Determining the role of service quality, trust and commitment to customer loyalty for telecom service users: a PLS-SEM approach

Prateek Kalia (Department of Corporate Economy, Masaryk University, Brno, Czech Republic)
Robin Kaushal (Sri Aurobindo College of Commerce and Management, Ludhiana, India)
Meenu Singla (Sri Aurobindo College of Commerce and Management, Ludhiana, India)
Jai Parkash (Independent Researcher, Ludhiana, India)

The TQM Journal

ISSN: 1754-2731

Article publication date: 19 October 2021

Issue publication date: 17 December 2021

7618

Abstract

Purpose

The purpose of this paper is to determine the role of service quality (SQ), trust and commitment to customer loyalty (CL) for telecom service users. Further, the moderating role of gender, marital status and connection type within the model was tested.

Design/methodology/approach

A measurement model was created based on valid 615 responses from Indian TSUs for SQ, trust, commitment and loyalty with the help of partial least squares structural equation modeling (PLS-SEM). Multi-group analysis (MGA) was conducted to understand the moderating effect of marital status, gender and connection type within the model.

Findings

The results suggest that, out of five dimensions of SQ, only responsiveness, assurance and empathy have a significant positive relationship with both commitment and trust. Tangibility has a significant positive relationship with trust only. Both commitment and trust have a significant impact on loyalty. It was noticed that both commitment and trust act as mediators between three SQ dimensions (assurance, empathy and responsiveness) and CL. MGA revealed that empathy and responsiveness positively induce trust in telecom users who are single. Whereas, assurance increases commitment toward telecom service providers in married users. Assurance and empathy significantly contribute toward commitment and trust, respectively, in male users as compared to females. Empathy was found important for postpaid users for trust-building, whereas trust was found to be more important for prepaid users to stay loyal to the service provider.

Originality/value

This article contributes toward understanding the role of SQ, trust and commitment to CL moderated by marital status, gender and connection type in an integrated model concerning telecom service.

Keywords

Citation

Kalia, P., Kaushal, R., Singla, M. and Parkash, J. (2021), "Determining the role of service quality, trust and commitment to customer loyalty for telecom service users: a PLS-SEM approach", The TQM Journal, Vol. 33 No. 7, pp. 377-396. https://doi.org/10.1108/TQM-04-2021-0108

Publisher

:

Emerald Publishing Limited

Copyright © 2021, Prateek Kalia, Robin Kaushal, Meenu Singla and Jai Parkash

License

Published by Emerald Publishing Limited. This article is published under the Creative Commons Attribution (CC BY 4.0) licence. Anyone may reproduce, distribute, translate and create derivative works of this article (for both commercial and non-commercial purposes), subject to full attribution to the original publication and authors. The full terms of this licence may be seen at http://creativecommons.org/licences/by/4.0/legalcode


Introduction

Technological advancements shifted the usage of landlines to mobile phones in the telecommunication sector for business, social and political purposes (Ngoma and Ntale, 2019). The telecommunication services have made significant infiltration in India over the years; mainly, during the past decade, there is an exemplary shift from the fixed line to mobiles (Barman et al., 2018; Gupta and Jain, 2020; Kumar et al., 2017). The telecommunication industry forms a vital part of the Indian service sector with 90.11% teledensity and the second-highest number of mobile subscribers in the world (1,176.02 million) after China (1,649.3 million) (Deogaonkar and Washimkar, 2014; TRAI, 2019). Further, the advent of broadband has re-energized and reinforced the wireline industry using existing infrastructure, thus creating a powerful competition among the service providers (Rajeswari et al., 2017).

Managing customer value and service quality (SQ) is important to maintain customer loyalty (CL) (Slack et al., 2020a; Slack and Singh, 2020). Companies should focus on CL, customer satisfaction and SQ in the telecommunication sector (Belwal and Amireh, 2018). For long-term sustainability in the market, the vital requirement is to win the loyalty of the customer in the telecommunication industry. Customer satisfaction affects CL and long-time customer relationships (Poulose et al., 2018). CL is indicated through repurchase intentions, which majorly depend upon the quality of products and services offered by a company as compared to its competition (Ahmed et al., 2010; Saroha and Diwan, 2020). Even when switching costs are low, a satisfied customer will remain loyal due to the swapping costs (Hadi et al., 2019). Researchers have pointed out that loyal customers with lower switching tendencies do not try different connections frequently (Rahul and Majhi, 2014; Aslam and Frooghi, 2018; Jacob and Subramoniam, 2021).

