing. Teo, Lim, and Lai (1999) pointed out that consumer motivation is an essential predictor of consumers' intention to use the Internet. Consumer intrinsic dynamics are more prominently used to explain consumers' intention to online shopping (Shang, Chen, & Shen, 2005), and more likely to avoid buying luxury goods (Truong & McColl, 2011). Although researchers have emphasized the importance of intrinsic and extrinsic motivations for better predicting behavioral intent, the best method is still unknown in grasping intrinsic and extrinsic dynamics. It is surprising to see that current marketing researches (and other business practices) have focused too much on extrinsic factors; however, it is necessary to gather perspectives that integrate intrinsic motivation (Gilal, Zhang, Paul, & Gilal, 2019). Therefore, empirical research is needed to investigate whether internal motivation is more influential in predicting different marketing results. Moreover, consumers' online trust is also proposed as the mediator between the benefits and the provision of personal information. Research in the social networking environment of Loiacono (2015) has shown the trust factor after being aware of the benefits that make it easy for users to provide information on the sites.

The rest is organized as follows: Section 2 presents the literature for each research variable, determines the relationship between the research variables to build the research model. The next section details the research methods and presents research results. Finally, discuss the results with future research orientation.

2. Literature Review

2.1. Perceived Mental Benefit

Perceived benefits related to awareness of positive outcomes are due to a specific action (Turner & Gellman, 2013). In e-commerce, perceived benefits indicate what customers get from online shopping (Forsythe et al., 2006). The concept of "mental" is related to wisdom as interpreted with emotional activity or involved in the thinking process (Oxford, 2010). From which, we can conclude the perceived mental benefit, is the psychological and emotional value that individuals feel when shopping online, included perceived enjoyment, perceived social interaction, perceived discreet, and perceived control (Nguyen & Khoa, 2019).

2.1.1. Perceived Enjoyment

Perceived enjoyment is defined as the level of pleasure and comfort beyond the results of performance (Venkatesh & Davis, 2000). The benefit comes from new experiences (Forsythe et al., 2006). Based on this result, the author thinks that enjoyable shopping can be an essential structure in the study of online consumer behavior. In particular, shopping enjoyment can have a significant impact on customer attitudes and behaviors on the web and can increase customer intentions to return. Enjoyment in shopping is considered a non-functional motivation (Sheth, 1983).

2.1.2. Perceived Social Interaction

Butler, Sproull, Kiesler, and Kraut (2002) believe that one of the personal benefits consumers expect to receive from contributing to an online community is to establish social relationships with others. Since then, in addition to the motivation to seek common knowledge and learning, the motivation to facilitate social interaction plays a significant role in the virtual community or e-commerce. Zhang and Hiltz (2003) also argue that those who come to the virtual community are not only to seek information or knowledge and solve problems but also look forward to meeting other people and finding support and friendship. According to Scheinkman (2008), social interactions are sometimes called non-market interactions to emphasize the fact that the price mechanism does not regulate these interactions. The virtual world becomes an excellent medium for individuals to develop their learning and thinking.

2.1.3. Perceived Discreet

Estes, Orbke, Penn, Pensabene, Ray, Rios, and Troxel (2007) pointed out that many consumers are uncomfortable or embarrassed when buying certain products from a retailer. For example, sex products, products for women, birth control pills. Gupta, Bansal, and Bansal (2013) define discreet shopping, which means consumers buy what they need privately and those who else; no one knows what they buy. Wood (2017) believes that some convenient and practical solutions describe discreet shopping on the Internet for those who want to buy sensitive products, but they are afraid to go to a shop. Therefore, anonymity can be the most distinctive factor compared to online and traditional shopping.

2.1.4. Perceived Control

Perceived control is as relevant as a person's belief in the ability to influence their internal state, behavior, and the external environment (Wallston, Wallston, Smith, & Dobbins, 1987). Perceived control concepts include self-efficacy (Bandura, 1997)) and perceived behavioral control (Ajzen, 1985). In online services using new technology, two factors of perceived control include the customization and personalization (Godek & Yates, 2005). Companies have begun to use new communication technologies to implement individual-appropriate collaborative strategies that can be more beneficial by creating a fit between consumer preferences and products supplied from the company (Prahalad & Ramaswamy, 2000). Perceived control is a significant contributor to mental and physical health as well as a strong predictor of life achievements (Ly, Wang, Bhanji, & Delgado, 2019).

