1. Introduction
With the development of e-commerce, a large amount of product information leads to information overload. Recommendation systems can alleviate information overload and help consumers make purchasing decisions more easily [
1,
2]. However, consumers are often reluctant to adopt a recommendation system, largely due to a lack of trust in those systems [
3]. Here, we focus on how to improve consumers’ trust in recommendation systems (CTRS).
CTRS is influenced by a number of factors, including the perceived accuracy and relevance of the offered recommendations, the perceived fairness of the system, and the degree of transparency for how the recommendations are generated [
4,
5,
6]. Recommendation system transparency (RST) refers to the disclosure of the (partial) reasoning process behind the recommendation mechanism and explains how the system operates [
7]. RST is thus an important factor that affects CTRS [
8,
9].
In academia, there is controversy about the impact of RST on CTRS. Three main viewpoints exist: (1) Positive correlation. For example, in a music recommendation system, users prefer recommendations that they consider transparent and will have more confidence in such recommendations [
10]. (2) Negative correlation. Disclosing too many details about the internal logic of the system may lead to information overload, confusion, and low levels of perceptual understanding, reducing user trust and acceptance of the system [
11,
12]. (3) Non-correlation. Cramer et al.’s study on recommendation systems in cultural heritage did not find a positive effect of transparency on trust in the systems, although transparency increased the acceptance of recommendations [
13]. This earlier research clearly shows that the relationship between RST and CTRS is still inconsistent, and more research is needed to explore it fully.
In the corporate world, some online platforms are or have tried to improve RST, such as Twitter [
14], Instagram, and Facebook [
15]; however, in the field of e-commerce, few companies have yet tried to increase user trust by making their recommendation systems more transparent. Therefore, we examine whether and how RST can improve CTRS in the e-commerce domain.
We suggest the reason for the inconsistent impact of RST on CTRS is that most empirical studies only consider the direct effects of RST on CTRS, without considering its potential indirect effects and boundary conditions, thereby resulting in two research gaps. The first gap (of indirect effects) is from the lack of research on the mediators for the relationship between RST and CTRS. Zhao et al. found that users’ perceived understanding of the online shopping advice-giving system (AGSS) can mediate the relationship between subjective AGS transparency and users’ trust in the AGSS [
16]. Cramer et al. investigated the effects of transparency of recommendation systems on user trust in the cultural heritage domain, using perceived competence and perceived understanding as mediators [
13]. However, these articles both lacked any research from an emotional perspective, making it difficult to clearly explain the impacts of system transparency on human trust in the system. The second gap (of boundary conditions) is from the lack of empirical study on the moderators of that relationship. To our knowledge, no empirical study has addressed such moderators.
Based on Hoff and Bashir’s three-layer trust model for automated systems [
17], we developed a conceptual model that compensates for these gaps. In the dynamic learned trust layer, we argue that RST (design features) indirectly affects CTRS through the mediating role of the consumer’s perception of the recommendation system’s performance. For perceptual performance, we use the cognitive perspective of effectiveness and the affective perspective of discomfort as mediators. The influence of this initial learned trust layer occurs before the use of the recommendation system and can be considered as a boundary condition for accessing the learned layer. Therefore, we use the consumers’ domain knowledge of the recommendation system as a moderator of the model. Next, we consider both dispositional and situational trust layers, which are the prior conditions of the learned trust layer [
17] that can be used as boundary conditions for consumers using recommendation system processes. We use consumer gender, age, and income (dispositional trust layer) as control factors for the model and test the model using the scenario of purchasing different types of products (situational trust layer).
Compared to previous studies, this paper offers a model of parallel multiple mediating effects with further moderating effects by analyzing the indirect effects (perceived effectiveness has a positive impact on CTRS, and discomfort has a negative impact on CTRS) and boundary conditions (domain knowledge as moderator and the different product-type scenarios), thus providing a more detailed theoretical explanation of the relationship between RST and CTRS. We also extend Hoff and Bashir’s three-layer model of trust by combining it with the cognitive and affective aspects of trust and applying the extended approach to gain a better understanding of recommendation systems in the e-commerce domain.
