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ORIGINAL RESEARCH article

Front. Psychol., 19 February 2019
Sec. Environmental Psychology

Understanding Customers’ Continuance Intentions Toward In-Lobby Self-Service Technologies

  • 1Business School, Sichuan University, Chengdu, China
  • 2School of Economics and Management, Hubei University for Nationalities, Enshi, China

Drawing on service climate theory and insights from the literature on self-service technologies (SSTs) and customer participation, this study investigates the antecedents of customers’ continuance intentions toward in-lobby SSTs. Using data collected from 257 actual customers in the context of retail banks, this experimental study examines the proposed relationship between customer perceived service climate, customer readiness factors (i.e., perceived ability, role clarity, and perceived benefit), customer satisfaction and customer continuance intention toward in-lobby SSTs. The results show that customers’ perceived service climate positively influences customers’ continuance intentions toward in-lobby SSTs. Moreover, two customer readiness factors (i.e., perceived ability, perceived benefit) and customer satisfaction mediate this relationship. The findings demonstrate the importance of customers’ perceived service climate in driving their continuance intention and provide managerial implications for service firms employing in-lobby SSTs.

Introduction

Over the past two decades, the infusion of self-service technologies (SSTs) has changed the nature of service and how value is created (Bitner et al., 2000; Vargo and Lusch, 2004). Services are increasingly being provided to customers through the use of SSTs. The retail bank industry is at the front of this trend. Since 2011, JP Morgan Chase bank has begun to deploy new self-service kiosks (SSKs) to its outlets. Approximately 90% of transactions performed by tellers can now be handled by these SSKs. The biggest bank in China, the Industrial and Commercial Bank of China (ICBC, 2017), has equipped 60% of its branches with intelligent teller machines, through which more than 90% of teller services can be provided. The proliferation of SSTs in service industries is based on the premise that successful SSTs benefit both service providers and customers. Specifically, SSTs increase service system productivity and reduce operational costs (Bitner et al., 2000; Curran et al., 2003), while enhancing customer experience and decreasing waiting time (Wang, 2012). However, researchers have noted that not all customers embrace SSTs (Meuter et al., 2003; Reinders et al., 2008). Research focusing on drivers of the use SSTs has found that there are two categories of antecedents to customers’ use of SSTs, namely, SST characteristics and individual difference factors (Meuter et al., 2005; Wang et al., 2013). SSTs’ characteristic factors include ease of use (Lin et al., 2007; Weijters et al., 2007) and usefulness (Oh et al., 2013; Kim and Qu, 2014). Individual difference factors include attitude (Lin and Chang, 2011; Wang et al., 2012), perceived control (Lee and Allaway, 2002; Ding et al., 2007), perceived risk (Walker and Johnson, 2006; Kim and Qu, 2014) and fun (Dabholkar and Bagozzi, 2002).

Although extant research contributes to a better understanding of customers’ trial intention or initial use, only limited attempts have been made to investigate factors that influence customers’ continued use of SSTs (see Table 1 for a review of SST continuance studies). Compared to initial adoptions, customers’ continued use of SSTs is more critical to service firms (Schuster et al., 2015). Repeated and continued use is not only a necessary stage to customer commitment and loyalty (Bitner et al., 2002) but also a return of the substantial investment in SSTs (Ashworth, 2010). Furthermore, although substantial numbers of in-lobby SSTs have been employed by service firms (e.g., banks, hotels, fast-food restaurants, and supermarkets), extant research provides very little knowledge about the factors that drive customers’ continuance intentions toward them. This study aims to fill this gap.

TABLE 1
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Table 1. A chronological review of SST continuance studies.