CL is still an elusive dream for many companies despite making substantial investments for enhancing customer service in the telecommunication business (Karjaluoto et al., 2012). Parasuraman et al. (1985) considered trustworthiness as an important measure that defines the sensitivity of SQ. Jalili (2008) suggested that trust and SQ perceived by customers lead to a high level of CL. Additionally, customer trust impacts consumer reliability and commitment, which redefines the relationship with repurchase intentions (Shahbaz et al., 2020).

While searching for literature focused on telecom service and CL in India, we found that previous studies invited examination of the effects of SQ and other variables on CL (Kaur and Soch, 2013). Moreover, in their future research directions, these studies called for an assessment of the relationship between SQ and CL influenced by mediators and moderators (Kaur and Soch, 2018). For mediation, we considered trust and commitment as important variables for two reasons; firstly, the literature review confirmed that both trust (Nelson and Kim, 2021; Purwanto et al., 2020; Yousaf et al., 2020) and commitment (Han et al., 2019; Pool et al., 2018) are powerful mediators; secondly, we found that no previous study has checked the mediating role of trust and commitment between SQ and CL. Similarly, previous studies urged to examine the moderating effects based on consumer characteristics and connection type (Kaur and Soch, 2013). We found adequate literature supporting gender (Sharma, 2014; Sharma et al., 2012), marital status (Rice and Katz, 2003; Wickramasinghe and De Zoyza, 2008) and connection type (Chen et al., 2017; Misra, 2012) as strong moderators. However, we noticed that none of the previous studies has tested the moderating effect of gender, marital status and connection type within the proposed model. Hence, we undertook this research to fill these gaps (Table 1). This article commences with a theoretical background of the concepts and hypotheses followed by the research methodology and results section. Discussion, theoretical and managerial implications, limitations and future directions constitute the concluding part.

Literature review

Service quality (SQ) and its relationship with commitment and trust

The competitive environment considers SQ as a vital source for growth, survival and success (Parasuraman et al., 1988). Established on various dimensions and conceptualization of SQ, researchers discovered the dimensions that form the basis of SQ are tangibility, reliability, empathy, assurance and responsiveness (Li and Shang, 2020; Slack et al., 2020a). The SERVQUAL scale relates to perceived quality, which serves as a base for understanding and measuring customer satisfaction (Parasuraman et al., 1988). Customers need better services, and SERVQUAL dimensions predict it well (Mishra et al., 2016; Ojo, 2010), making it an ideal scale for SQ measurement in the service industry based on 22 items (Daniel and Berinyuy, 2010). Satisfied customers remain loyal to the company using the services (Aslam et al., 2018; Singh and Slack, 2020; Slack and Singh, 2020), inducing positive customer attitude and behavioral intentions (Kalia et al., 2016).

Commitment focuses to build customer relationships through psychological contracts and improve SQ (Kaur and Soch, 2012). SQ has a positive effect and is associated with commitment (Abdullah et al., 2021). High SQ creates commitment and belongingness toward the service provider (Sharma et al., 2016). Further, customer satisfaction results in customer loyalty through synergizing factors that contribute to the conversion of satisfaction into commitment (Wu et al., 2012). Lee and Seong (2020) argued that good SQ always results in a committed customer. Kim et al. (2018) asserted that SQ enriches competitive intensity that increases commitment. Thus, we propose the following hypothesis:

H1.

SQ (tangibility H1a, reliability H1b, responsiveness H1c, empathy H1d, assurance H1e) has a significant positive influence on customer commitment.

SQ is the best indicator of measuring customer satisfaction, which develops a level of trust in the mind of customers (Zubair et al., 2019). Good and timely service by the service providers always creates a foundation of trust in the mind of customers (Lanin and Hermanto, 2019). Trust creates the feeling of safety, assurance and consistency towards the service provider (Garbarino and Johnson, 1999; Parasuraman et al., 1985). The best quality services enhance the trust of customers (Kaur and Soch, 2018). Hence, we postulate that:

H2.