2. Theoretical Background and Research Hypotheses
2.1. CTRS
Resnick and Varian introduced the concept of a “recommendation system” to the e-commerce field. They defined an “e-commerce recommendation system” as a decision support system that provides product information and suggestions to users via e-commerce websites and thereby helps users to make produce/purchase decisions by simulating a salesperson who aids users move through the purchasing process successfully [
18].
The definitions of trust in automated systems have been used to define trust in AI systems [
19]. The recommendation system is one of the applications of AI systems; thus, the definition of trust in a recommendation system can be derived from the meaning of “automated trust”. Applying Mayer et al.’s definition of trust in organizational relationships [
20], Lee and See defined automation trust as having “the attitude that an agent will help achieve personal goals in situations of uncertainty and vulnerability” [
21]. Hoff and Bashir classified this concept into dispositional, situational, and learned trust [
17], referring to Marsh and Dibben’s framework [
22]. Dispositional trust is the tendency to trust automation and is influenced by individual characteristics (e.g., age, gender, etc.). Situational trust depends on the specific interaction situation and is influenced by external variables (e.g., task type, etc.) and internal variables (e.g., mood). Learned trust is the user’s evaluation of a system based on past experience or current interaction, pre-existing knowledge, and the perception of that system’s performance. Design features indirectly influence learned trust through the perceived system performance [
17].
As shown in
Figure 1, the learned trust layer is divided into dynamic learned trust and initial learned trust. The system’s design features (such as transparency) indirectly influence trust via the mediating role of perceived system performance that occurs during use [
17]. The formation of such trust involves both thinking and feeling [
21], and is influenced by both cognitive and emotional dimensions [
23]. Therefore, for perceptual performance, we use the cognitive perspective of effectiveness and the affective perspective of discomfort as mediators. We thus envision the effect of RST on CTRS occurring in the learned layer, where perceived effectiveness and discomfort are the consumer perceptions of the recommendation system performance and become mediators in the learned trust layer. The effects of the initial learned layer occur before the use of the recommendation system, and thus can be considered as boundary conditions for the learned trust layer. We hypothesize that consumers’ domain knowledge of recommendation systems (initial learned layer factors) can indeed moderate the relationship between RST, perceived effectiveness, and discomfort for CTRS.
For the dispositional trust layer, consumers’ personal characteristics, such as gender, age, and culture, will also affect consumers’ trust in the system; therefore, we use consumers’ gender, age, and income as control variables for the model.
For the situational trust layer, according to the previous research, different types of products will affect consumers’ choices and attitudes [
24]. We thus verified whether the mechanism of the impact of RST on CTRS changes when purchasing different types of products.
2.2. RST and CTRS
RST refers to the disclosure of the (partial) reasoning process behind the recommendation mechanism to explain how the system operates [
7]. Highly transparent systems articulate the goals of these systems, the purposes for collecting data from users [
25], and the rationale for system outputs [
13,
26,
27]. Several researchers have argued that the trustworthiness of a recommendation system should be especially considered when assessing its quality [
28,
29]. Fully transparent systems allow consumers to understand how the system works and will explain the choices and behaviors of that system. Better understanding of a system will help users decide whether they can trust that system [
21] and indeed influence their attitudes toward the system [
30]. Providing explanations for the results of a recommendation system—such as providing the reasons behind recommendations as textual explanations—can improve system transparency [
7,
10], thereby increasing consumer trust in the system [
7,
31,
32] and, subsequently, its use.
The previous literature has shown that transparency is a way to increase trust [
33]. Diakopoulos and Koliska’s research demonstrated that system transparency is considered a key influencing factor for user trust in a system [
27]. Swearingen found that users prefer recommendations that they can consider transparent and will thus have more confidence in them [
10]. Therefore, we propose the following hypothesis:
H1: RST positively relates to CTRS.