Given the unique location, customers’ experience of using in-lobby SSTs is distinct from their experience with other on-site SSTs (e.g., ATMs outside the bank lobby). Service organizations are open systems in which the managerial practices are not only for employees but also for customers (Schneider and Bowen, 1985). In-lobby customers have more opportunities to perceive service firms’ managerial practices and frontliners’ service behaviors toward SST usage. Therefore, the question that arises is as follows: Do customers’ service climate perceptions affect their SST continuance intention? Moreover, previous SST continuance research (as shown in Table 1) has found that customer satisfaction (Wang, 2012; Wang et al., 2013) and customer readiness factors (Ho and Ko, 2008; Zhao et al., 2008) mediate the relationship between antecedents (e.g., ease of use, usefulness, self-efficacy) and the continued use of SSTs. Another question that arises is the following: Do customer satisfaction and customer readiness factors mediate the relationship between customers’ service climate perceptions and continued use of SSTs? With the specified research questions in mind, this study proposes and tests a conceptual model involving customers’ perceived service climate and customer continuance intention (see Figure 1). This study proposes that customer readiness factors and customer satisfaction mediate the positive influence of customers’ perceived service climate on continuance intention toward in-lobby SSTs.

FIGURE 1
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Figure 1. Conceptual framework of customer continuance intention toward in-lobby SSTs.

The contribution of this study is threefold. First, this study extends the SST literature by investigating the role of customers’ perceived service climate in driving customers’ continuance intentions toward in-lobby SSTs. To the best of our knowledge, this study is the first in the SST literature to link service providers’ managerial practices from the customers’ perspective to customers’ continuance intentions. Second, this study establishes the robust predictive role of perceived ability, perceived benefit and customer satisfaction in SST continuance. Third, this study empirically tests and lends support to the suggestions that Bitner et al. (2002) proposed for implementing successful SSTs.

In the following sections, this study reviews related literature to develop the conceptual framework and related hypotheses. This is followed by the methodology. This article continues by presenting the analysis and results. Finally, the study concludes by discussing implications, limitations and future research directions.

Conceptual Framework and Hypotheses Development

Climate Research

Climate research has a long history. Since Lewin et al. (1939) proposed the “social climate” construct in social psychology, climate research has received significant academic attention (James and Jones, 1974; Ashforth, 1985; Schneider et al., 1998, 2017; Carr et al., 2003; Parker et al., 2003).

Generally, climate refers to an individual’s perceptions of the environment. Rooted in Gestalt psychology, climate is a result of an individual’s tendency to perceive and interpret the outside world’s “order.” Individuals create their own “order” and use it to gauge the appropriateness of their behaviors (Schneider, 1975), which in turn influences their future behaviors. Consequently, the effects of climate on individual attitudes and behaviors have been investigated in many contexts (Jones and James, 1979; Ashforth, 1985), and the majority of climate studies have been conducted in the organizational behavior domain. Climate is linked to several important individual-level and organizational-level outcomes. For example, the fit between employees’ climate perceptions and personal orientations significantly affects their job satisfaction, organizational commitment and work performance (Ostroff, 1993). Employees’ service climate perceptions have a cross-level effect on customer satisfaction (Schneider et al., 1998). Using a meta-analysis approach, Parker et al. (2003) found that employees’ climate perceptions positively influence their motivation and performance. Salespeople’s organizational sale-related climate perceptions positively affect their outcome performance (Evans et al., 2007). The findings of previous research indicate that climate perceptions are significant influencers of employee performance and organizational outcomes.

Customer Perceived Service Climate

In the seminal work of service climate research, Schneider (1973) defined climate as “the summary perception that bank customers have of their bank” based on specific service-related events and activities. Subsequently, service climate was broadened and redefined as an organization-level construct, which refers to employees’ collective sense of service quality—focused policies, practices and procedures they experience and the service quality emphasis they observe in behaviors that are rewarded, supported, and expected (Schneider et al., 1998). Because service organizations are open systems, Bowen and Schneider (2014) have indicated that service climate theory and research emphasizes the boundary-spanning effects of service climate on important customer outcomes. For example, previous studies have found that service climate significantly influences service quality (Schneider et al., 1998), customer satisfaction (Mayer et al., 2009), and customer loyalty (Liao and Chuang, 2004).

In contrast to service climate, customer perceived service climate (CPSC) refers to “a customer’s perception of the extent to which a service organization teaches, prioritizes, and recognizes outstanding customer service through organizational practices and procedures” (Jin et al., 2017). In the context of fitness services, Jin et al. (2017) found that CPSC augments the positive effect of positive customer-to-customer interaction on support from other customers while mitigating the negative effect of dysfunctional customer behavior on support from other customers.