SQ (tangibility H2a, reliability H2b, responsiveness H2c, empathy H2d, assurance H2e) has a significant positive influence on customer trust.

Trust and its role as mediator

Trust is viewed as a belief or sentiment that comes from reliability (Yousaf et al., 2020; Zubair et al., 2019). It is perceived to create confidence based on integrity and reliability (Morgan and Hunt, 1994). Trust is an essential driver to gain the loyalty of the customers (Reichheld and Schefter, 2000). Alkhurshan and Rjoub (2020) emphasized the role of trust to enhance customer loyalty and facilitate value creation (Sirdeshmukh et al., 2002). Trust acts as a direct measurement and powerful mediator of CL (Purwanto et al., 2020; Yousaf et al., 2020). More trust with a service provider leads to less loyalty to another (Nelson and Kim, 2021). Researchers have confirmed a strong relationship between CL and trust (Sirdeshmukh et al., 2002; Nelson and Kim, 2021; Purwanto et al., 2020). Hence, we propose that:

H3.

Trust has a significant positive influence on CL.

H4.

In the presence of trust, SQ (tangibility H4a, reliability H4b, responsiveness H4c, empathy H4d, assurance H4e) has a significant positive influence on CL.

Commitment and its role as mediator

For a long-term valued relationship, commitment is a necessary component (Morgan and Hunt, 1994). It is personal identification, concern for future welfare and the feeling of loyalty (Garbarino and Johnson, 1999). Commitment is viewed as a psychological attachment that results in CL (Wu et al., 2012; Izogo, 2015). Pool et al. (2018) in their study reported that commitment has a strong effect on loyalty. Further, Han et al. (2019) indicated the association between commitment and customer loyalty. Expecting positive impact of commitment on CL in case of mobile services, we propose that:

H5.

Commitment has a significant positive influence on CL.

H6.

In the presence of commitment, SQ (tangibility H6a, reliability H6b, responsiveness H6c, empathy H6d, assurance H6e) has a significant positive influence on CL.

Customer loyalty (CL)

Customers' intention to perform repeated purchases to a specific service is called CL (Zeithaml et al., 1996). It is the buyer's deep commitment to any product or service (Jahanzeb et al., 2011; Reddy et al., 2014). The social exchange theory formulates the base for explaining CL (Yang, 2015). The association between SQ, trust and commitment acts as a substantial indicator of loyalty (Rajini and Balaji, 2017; Singh et al., 2021). Researchers have reported a positive association between CL and SQ (Zhang et al., 2014). Telecom companies need to develop a positive image of their products and services to hold and sustain loyal customers by developing a competitive edge in a challenging environment (Kaur and Soch, 2018).

Moderating effect of gender, marital status and connection type

One of the important objectives of this research is to discover the moderating effect of marital status, gender and connection type within the model. To study the enormous diversity for attaining competency, the moderating effect provides a thorough understanding of how SQ, commitment, trust and loyalty differs in the case of male and female, married and unmarried, prepaid, and postpaid connection users. Past researchers have noticed that telecom services usage varies as per the gender difference (Sharma, 2014; Sharma et al., 2012). Further, the SQ and CL differ as per prepaid and postpaid users (Chen et al., 2017; Misra, 2012). Considering the marital status as a moderator, there is a plethora of studies that support the difference in SQ due to marital status (Rice and Katz, 2003; Wickramasinghe and De Zoyza, 2008). Given the background of the literature, we believe that its pertinent to study the moderating effect of the above-stated variables. Thus, we propose the following hypotheses:

H7.

Significant differences exist between married and unmarried respondents for the links in the tested structural model.

H8.

Significant differences exist between male and female respondents for the links in the tested structural model.

H9.

Significant differences exist between prepaid and postpaid users for the links in the tested structural model.

The theoretical background is summarized in Table 2, and the proposed model for the present research is given in Figure 1.

Methodology

Research context

The present research was carried considering mobile services in India. In the past decade, India has listed a robust growth, and the mobile economy is growing exponentially (Kalia, 2019; Kalia et al., 2017). Indian mobile dissemination (density) has grown to 88.50% (in 2019) from 4% (in 1995) (Gupta and Jain, 2020). Out of total internet subscribers (665.31 million), 96.66% are on wireless (643.64 million), 3.26% are on wired (21.67 million) and merely 0.08% are on fixed wireless internet connections (TRAI, 2019). An increase in mobile users and service delivery by operators poses a major challenge to mobile services in India. By positioning the quality of services, companies strive to achieve CL, profitability and productivity (Belwal and Amireh, 2018).