2.3. The Mediating Effect of Consumers’ Perceived Effectiveness of Recommendation Systems
Perceived effectiveness is defined as “the extent to which a person believes that using a particular system will improve their job performance” [
34]. The effectiveness of a recommendation system thus depends on the accuracy of its recommendation algorithms [
35]. The fact that AI algorithmic judgments have higher accuracy than human judgments has been proven by many scholars and is now widely accepted [
36]. As one of the different applications of AI, the effectiveness of a recommendation system is also recognized by people. Hingston’s research shows that providing appropriate explanations for a recommendation system can improve the effectiveness of that system [
37]; the study emphasized that beliefs about the effectiveness of a technology are a fundamental determinant of whether a system is ultimately adopted or not [
34]. Indeed, the perceived effectiveness of a recommendation system will increase consumer satisfaction [
38] and trust [
35].
We argue that when recommendation systems become more transparent, those recommendation systems will disclose more information about their algorithms’ decision-making process, which consumers can then use to better evaluate the effectiveness of the recommendation systems. The effectiveness of recommendation systems can increase CTRS. Therefore, we propose the following two hypotheses:
H2a: RST positively relates to consumers’ perceived effectiveness of the system;
H2b: Consumers’ perceived effectiveness of the system positively relates to CTRS.
In addition to the direct impact of perceived effectiveness, the research has also noted the mediating role of perceived effectiveness in various fields [
39,
40]. For example, Yu and Li found that how employees perceived AI transparency and AI effectiveness had a chain mediating effect for AI decision transparency and employee trust in AI [
41]. Perceived consumer effectiveness and environmental values can play a chain mediating role between income quality and organic food purchase intention [
42]. We argue that RST (vs. non-transparency) leads to higher consumers’ perceived effectiveness and generates higher CTRS. Therefore, we propose the following hypothesis:
H2c: Consumers’ perceived effectiveness of the system mediates the relationship between RST and CTRS.
2.4. The Mediating Effect of Consumers’ Discomfort with Recommendation Systems
User discomfort is defined as having a lack of control over technology and a feeling of being overwhelmed by it [
43]. Users’ negative responses to information technology are mainly two types, namely, psychological and behavioral responses [
44]. Research has primarily focused on consumer resistance from the perspective of psychological responses. This particular focus refers to the actions that individuals take in opposition to situations where they perceive themselves to be in a compelled condition [
45]. If personalized recommendations interfere with user autonomy during the decision-making process, these processes may be counterproductive and lead to psychological resistance [
46]. For example, increasing the autonomy of the algorithm without giving an explanation for that increase means less human involvement. Then, consumers will have a low sense of control over the algorithms, which may cause discomfort for these consumers [
47].
In this paper, the main reason cited for causing algorithmic aversion and discomfort among consumers is the lack of transparency in recommendation systems. When consumers encounter a recommendation system, they believe that a recommendation system is like a “black box” and have no idea how it operates, let alone whether the recommendation system has or will misuse their private data. As a result, consumers experience psychological discomfort when confronted with an e-commerce recommendation system, which in turn makes it difficult for them to trust that system and the recommendations it makes. Therefore, when a recommendation system becomes more transparent, consumer discomfort with that system will decrease. Therefore, we propose the following hypotheses:
H3a: RST negatively relates to consumers’ discomfort;
H3b: Consumers’ discomfort negatively relates to CTRS.
Additionally, studies have tested the mediating effects of discomfort. For example, El Barachi et al. tested the mediating role of discomfort in the relationship between residents’ technological readiness and their willingness to continue using smart city services [
48]. Yu and Li found that discomfort mediates the relationship between artificial intelligence transparency and employee trust [
41]. We thus argue that RST (vs. non-transparency) leads to lower levels of consumers’ discomfort and, thereby, generates higher CTRS, and we propose the following hypothesis:
H3c: Consumers’ discomfort mediates the relationship between RST and CTRS.
2.5. Domain Knowledge
There is an aversion to new technologies such as algorithms [
36], and one of the major reasons for this aversion is the false human expectations of new technologies [
49]. This leads to a bias against all technology [
50]. Solutions to this problem include developing people’s domain knowledge, which requires training not only in their specific professional domain but also on how to interact with algorithmic tools, how to interpret statistical outputs, and how to appreciate the usefulness and utility of these decision aids [
42,
51].