Service providers have become the facilitators of value creation (Grönroos, 2008; Payne et al., 2008), which should create and maintain an environment to facilitate the co-creation activities of both service providers and customers. When the level of CPSC is high, customers perceive and receive more outstanding service practices that are taught, prioritized, and recognized by the service providers. Service firms and service employees will make a greater effort to facilitate customers’ in-lobby self-service process (e.g., proactive recommendation, personal assistance, user manual and user-friendly interfaces). Therefore, this study proposes that there may be positive linkages between CPSC and important service outcomes (e.g., customer satisfaction and customer loyalty).

Customer Continuance Intention

Continuance intention refers to customers’ intention to continue using SSTs (Bhattacherjee, 2001). Customers have often been seen as “partial employees” who are increasingly involved in service production and delivery (Lengnick-Hall, 1996; Vargo and Lusch, 2004). The positive relationships between employees’ climate perceptions and organizational commitment have been examined intensively (for a review, see Parker et al., 2003). In the current research setting (i.e., in-lobby SSTs), both service and managerial practices are visible to customers. Customers have more clues about what managerial practices have been adopted and how service procedures have been conducted. Based on these clues, customers develop service-related perceptions, attitudes and behavioral intentions (Schneider and Bowen, 1985). Furthermore, both direct (Schneider et al., 1996) and indirect effects (Liao and Chuang, 2004; Hong et al., 2013) of service climate on customer loyalty have been tested by previous works. Therefore, this study proposes that a higher level of CPSC produces greater customer continuance intention toward in-lobby SSTs (i.e., customer loyalty to SSTs), as follows:

H1: CPSC positively affects customer continuance intention toward in-lobby SSTs.

Customer Readiness

Customer readiness refers to the degree to which a customer is prepared to use SSTs (Meuter et al., 2005). In the customer participation literature, customer readiness factors (i.e., perceived ability, role clarity, and perceived benefit) have been well established (Meuter et al., 2005; Yim et al., 2012; Dong et al., 2015). Customer readiness variables are mostly modeled as antecedents or mediators of customer co-creation (Meuter et al., 2005; Dong et al., 2008). Meuter et al. (2005) suggested that successful SST co-production relies on customer readiness factors. When customers are prepared and ready to co-create, their enhanced self-efficacy, increased role clarity and perceived benefit positively affect their intention toward future co-creation (Bowen, 1986; Dong et al., 2008).

Perceived ability refers to customers’ perceived skills and knowledge that enable them to perform effectively in using SSTs (Meuter et al., 2005; Dong et al., 2008). Customer perceived ability denotes what a customer “can do” in self-service. When customers use SSTs, they should possess the necessary skills and confidence to complete the task (Meuter et al., 2005). Bitner et al. (2002) suggested that service providers should provide effective marketing communication to assist in overcoming customers’ perceptions of incapability to use SSTs. Zhao et al. (2008) found that training improves customer self-efficacy, which in turn increases customers’ satisfaction and behavioral intention toward self-checkout machines in the library setting. As partial employees, in-lobby customers know to what extent the service firms facilitate their self-service behaviors through service climate perceptions. If CPSC is high, which means that customers feel high expectancy and strong support from the service firm, their perceived ability improves. Furthermore, when customers’ self-efficacy is enhanced, their continuance intention toward in-lobby SSTs will be greater. Previous research has shown that individuals’ sense of self-efficacy plays a major role in the way they approach goals, tasks, and challenges (Bandura, 1977). More specifically, recent SST studies have shown that self-efficacy or perceived behavioral control motivates customers to reuse SSTs (Ho and Ko, 2008; Wang et al., 2013; Schuster et al., 2015). Thus, the current study proposes that CPSC positively affects customers’ perceived ability, which in turn increases customer continuance intention toward in-lobby SSTs. Hence, as shown in Figure 1, this study hypothesizes the following:

H2: The positive effect of CPSC on customer continuance intention toward in-lobby SSTs is mediated by customers’ perceived ability.