2.2. Online Trust

Trust as the specific belief in integrity, benevolence, and ability of a buyer with a seller (Gefen, Karahanna, & Straub, 2003). In the case of e-commerce, integrity is the belief that online sellers respect the stated rules or keep the promise. Ability is a belief in the skills and capabilities of online businesses to provide the right quality products and services. Benevolence is the belief that online sales sites, wanting to earn legitimate profits, want to bring good things to customers. Ang, Dubelaar, and Lee (2001) proposed that three aspects of trust are essential to improve trust on the Internet. These three aspects are the ability of the online business to deliver promised products or services, an online merchant's benevolence to fix if the purchase does not meet the satisfaction of the customer and the presence of a privacy policy or statement of e-commerce pages.

Good personalization is also a condition for forming online trust (Briggs, Simpson, & De Angeli, 2004). The benefits of controlling feelings can have a positive impact on consumer confidence; however, if collecting customer data can also create an adverse reaction to online customer confidence (Beldad, De Jong, & Steehouder, 2010; Khoa & Khanh, 2019). Research by Park, Amendah, Lee, and Hyun (2019) also shows that the perceived benefit will affect customer confidence in the payment system via mobile devices. Therefore, the research hypothesizes H1 is proposed:

H1: The perceived mental benefits have a positive effect on online trust in e-commerce

2.3. Personal Information Disclosure

The concept of personal information is pervasive and in most cases. However, in some cases, it may not be clear, and the answer will depend on the context and situation. Personal information or sensitive personal data can be anything used to identify an individual. Information collected about customers may include their name, address, phone number, bank details, and credit card numbers.

In the global age, where information technology cannot be controlled, the disclosed personal information becomes a severe problem. The customer tends to keep their information for their privacy and safety (Gracia & Juliadi, 2019). Disclosure of personal information also creates risks and vulnerability to customers, due to the potential for a data breach, identity theft, unwanted personal data usage and anxiety, and general vulnerability. Therefore, consumers tend to show an adverse reaction to any data collection efforts and are not willing to share personal data (Palmatier & Martin, 2019).

Mayer, Davis, and Schoorman (1995) state that trust in the transaction is parties’ readiness to be unsafe to one another. The buy-side and sell-side must be more vulnerable to one another for the occurrence of relationship progression. Such readiness represents an act of trust. In location-based services, the customer will disclose their position by GPS service to get the discount from the shop (Xu, Luo, Carroll, & Rosson, 2011). Online trust has been found to affect a customer’s willingness to provide personal information on the Internet (Campbell, 2019; Dinev & Hart, 2006). Therefore, we propose the hypothesis H2:

H2: Online trust has a positive effect on personal information disclosure in e-commerce

Individuals will disclose personal information when they have enough benefits. Many websites offer coupons and discounts and customized the buying process if the customer provides their personal information, and their reference (Hann, Hui, Lee, & Png, 2002). The privacy calculus model points that the customer will judge on the risks and benefits induced by the information disclosure behavior (Dinev & Hart, 2006), and they will provide more personal information if the perceived benefits are higher than the perceived costs of disclosure. Perceived benefits are positively associated with information disclosure when they take part in location-based social network services (Sun, Wang, Shen, & Zhang, 2015). Hence, we can propose the Hypothesis H3:

H3: The perceived mental benefits have a positive effect on personal information disclosure in e-commerce

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Figure 1: The theoretical model

3. Methodology

The mixed-method is used to achieve the research objectives set out. Phenomenological research is done to determine the factors as well as adjusting the questionnaire. Data is collected by focus group discussion (Rabiee, 2004; Silverman, 2004). Participants of the discussion included eight customers selected by the snowball method, having experience in e-commerce for over a year. The discussion took place under the presidency of the authors with a discussion guide. The results of qualitative research show that the mental benefit in shopping online encompass four factors (perceived enjoyment, perceived social interaction, perceived discreet, and perceived control); and most participants agree that they will disclose their personal information if they get the benefits from a website and trust the website. Besides, the scales in the study are also adjusted to suit the Vietnamese buyers, e-commerce context. The next step, the questionnaire is designed to be able to conduct quantitative research. Subjects surveyed by questionnaires focus on customer aged 18 to 45, the job is the student, office worker, lecturer, civil servant, housewife, trader, worker because these are the people who need online shopping and have a good awareness of e-commerce (Department of E-Commerce and Information Technology, 2017). Since the study is in the field of e-commerce, it is recommended to use purpose-based sampling to select the survey respondents to understand the research problem and thereby expand the sample quickly (Neuman, 2002).