Domain knowledge refers to a person’s professional knowledge in a specific field. In consumer behavior research, domain knowledge is believed to strengthen the foundation and development of trust [
52] and mitigate uncertainty in economic activity [
53,
54]. In addition, domain knowledge has been shown to affect users’ reliance and trust in these intelligent systems [
17,
55]. For example, Wang and Yin found that offering more domain knowledge and providing explanations enhanced users’ understanding of the system and reduced perceived uncertainty [
56]. Users with more domain knowledge will have a higher intention to use the conversational recommendation system [
57]. Users’ existing knowledge of an automated system also affects their initial trust in that system [
17].
Therefore, we suggest that people with different levels or ranges of system domain knowledge may have different attitudes toward recommendation systems. Domain knowledge may be a potential moderator of the relationship between recommendation system transparency and its effectiveness and discomfort. Consumers with more domain knowledge (vs. those with low knowledge) will perceive the effectiveness of that recommendation system more when confronted with a transparent recommendation system, experience less discomfort with that recommendation system, and thereby trust that recommendation system more. Therefore, we propose the following two hypotheses:
H4a: Consumers’ domain knowledge of a recommendation system moderates the relationship between RST and CTRS. That is, for consumers with high domain knowledge (vs. low knowledge), the increase in RST leads to a higher perceived effectiveness of that system;
H4b: Consumers’ domain knowledge of a recommendation system moderates the relationship between RST and consumers’ discomfort. That is, for consumers with high domain knowledge (vs. low), an increase in RST leads to lower levels of discomfort with that system.
2.6. Product Types
Researchers have shown that the type of product affects consumers’ purchasing choices [
24]. Representative product types include utilitarian/hedonic products [
58], search/experience products [
59], public/private products [
60], etc. Different types of information are required when evaluating different products [
61]. Based on Nelson’s theory of the “search” and “experience” of goods [
62], search products refer to products whose quality can be measured based on objective characteristics, while experience products refer to products that rely more on subjective experience and personal tastes. Researchers have found that consumer behavior also varies depending on product type (search or experience) whenever using recommendation systems [
59,
63].
In an online shopping scenario, consumers can access information about products on the web and thus measure the quality of search products. For experience products, consumers are more likely to judge the quality of those products from a subjective emotional aspect. Therefore, we argue that consumers have different reactions when purchasing different types of products (search vs. experience). Thus, we propose the following hypothesis:
H5: In the cases of purchasing search (vs. experience) products, there will be differences in the impact of RST on CTRS.
5. Discussion
This paper studies three research questions. First, how does RST affect CTRS through perceived effectiveness and discomfort? Second, does consumers’ domain knowledge about recommendation systems moderate the relationship between RST perceived effectiveness and discomfort? Third, will the relationship between RST, consumer perceived effectiveness, discomfort, and CTRS differ when purchasing different products? Through an empirical test, H1, H2a, H2b, H2c, H3a, H3b, H3c, H4a, and H4b are supported and H5 was not supported. These specific results are discussed below.
First, in the dynamic learned trust layer, RST (vs. non-transparency) produces higher CTRS (H1) and perceived effectiveness (H2a) and lower levels of discomfort (H3a). That finding is partially different from previous research [
41], where Yu and Li demonstrate that AI transparency will increase employee discomfort with an AI system. Consumers’ perceived effectiveness of a recommendation system has a positive impact on CTRS (H2b). Consumers’ discomfort with a recommendation system has a negative impact on CTRS (H3c). These results substantiate the prior findings noted in the literature [
41,
75]. We further confirmed the parallel multiple mediation effect, that is, one mediating path has a positive effect on CTRS and the other mediating path has a negative effect on CTRS. Since the mediating effect of perceived effectiveness (H2c) is greater than the mediating effect of discomfort (H3c), the total effect of RST on CTRS is positive. This result shows that even though there is discomfort when using the recommendation system, consumers attach more importance to the performance of the recommendation system, and that perceived effectiveness of the recommendation system offsets the negative impact of discomfort, thus, consumers tend to trust the recommendation system.