Role clarity refers to the customer’s knowledge and understanding of what to do when using SSTs (Meuter et al., 2005). When customers participate in an unfamiliar service production process, insufficient role clarity not only constrains their task-related performance but also affects service outcomes (Dong et al., 2015). When customers use in-lobby SSTs, their role as value creator requires them to complete certain tasks that were traditionally completed by service employees. Previous climate research has revealed that frontline employees’ climate perceptions have a significant positive effect on their role clarity (Coelho et al., 2010). Similarly, when CPSC is high, customers perceive more outstanding service practices (e.g., personal support and assistance, user-friendly interfaces), which will provide customers with a deeper understanding of the new roles and further clarify the activities that they should perform when using SSTs. In addition, previous studies have indicated that customer role clarity has a significantly positive effect on customers’ intention to reuse SSTs (Dong et al., 2008; Ho and Ko, 2008). When customers work as partial employees in service systems, their role clarity influences their performance as well as the ultimate outcomes of self-service, which further affects their continuance intention toward in-lobby SSTs. Therefore, this study hypothesizes as follows:

H3: The positive effect of CPSC on customer continuance intention toward in-lobby SSTs is mediated by role clarity.

Perceived benefit is defined as customers’ evaluation or appraisal of the rewards of using SSTs (Meuter et al., 2005). According to social exchange theory, when customers contribute more resources to service production, they may want to receive additional rewards as an exchange (e.g., reduced waiting time, enjoyment). Service climate research has indicated that service employees surrounded by a high service climate have the motivation to deliver superior service (Mayer et al., 2009). If in-lobby customers find that their self-service behaviors are facilitated by service providers’ outstanding managerial and service practices, the desired service outcomes (i.e., perceived benefit) will be anticipated and obtained. Further, previous research has tested the positive relationship between perceived benefit and customers’ continued use of SSTs (Dong et al., 2008; Ho and Ko, 2008). When customers find that the anticipated service outcomes are obtainable by using SSTs, they are motivated to reuse SSTs in the future. Based on this reasoning, this study hypothesizes the following:

H4: The positive effect of CPSC on customer continuance intention toward in-lobby SSTs is mediated by customers’ perceived benefit.

Customer Satisfaction

In this study, customer satisfaction refers to the extent to which a customer derives positive feelings from SSTs (Wang, 2012). Previous research has demonstrated the positive effect of service climate on customer satisfaction (Dean, 2004; Mayer et al., 2009). Bitner et al. (2002) suggested that customers’ repeated use of and commitment to SSTs depends on their initial use experience. When customers perceive a high level service climate, the service provider’s quality-focus service practices not only enhance the self-service experience but also improve the self-service outcomes (i.e., customer satisfaction). Furthermore, the SST literature has indicated that customer satisfaction not only represents a significant self-service outcome but also plays a predicting role in SST continuance (Zhao et al., 2008; Chen et al., 2009; Wang, 2012; Wang et al., 2013). Thus, this study hypothesizes the following:

H5: The positive effect of CPSC on customer continuance intention toward in-lobby SSTs is mediated by customer satisfaction.

Materials and Methods

Research Design

This study used a scenario-based, between-subjects experimental design to examine the proposed model for three reasons. First, this type of research design has been widely employed in the service marketing literature (Smith et al., 1999; Dabholkar and Bagozzi, 2002; Dong et al., 2008). Second, compared with a cross-sectional survey design, an experimental design offers more robust explanations for causal relationships. Moreover, the scenario-based experimental design is immune to biases (e.g., memory lapse, rationalization tendencies, and consistency factors) that are common issues in retrospective self-report (Smith et al., 1999). Therefore, the scenario-based between-subjects experimental design is considered appropriate for the current study.

Because the bank industry has typically been aggressive in deploying new SSTs (Bhattacherjee, 2001), this study chose the retail bank as the research setting. To develop the scenarios, this study followed the procedure outlined by Dong et al. (2008). In the first step, three focus group discussions were conducted. A total of twenty-nine customers who had used the new SSKs in bank lobbies participated (48% female; mean age = 22.1 years). In each focus group session, the authors introduced the research topic and asked the participants two questions: What did the bank do to facilitate your in-lobby self-service? What factors positively/negatively affect your continuance intention toward in-lobby SSTs? Each session lasted between 35 and 55 min. All focus group sessions were recorded and transcribed. In the second step, the raw text was analyzed. In total, these discussions provided 21 factors that may influence customers’ continuance intentions. To ensure the inter-rater reliability of these factors, the authors evaluated each of them. This study only retained factors that both authors evaluated as service-climate-related. Factors that received less than two confirmations were eliminated from the initial factor pool. Then, all retained factors were ranked by frequency. The top five most frequently mentioned factors were proactive recommendation (18), personal assistance (18), user guide (16), user-friendly interface (15), and actual reduced time (12). The factors identified from actual self-service experiences further enhanced the quality of the scenarios. In addition, 62% participants reported that they used the SSK for online-banking services. Therefore, the online-banking registration was selected as the stimulus material.