The scale of all research concepts in the paper adapted on the previous studies, adjusted through qualitative research, and presented in the form of a statement. The scale uses 5 points Likert scale from (1) Strongly disagree to (5) Strongly agree. Perceived mental benefits were taken as a second-order construct with four dimensions, namely perceived enjoyment, perceived social interaction, perceived discreet, and perceived control. They were measured using nineteen items from Nguyen and Khoa (2019). The online trust is measured with five items from Liu and Tang (2018). Personal information disclosure was measured with three items from Campbell (2019).

950-panel members who were invited to participate in the study, 932 members responded, which represents a 98.11 percent response rate. After data cleaning, five responses were removed due to lack of information, selecting the answer that violates the reverse question. Total of 917 responses is used for further analysis by the SmartPLS software.

In particular, respondents did not have much difference in the proportion of men (49.9%) and women (50.1%). The occupation of participants are office worker (26.8%), civil servant (16.6%), trader (15.8%) and student (15.2%), this is a group of people who are often shopping online. The age of the respondents is in the range from below 20 to above 35, accounting for 80.9%; and the level of education in College, University, and Master/Ph.D. is 720 people, accounting for 78.5%. Thus, the research sample is suitable for research purposes (Table 1).

Table 1: Demographic profile

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4. Results

4.1. Descriptive Statistic

Table 2 shows the mean of all items in the research as well as the normal distribution of data. In general, the level of agreement with statements regarding perceived enjoyment, perceived control, and discreet shopping is moderate; the agreement mean of social interaction, online trust, and personal information disclosure are high. The skewness and kurtosis values of all variables that meet the normal distribution requirements (skewness less than 3, kurtosis is less than 10) (Kline, 2015).

Table 2: Descriptive Statistics

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4.2. Reliability and Validity Assessment

According to Table 3, all scales are reliable; the confidence coefficient of 0.737 to 0.878 is higher than 0.70 (Nunnally & Bernstein, 1994).

Table 3: Results of outer loading, reliability, and validity

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Note: CA: Cronbach’s Alpha; CR: Composite Reliability; AVE: Average Variance Extracted

The reliability and discriminant of the scale checks by the Composite Reliability (CR) and the Average Variance Extracted (AVE). All scales meet the requirements (CR> 0.6, AVE> 0.5), reflecting the convergence of the structure (Fornell & Larcker, 1981). Hence, all scales accomplish reliability and discriminant validity.

For this model, the research needs to estimate the relationship between the resulting potential variable and its observed variables, which confirm through the outer loadings. According to the results of Table 3, all external load indexes of PEB, PSB, PDB, PCB, OT, and PID concepts are higher than the allowable value of 0.708 (Hair, Hult, Ringle, & Sarstedt, 2016). In particular, observed variable PEB5 has the lowest external load coefficient of 0.747, and the observed variable PDB1 has the highest external load coefficient of 0.910. Thus, the four potential variables are related to their observed variables.

The study of Hair et al. (2016) showed that Heterotrait-Monotrait Ratio (HTMT) should be applied to detect discriminant validity reliably. Table 4 shows the value of HTMT for all pairs of variables in the study. It can be seen that all HTMT values are less than the thresholds of 0.85 (Hair, Hult, Ringle, & Sarstedt, 2016). Therefore, all constructs in this research have discriminant validity.

Table 4: HTMT value for discriminant validity

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4.3. Assessment of PLS-SEM Structural Model Results

The result of the assessment structural model for collinearity presents in Table 5. We assess the following sets of (predictor) constructs for collinearity: (1) PMB and OT as predictors of PID, (2) PMB as predictors of OT. All VIF values are less than the threshold of 5. Hence, the collinearity between predicted structures is not an essential issue in the structural model.