Second, in the initial learned trust layer, consumers’ domain knowledge of the recommendation system moderates the relationship between RST and perceived effectiveness and discomfort. Domain knowledge also positively moderates the positive effect of RST on perceived effectiveness and negatively moderates the negative effect of RST on discomfort. This result suggests that when RST increases, consumers with high domain knowledge (vs. low knowledge) are more able to perceive the effectiveness of recommendation systems and experience lower levels of discomfort. This finding is similar to previous findings [
57] that found that users with higher domain knowledge have a more positive attitude toward these systems.
Third, in the situational trust layer, there is no difference in the relationship between RST, consumers’ perceived effectiveness, discomfort, and CTRS when purchasing different products. This finding contradicts earlier results reported in the literature [
66,
78]. Consumers perceived lower trusting beliefs in the context of experience products when compared to search products [
59]. Perceived usefulness was more significantly affected for the search product than for the experience product [
79]. Acharya et al. also found that the impact of product type on consumer behavior is not significant [
6]. Based on their understanding, we argue that the nature of the specific shopping environment online can provide a possible explanation for the results of the current study. Recommendation systems are used in online shopping scenarios where experience products are less likely to be experienced before purchase, and consumers cannot actually perceive the difference between search and experience products [
80,
81,
82].
Fourth, in the dispositional trust layer, we found a negative impact of gender on CTRS. When purchasing experience products, female consumers have lower trust in a recommendation system, while there is no difference between the genders when purchasing search products.
The above results indicate that there is a crossover layer of influence among the factors that affect trust in the three-layer trust model.
5.1. Theoretical Implications
The theoretical implications of this study are as follows. First, our research contributes to the consumer psychology research literature by proposing and confirming the impact of RST on CTRS in the e-commerce shopping environment. Although previous researchers have noticed the impact of RST on user trust, they have mainly focused on non-shopping scenarios such as music and cultural heritage recommendation systems [
10,
13]. In the shopping scenario, consumers need to pay, so it is more necessary to increase trust in the recommendation system and reduce uncertainty. To our knowledge, our paper is the first empirical study to examine the impact of RST on CTRS in the context of e-commerce. Our research enriches the theoretical framework of RST. This expansion not only enhances our understanding of consumer behavior in the context of e-commerce but also contributes to the theoretical foundation of future consumer psychology research in this context.
Second, this paper deepens the understanding of the mediating mechanism between RST and CTRS. Most studies mainly focused on direct effects, resulting in a lack of research on mediators [
10]. Moreover, the effects of transparency on trust have primarily been studied from a cognitive perspective, while research from an emotional perspective is still lacking [
83]. The formation of trust involves both thinking and feeling [
21], and is influenced by both cognitive and emotional dimensions [
23]. Therefore, the analysis from only one aspect of cognition or emotion is not comprehensive. We found two mediating paths between RST and CTRS from both cognitive and emotional perspectives: RST (vs. non-transparency) leads to higher perceived effectiveness (which positively relates to CTRS) and lower levels of discomfort (which negatively relates to CTRS). Therefore, the cumulative effect of the influence of these two mediating paths may help to explain the inconsistent conclusions of previous studies on the relationship between RST and CTRS.
Third, this paper extends the study of boundary conditions for the relationship between RST and CTRS. We found that consumers’ domain knowledge has a moderating effect on consumers’ attitudes toward a recommendation system. Previous studies have shown that users’ existing knowledge of automation systems can affect their attitudes toward a system [
78,
84], and our results reveal the specific mechanisms of this effect. In particular, when consumers have a better understanding of the recommendation system, it is easier for them to understand the meaning of the transparent recommendation system’s algorithm; in turn, this understanding enhances consumers’ perceived effectiveness of the recommendation system and reduces their discomfort, leading to higher CTRS. We did not find any evidence that differences in product types directly lead to these differences in CTRS but we found an interaction between individual consumer characteristics and product types. Specifically, we found that gender has a negative effect on trust when consumers purchase experience products, while there is no difference when consumers purchase search products. Overall, these findings add new evidence to help reconcile the inconsistency of existing empirical studies on the relationship between RST and CTRS.