This study manipulated CPSC at three levels: high, moderate and low. In the high CPSC condition, customers perceive more outstanding service practices that the bank recognizes, prioritizes and teaches to facilitate the self-service process. Proactive recommendation, available personal assistance, a concise user manual, and user-friendly interfaces are simultaneously provided. In the moderate CPSC condition, the service practices that the bank implements are limited to user-friendly interfaces and user manuals. In the low CPSC condition, the bank’s only effort is providing an in-lobby SSK with a complicated interface. The basic scenario and specific scenarios are shown in the Appendix.

Participants and Procedure

The survey-based experimental design allowed this study to collect data from actual servicescapes (i.e., bank lobbies). Nine branches of the two biggest banks of China agreed to participate. This study invited customers who were waiting for services in bank lobbies to participate in this study. Participants were instructed to read a basic scenario that was held constant across all conditions and to immerse themselves in the situation. Imagining themselves as customers in a bank lobby, the participants were randomly assigned to one of three conditions and asked to read a specific scenario. Then, the participants completed the construct measurements, manipulation checks, and demographic questions. To minimize the possible demand effect, all items in the questionnaire were randomly ordered.

A total of 257 bank customers completed the study. The cell sizes for the three groups, i.e., low, moderate and high CPSC, were 81, 90, and 86, respectively. Among the subjects, approximately 51.8% were female. They ranged in age from 20 to 56, with a mean of 34.9. Education levels were high school or less (49.8%), associate degree (36.2%), bachelor’s degree (12.5%), and master’s degree or above (1.6%). Moreover, 42.4% of the subjects had similar self-service experience. Compared with the general population (National Bureau of Statistics of China, 2017), the sample was slightly younger and more educated. Previous studies have indicated that younger, male and more educated customers are more willing to use SSTs (Meuter et al., 2003). In addition, Meuter et al. (2005) found that previous similar experience is related to customer self-efficacy and behavioral intention toward SSTs. Thus, the current study controlled these variables (i.e., age, gender, education, and similar experience) to rule out potential confounding influences.

Measures

All scales in this study were selected from previous research (see Table 2). Using Likert-type scales with anchors from strongly disagree (1) to strongly agree (7), customer continuance intention was measured using three items adapted from Bhattacherjee (2001) and Wang (2012), perceived ability was measured by three items adapted from Meuter et al. (2005), role clarity was measured by three items adapted from Meuter et al. (2005), perceived benefit was measured by four items adapted from Dong et al. (2015), and customer satisfaction was measured using three items adapted from Wang (2012). The original questionnaire was prepared in English and translated into Chinese by the authors; then, an English professor was invited to back translate the Chinese version into English (Brislin, 1980). The translators compared the two English versions and made adjustments to the Chinese scales. The forward and backward translation procedure helped to ensure that there was no mismatch or meaning loss after the translation process.

TABLE 2
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Table 2. Measures and results of the measurement model.

Analysis and Results

Manipulation Check

The effectiveness of the manipulation was assessed using a specific item stating, “The bank makes a considerable effort to facilitate your self-service process.” Participants responded on a Likert-type scale with anchors of strongly disagree (1) and strongly agree (7). Analysis of variance (ANOVA) results indicated that the participants’ ratings were significantly different across the three conditions: F(2,254) = 208.78, p < 0.000, Mlow CPSC = 3.14, Mmoderate CPSC = 4.85, and Mhigh CPSC = 5.90. Therefore, the manipulation of CPSC was successful.

Measurement Model

CPSC, as a manipulated experimental variable, was not included in the measurement model. In addition, perceived benefit, as a formative latent construct with four different aspects (Dong et al., 2015), was excluded from the CFA model. Thus, this study input perceived ability, role clarity, customer satisfaction, and continuance intention into the CFA.