Data collection and sample response rate

For the study, data were collected from non-corporate telecom service (both prepaid and post-paid) users residing in the North-western constituency of India, i.e. Punjab, Haryana and Rajasthan, through a structured questionnaire. Based on market share, we selected four telecom service providers (TSPs), namely, Vodafone Idea Ltd (32.34%), Reliance (27.92%), Bharti (27.36%) and BSNL (10.69%) (TRAI, 2019). The states were selected based on the operational functionality of the above-mentioned service providers along with the aggressive environment, population and concentrated industry. States of Jammu and Kashmir and Himachal Pradesh were excluded due to security issues, low population density, and difficult geographical terrain.

The data was collected during the period of September–December 2019 in the English language based on stratified random sampling. In total 650 customers were approached for their response out of which 615 were recorded, processed, and validated for further analysis. This equates to a response rate of 94.61%, which is quite high as per the recommended levels (Nulty, 2008; Slack et al., 2020b). We adopted an a priori approach to calculate the sample size for our structural model (Soper, 2021). With a medium anticipated effect size of 0.23 (Cohen, 1992), the desired statistical power level of 0.8, eight latent variables and 32 observed variables at 0.05 probability level, the recommended minimum sample size was 326. Our sample is quite larger than the recommended sample size. The questionnaire was designed on a five-point Likert scale because of its more adaptability in social science research (Babakus and Mangold, 1992). The descriptive analysis shows that the sample comprises more males (61.3%) than females (38.7%) and an almost equal number of respondents from Punjab (33.5%), Haryana (33.2%) and Rajasthan (33.3%). About marital status, 54% of respondents were unmarried, while 46% were married. The age groups of 20–30 years (45.5%) were the maximum subscribers of mobile services, followed by the 30–40 (29.8%) age group. A total of 56.9% of respondents used a prepaid connection, while 43.1% used postpaid (Table 3).

Variables and measurement scales

The scales that have been utilized to measure the SQ have been adapted from the SERVQUAL MODEL (Parasuraman et al., 1985). The model comprises 22 statements of tangibility (4), reliability (4), responsiveness (4), empathy (5) and assurance (5). To examine the trust statements, we included five statements adapted from Morgan and Hunt (1994) and Pritchard et al. (1999). The concept of commitment was measured through items developed by Pritchard et al. (1999) and Jalili (2008). The scale that has been utilized to measure CL is previously developed by Jalili (2008) and Chen and Cheng (2012).

Data analysis and findings

Measurement model

As the facts and figures were composed of single customers (mobile users), there could be a problem of common method bias. This problem can be identified and verified with the help of Harman's single-factor test. The results reveal the first factor is accounting for 40.55%, which is less than the edge limit of 50%, as acclaimed by Endara et al. (2019). Hence, the study is free from biases in the response data. The measurement model includes the assessment of reliability and validity (convergent and discriminant) of first-order constructs, which specifies the robust methods used to examine the projected model (Hair et al., 2011). In the present research, trust, commitment, CL and SQ dimensions are modeled as first-order reflective constructs. Five dimensions of SQ lead to trust and then to CL, as evidenced by Liu et al. (2011) and Ofori (2018). Izogo (2017), also reflected the impact of SQ and customer commitment on CL.

In the beginning, the convergent validity was tested. It contains the indicator such as Cronbach’s alpha, average variance extracted (AVE), loadings and composite reliability (CR) (Table 4). While checking, the factor loadings six items (Tan4, Rel4, Ass5, Emp3, Emp5) were deleted because of the low cut-off value than the threshold limit of 0.5 (Hair et al., 2019). AVE, CR and Cronbach alpha values were found to be greater than the advised value of 0.50, 0.70 and 0.70, respectively (Babin et al., 2008; Hair et al., 2019).