Fourth, we apply Hoff and Bashir’s three-layered trust model of automation [
17] to recommendation systems in the e-commerce domain, making two key extensions. On the one hand, we modify the learned layer by substituting the original automation system performance with consumer discomfort and perceived effectiveness of the recommendation system. The recommendation system is a kind of artificial intelligence system, and compared with an automatic system, users’ evaluation of a recommendation system includes more aspects. The original system performance measure is suitable for automation systems, while the discomfort and perceived effectiveness measures are more suitable for recommendation systems [
75]. On the other hand, we explore the cross-layer connections between factors in the different layers, such as how the interaction of consumer gender (the personality layer) and product type (the context layer) affects CTRS (the learning layer). As such, our framework provides a new perspective for future CTRS research.
5.2. Practical Implications
For recommendation system designers, improving the transparency of the system should be an important goal in the design process. Specifically, this goal can be achieved through the following measures: Firstly, user interface design—designers can integrate functionality into the user interface to explain the working principle of the recommendation system. For example, providing clear algorithm explanations, model descriptions, and visualizations of the recommendation process can help users understand the basis and mechanisms of the recommendations. This not only enhances RST but also further strengthens CTRS by increasing consumers’ perceived effectiveness of the recommendation system. Secondly, data privacy transparency—clearly demonstrating how recommendation systems collect, use, and protect personal information is another key measure to improve CTRS. Providing an easily understandable privacy policy and data usage instructions can significantly reduce consumers’ discomfort in recommendation systems, thereby increasing CTRS.
For e-commerce companies, the following strategies can help increase the frequency of consumers using recommendation systems: Firstly, during regular promotional activities, e-commerce companies can introduce consumers to the working principles and advantages of recommendation systems through online seminars, blog articles, or infographics. For example, explaining how recommendation systems generate personalized recommendations based on consumer behavior and preferences can enhance consumers’ perceived effectiveness of a recommendation system. Meanwhile, introducing how the system securely processes user information can alleviate users’ concerns about privacy and reduce their discomfort. Secondly, e-commerce companies should segment consumer groups based on their characteristics. We found that gender has a negative effect on trust when consumers purchase experience products. Therefore, for different types of products, companies should consider the impact of differences in gender, age, and other characteristics on trust and develop targeted strategies to enhance consumers’ trust. This segmentation not only helps optimize marketing strategies but also enhances consumers’ purchasing experience, ultimately achieving higher market competitiveness.
The results of this study also provide valuable insights for governments and regulatory agencies: Firstly, formulate policies and regulations—the government and regulatory agencies can introduce relevant regulations requiring companies to provide transparent algorithm details and data processing instructions in their recommendation systems. By establishing transparency standards, it can promote fair competition within the industry, enhance the credibility of recommendation systems, and protect consumer rights. Secondly, promote industry standards—encourage standardization organizations within the industry to develop best practices for transparency and privacy protection, and encourage companies to follow these standards when designing recommendation systems, thereby enhancing transparency and consumer trust throughout the industry.
5.3. Limitations and Suggestions for Future Research
The research of this paper has the following limitations. First, this article adopts online scenario experiments and does not fully simulate the scenario of e-commerce shopping, which may affect the participants’ true perception of the recommendation system. Future research can improve the accuracy of these experimental results by using a field experiment method where participants make real e-commerce purchases.
Secondly, consumers’ domain knowledge of a recommendation system is derived from self-evaluation and is not objective. Future research should examine this variable using more objective methods.
Third, the design of recommendation systems involves many factors. In addition, perceptions of transparency and trust may be different for basic data, such as recency, frequency, and monetary value (RFM) than for detailed data, such as clickstream. Therefore, future research can benefit from testing other factors to assess their impact on recommendation systems, such as the level of detail of input data, recommendations (content), personalized UI recommendations (layout), and so on.
Fourth, the mediating effect results of this study show that the mediating effect of perceived effectiveness is greater than the summing effect of discomfort; however, the reasons for this finding have not been explored. Future research can conduct further experiments on this mediating effect model to explore its mechanisms.