As shown in Table 2, the CFA results revealed a satisfactory model fit. Six commonly used fit indexes were calculated: χ2(48) = 102.530, GFI = 0.943, CFI = 0.975, NFI = 0.954, IFI = 0.975 and RMSEA = 0.067. Considering the reliability, the composite reliability (CR) for each scale exceeded 0.70, and all Cronbach’s α coefficients of the scales were above 0.70 (from 0.861 to 0.913). Moreover, all standardized factor loadings were sufficiently large and significant (all p-values less than 0.001). Convergent validity was confirmed by the internal structure of the CFA and average variance extracted (AVE) of the scales. All items loaded on their respective constructs. All estimated AVEs of the scales ranged from 0.684 to 0.780, which were greater than the recommended level of 0.50 (Bagozzi and Yi, 1988). Discriminant validity was supported by comparisons of the correlation between two constructs to the respective square root of AVE of each construct in the pair (Fornell and Larcker, 1981). The results of the comparisons (see Table 3) indicated satisfactory discriminant validity. Therefore, this study concluded that the measurement model, which possessed sufficient reliability and validity, fit the data well.

TABLE 3
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Table 3. The means, SDs, and correlation coefficients.

Hypotheses Testing

An ANCOVA was run on customer continuance intention, with gender, age, education and similar experience as covariates. The results revealed a significantly positive effect of CPSC on customer continuance intention, F(2,250) = 121.89, p < 0.000. Pairwise comparisons between the means of customer continuance intention indicated that participants assigned to the high CPSC group (Mhigh CPSC = 6.00) had a significantly higher continuance intention than those assigned to the moderate CPSC group (Mmoderate CPSC = 5.36) or the low CPSC group (Mlow CPSC = 4.31). Furthermore, participants who were assigned to the moderate CPSC group had a higher continuance intention on average than those who were assigned to the low CPSC group. Thus, H1 was supported. With regard to the covariates, the results showed that, in contrast to age (p = 0.014) and gender (p = 0.038), education and similar experience had no significant effects on customer continuance intention. The covariates in this analysis purified the effect of CPSC on customer continuance intention.

The mediation analysis was conducted with the PROCESS macro (Hayes, 2013; Hayes and Preacher, 2014) using Model 4 with 5,000 bootstrap samples. Because the independent variable in the current study was manipulated at three levels, Hayes’ method was appropriate for detecting the proposed mediating effects. Additionally, Hayes and Preacher (2014) advocated constructing asymmetric bootstrap confidence intervals (CIs) for indirect effect (IE) statistical inference, which does not need to meet the hypothesis of the normality distribution of indirect effects.

Prior to the mediation analysis, this study employed an indicator coding strategy to dummy code 3 groups. Two dummy variables were constructed (Di, i = 1, 2), as shown in Figure 2. When a case was in group i, the Di was set to 1; when a case was not, the Di was set to 0. The low CPSC group was not explicitly coded. (D1 and D2 were set to 0). In the following analyses, the low CPSC group functions as the reference group, and all estimated parameters that refer to group differences are quantifications in comparison with the reference group (Hayes and Preacher, 2014).

FIGURE 2
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Figure 2. Indirect effects on customer continuance intention.

Following the recommendation of Hayes and Preacher (2014), the total effects in this study were quantified with two parameter estimates (c1, c2) resulting from the estimation of customer continuance intention from the two dummy variable (D1, D2) coding groups relative to the reference group (i.e., the low CPSC group). The direct effects were quantified with two parameter estimates (c’1, c’2) from the estimation of customer continuance intention from the two dummy variable coding groups relative to the low CPSC group when mediators were held constant. The indirect effects were represented by the sum of all specific indirect effects through each mediator. All mediation analysis results are shown in Table 4.

TABLE 4
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Table 4. Results of mediation analysis.

The results of the indirect effects analysis (shown in Table 5) indicated that the total indirect effects of moderate CPSC (relative to low CPSC) on customer continuance intention were significant (IE = 0.35, SE = 0.09, 95% CI: [0.19, 0.54]). In addition, the total indirect effects of high CPSC (relative to low CPSC) on customer continuance intention were significant (IE = 0.75, SE = 0.15, 95% CI: [0.46, 1.04]).