Table 5: The result of the assessment structural model for collinearity

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To start with, we examine the R² values of the endogenous latent variables, following the rules of thumb, the R2 values of OT (0.513) considers moderate, whereas the R² value of PID (0.262) is rather weak. f2 values for all combinations of endogenous constructs and corresponding exogenous constructs. In this research, PMB has a strong effect size of 1.054 on OT; PMB and OT have a weak effect size of 0.056 and 0.045 on PID. In addition to assessing the magnitude of R² values as a criterion of predictive accuracy, Geisser (1974); Stone (1974) suggested checking the Q2 value, an indicator of predictive power beyond the model of the model or the level of predictability. In Table 6, the Q2 values of all two endogenous constructs are considerably above zero; precisely, OT, and PID has moderate Q2 values (0.315 and 0.160).

Table 6: Result of R2 , f2 , Q2​​​​​​​

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About the significance and relevance of the structural model relationships, the research use the Bootstrap procedure with 5000 random subsamples have been created (Hair et al., 2016). The results of Table 7 show that all the relationships in the structural model are significant with p-value is less than 0.001.

Table 7: The result of the structural model

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Note: Original Sample (O); Sample Mean (M); Standard Deviation (STDEV)

5. Discussion and Implication

5.1. Discussion

The findings of this study complement the knowledge of the relationship between the perceived mental benefits, online trust, personal information disclosure, and anxiety of customer. First, as to the mental benefit structure, this research finds that in the Vietnam e-commerce context, which is regarded as four dimensions as perceived enjoyment, perceived social interaction, perceived discreet, and perceived control. This finding is suitable with the psychological theories as hedonic consumption (Hirschman & Holbrook, 1982), flow theory (Csikszentmihalyi, 2008; Hoffman & Novak, 1996), and self-determination theory (Deci & Ryan, 1985; Sheth, 1981). Second, there is a positive impact of the perceived mental benefits and online trust on the personal information disclosure, and the perceived mental benefits have a positive effect on online trust. The hypothesis H1 is accepted that the perceived mental benefits have a positive relationship with online trust when purchasing in e-commerce (β = 0.716; p <0.001). The statistical result also supports the hypothesis H2, which is the online trust that has a positive effect on customers' information disclosure (β = 0.260; p <0.001). The study results also confirmed the hypothesis H3; it means the perceived mental benefits positively impacted the personal information disclosure (β = 0.293; p <0.001). The research result is adapted o relationship marketing framework not only in the traditional environment (Palmatier, Dant, Grewal, & Evans, 2006) but also in the online environment (Verma, Sharma, & Sheth, 2016).

5.2. Implication

In order to increase the perceived enjoyment for customers, businesses can provide more entertainment or useful services for their online shopping activities. Business can consider improving the real relationship between customers together through social channels, forums, or directly through the site or "Reviews & comment" section. Many e-commerce sites do not have a comment section for each product on the e-commerce site. Also, the reward policy through comments is a policy that can be considered. Customers can choose the option to keep product information confidential during the distribution step. In other words, the goods will be packaged and enclosed with little information but enough to transport. Therefore, when receiving the package, customers will not be embarrassed or worried about other people knowing what they buy. Also, businesses must disclose their privacy policy on their e-commerce site to ensure their privacy. Electronic retailers should apply customization in business by giving customers more space to participate in the design of their products. Build a system for analyzing customer activities to understand their interests, concerns, or needs, or can link to third parties for more information about customer behavior.

Business needs to have many images and describe the functions and uses of the product. Besides, the business should provide additional evidence from reliable sources so that customers can evaluate when choosing or deciding to buy products. E-tailer needs to provide a return policy and a product exchange process on its e-commerce, and there should be a specialized department that accepts the processing and returning the payment to customers. Repayment to customers must be carried out in a simple process, and full customer support (recall, test, change of new products). Use reputable third parties to ensure peace of mind for customers when trading on the site and providing business information.

6. Conclusions

With a mixed research approach (including group interviews with eight experts, and a survey of 917 respondents), this study has shown the impact of perceived mental benefits and online trust on the customers' information disclosure in online transactions in a developing country in Asia, specifically Vietnam. In this relationship, the benefits create a significant impact on consumer’s online trust, but both of these factors have a positive impact on the intention to provide personal information.

Although many efforts have been made, this study is also inevitable. First, e-commerce is a relatively wide field with many types, such as mobile commerce, social commerce. Research focusing on a specific area will create more profound and more accurate insights. Secondly, the method of sampling in the current study is using the non-probability method, which makes the results of the study less reliable. Future studies may use probability sampling methods to increase research reliability. Finally, the disclosure of personal information is an appropriate structure for new research directions. However, subsequent studies can expand output factors such as online loyalty, participation.

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