TABLE 5
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Table 5. Indirect effects of CPSC on customer continuance intention.

Considering specific indirect effects via each of the three mediators, moderate CPSC (relative to low CPSC) had significantly indirect effects on customer continuance intention through perceived ability (IE = 0.12, SE = 0.04, 95% CI: [0.05, 0.22]), perceived benefit (IE = 0.14, SE = 0.07, 95% CI: [0.01, 0.29]), and customer satisfaction (IE = 0.11, SE = 0.04, 95% CI: [0.04, 0.22]). Moreover, high CPSC (relative to low CPSC) had significantly indirect effects on customer continuance intention through perceived ability (IE = 0.28, SE = 0.09, 95% CI: [0.12, 0.48]), perceived benefit (IE = 0.25, SE = 0.13, 95% CI: [0.02, 0.51]), and customer satisfaction (IE = 0.25, SE = 0.08, 95% CI: [0.11, 0.42]). Thus, H2, H4, and H5 were supported. However, the indirect effects of both moderate and high CPSC on customer continuance intention through role clarity were non-significant (CIs straddled zero). Thus, H3 of this research was not supported.

Discussion

Drawing on insights from the service climate literature and SST research, the present study develops a conceptual framework to investigate the role of CPSC, customer readiness factors, and customer satisfaction in driving customers’ continuance intentions toward in-lobby SSTs in a bank setting. The findings of this empirical study indicate that CPSC affects customer continuance intention directly and indirectly through perceived ability, perceived benefit, and customer satisfaction. Compared with customers who perceive low-level service climate, customers who perceive a high-level service climate have more confidence (i.e., perceived ability) and stronger motivation (i.e., perceived benefit) to continue using in-lobby SSTs. In addition, high-level CPSC leads to greater customer satisfaction, which in turn increases customers’ continuance intentions toward in-lobby SSTs.

All hypotheses of this study are supported except for H3, which deserves comment. The mediation analysis results indicate that role clarity does not play an intervening role in the relationship between CPSC and customer continuance intention. One possible explanation is that the use of SSTs in this study’s context is less frequent and more complicated than other SSTs (e.g., self-checkout kiosks in supermarket) such that customers’ role clarity may be hindered by these traits. Another possible explanation is that perceived ability may have intervened the relationship between role clarity and customer continuance intention, as in the findings of Dong et al. (2008).

Theoretical Contributions

The current findings yield important theoretical contributions. First, unlike most previous SST studies that focused on customers’ trial intention or initial adoption, this study responds to the call for more research on SST continuance (Meuter et al., 2005) and contributes to a better understanding of customers’ continuance intentions toward SSTs. Second, to the best of our knowledge, this is the first study to link service providers’ managerial practices from the customers’ perspective to customers’ continuance intentions in the SST literature. The extant SST research provides very little knowledge about firm-related variables that drive customers’ continued use of in-lobby SSTs. As an alternative option for interpersonal service, the use of in-lobby SSTs provides opportunities for customers to perceive the service climate, which influences their SST continuance intention. Third, the empirical findings lend support to suggestions proposed by Bitner et al. (2002) for implementing successful SSTs. This empirical study indicates that customers’ perceptions of the service climate are determinants of their continuance intention toward in-lobby SSTs, which is consistent with the proposition that customer-oriented practices (e.g., marketing communication, customer education) are important for both trial and repeated use of SSTs (Bitner et al., 2002).

Managerial Implications

The current study provides several managerial implications for service firms employing in-lobby SSTs. First, service firms should create a strong service climate to increase customers’ continuance intentions toward in-lobby SSTs. Bowen (1986) theoretically argued that service providers should foster a climate for service to improve customers’ role clarity, ability and motivation to participate in service delivery. Furthermore, Bitner et al. (2002) suggested that service firms should actively promote the use of SSTs and maintain a customer focus to implement successful SSTs. The findings of this study are consistent with previous works. Second, service providers should understand that in-lobby service practices, as reflections of service climate, are important to customers’ perceived ability, perceived benefit, and continuance intention toward in-lobby SSTs. Moreover, service firms must be aware of that their role in SSTs encounters is that of a value facilitator rather than a “bystander.” When service firms employ in-lobby SSTs, service practices such as marketing communications (e.g., recommendation, promotion), personal assistance (e.g., greeters in bank branches, assistants at airports), clear instructions or demonstrations (e.g., user manual, user guide), and user-friendly interfaces (e.g., ease of use, usefulness) not only influence customers’ initial adoption experience but also determine their continuance intention (Eriksson and Nilsson, 2007; Zhao et al., 2008; Wang et al., 2013). Third, service managers need to highlight the service practices that guarantee customer satisfaction with initial adoption. The mediation analysis results indicate that customer satisfaction is an important mediator in the relationship between CPSC and continuance intention, which is consistent with prior research (Bitner et al., 2002; Chen et al., 2009; Wang, 2012).

Limitations and Future Research

Although the present study contributes to the understanding of how CPSC affects customer continuance intention toward in-lobby SSTs, it has limitations like any research. First, although the scenario-based experimental approach has been widely used in the service marketing literature, this study encourages future research to employ field experiments. Second, because of the use of scenarios in this study, customer continuance intention was the major dependent variable. However, behavioral intention does not always lead to actual behavior (Sheeran, 2002). Therefore, future research could measure customers’ actual behaviors to improve the findings’ external validity. Third, the present study was conducted in a single service context (i.e., retail bank), which may limit the generalization of the findings. Future research could examine the relationships in multiple contexts. Finally, this study focused on the predicting role of CPSC in SSTs continuance. Future research could explore the potential moderating role of CPSC on the effects of antecedents (e.g., SST characteristics, individual differences) on SST continuance.

Ethics Statement

We suggest that this study should be exempt from ethics approval. First, this study did not adopt a medical perspective. Second, all customers participated in this study voluntarily. Third, the survey introduction included a data use statement. Participants were notified that the survey data would be collected anonymously, treated confidentially, and used only for scientific publications.

Author Contributions

ML and SH contributed equally to the work and approved it for publication.

Conflict of Interest Statement

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

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Appendix

Basic Scenario

You have a bank card that has not been registered for the online banking service; you want to register it during your lunch break today. You arrive at the nearest bank branch with your bank card. After getting a waiting number, you find that there are 12 people waiting in line ahead of you. Based on your previous experience, you probably will have to wait 1 h for service.

High CPSC

The lobby manager comes to you and asks you what service you want. He recommends that you use the self-service kiosk in the lobby and gives you a two-page brochure about how to use it. He briefly introduces the operational process and says that he is available to help if you have any problems during the self-service process. It is a user-friendly machine. You complete the online banking registration using it. The entire self-service process takes approximately 15 min.

Moderate CPSC

Waiting for the service, you find a self-service machine in the lobby. You come to it and find that the online banking registration can be completed by this machine. A two-page brochure about how to use it is placed next to the machine. Following the steps described in the brochure, you complete the online banking registration using the self-service machine. The overall self-service process takes approximately 30 min.

Low CPSC

Waiting for the service, you find a self-service machine in a corner of the bank lobby. After clicking on the touch screen, you find that the online banking registration can be completed using this machine. You look around and find that there is no user manual or lobby manager who can help. You try to use it for registration on your own. It is an all-in-one machine that has a lot of service functions. After numerous attempts, you finally see “Registration Complete!” shown on the screen. The overall service process takes approximately 60 min.

Keywords: self-service technology, in-lobby, customer continuance intention, customer perceived service climate, customer satisfaction, customer readiness

Citation: Li M and Huang S (2019) Understanding Customers’ Continuance Intentions Toward In-Lobby Self-Service Technologies. Front. Psychol. 10:332. doi: 10.3389/fpsyg.2019.00332

Received: 06 October 2018; Accepted: 04 February 2019;
Published: 19 February 2019.

Edited by:

Bernardo Hernández, Universidad de La Laguna, Spain

Reviewed by:

Blanca Silvia Fraijo Sing, Universidad de Sonora, Mexico
Dolores Diaz Cabrera, Universidad de La Laguna, Spain

Copyright © 2019 Li and Huang. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

*Correspondence: Mingfei Li, mingfeili@hbmy.edu.cn

Co-first authors

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