Discriminant validity was checked based on two methods after checking for convergent validity. The initial criterion was cross-loadings of indicators wherein the loadings on the related construct were required to be larger than others (Dey et al., 2020). The second criterion was Fornell–Larcker (1981), which is based on the squared values of AVE, and higher value of each indicator diagonally (Table 5) indicated that the essential discriminant validity has been achieved (Endara et al., 2019).

Structural model

For testing the paths in the structural model, we used SmartPLS 3. As per the results, responsiveness (β = 0.233, p < 0.01), assurance (β = 0.221, p < 0.01) and empathy (β = 0.353, p < 0.01) positively influence commitment. By contrast, no support was found for tangibility and reliability. Commitment had a positive influence on loyalty (β = 0.620, p < 0.01). Further, the results revealed that tangibility (β = 0.248, p < 0.01), responsiveness (β = 0.187, p < 0.01), assurance (β = 0.390, p < 0.01) and empathy (β = 0.128, p < 0.01) also have considerable association with trust. Further, we observed a significant influence of trust on CL (β = 0.172, p < 0.01). The R2 value for commitment is 0.659, which indicates that a 65.9% discrepancy in commitment is defined by five dimensions of SQ, while 53% variance in the trust is explained by SQ dimensions. Finally, a 55.4% variance in CL is explained by trust and commitment (Table 6).

Mediation analysis

We checked for any mediation effect of commitment and trust between SQ and CL (Table 7). We noticed significant mediation by commitment between three dimensions of SQ, i.e. assurance (t = 3.890, p < 0.01), empathy (t = 6.15, p < 0.01) and responsiveness (t = 3.997, p < 0.01) and CL. By contrast, no mediation effect of commitment was observed for reliability (t = 0.823, p > 0.01) and tangibility (t = 0.823, p > 0.01). Further, we observed that trust mediates between four dimensions of SQ, i.e. assurance (t = 3.493, p < 0.01), empathy (t = 2.466, p < 0.01), responsiveness (t = 2.886, p < 0.01) and tangibility (t = 3.190, p < 0.01) and CL. However, no significant mediation by trust was observed between reliability and loyalty.

Multigroup analysis

Several previous studies have suggested an investigation of the moderating role of demographic variables (Ofori et al., 2018) and other important variables like the connection type (prepaid vs postpaid) on CL (Kaur and Soch, 2018). Therefore, in the second stage, we conducted the partial least squares multigroup analysis (PLS-MGA) test. The sample was separated based on gender, marital status and type of connection. Rather than relying on distributional assumptions, the PLS-MGA is based on the observed distribution of the bootstrap, making it capable to cover small and different sample sizes (Hair et al., 2019; Henseler et al., 2009).

For marital status (Table 8), we observed that assurance increases commitment toward TSPs in married users at a 1% level of significance. Empathy increases trust for those who are single, whereas it does not have any significant effect on married users. It is pertinent to note that reliability in services has no significant influence on the commitment and trust of both users. Further, responsiveness increases commitment for both married and unmarried but at a 5 and 1% level of significance, respectively. The results further reveal that responsiveness increases trust at a 1% level of significance for unmarried users, whereas it is insignificant for married users.

In the case of gender (Table 8), we noticed that assurance increases trust, commitment increases loyalty and empathy increases commitment in both males and females at a 1% level of significance. However, empathy leads to trust only in the case of males than females. Reliability does not have any influence on commitment trust for both males and females. Similarly, tangibility also has no influence on commitment for both genders. Tangibility increases trust for males at 1% and females at a 5% level of significance.

For connection type (Table 8), we found that assurance increases commitment, assurance increases trust, commitment increases loyalty and empathy increases commitment at a 1% level of significance for both prepaid and postpaid connections. Further, the results show that empathy increases trust only in postpaid connections at a 5% level, whereas it is not relevant in prepaid connections. The results indicate that responsiveness can significantly increase trust and commitment. Lastly, trust increases loyalty in the case of prepaid users as compared to postpaid connection users.

Discussion

This research explores the relationships between SQ and CL for telecom service users (TSUs), with trust and commitment as mediators and gender, marital status and connection type as moderators in the proposed model. This study brings out some interesting contradictions and novel findings to the existing research on telecom services.

Based on the literature, we hypothesized that SQ has a significant positive influence on customer commitment (H1) and trust (H2). We found that empathy, assurance and responsiveness are important dimensions of SQ that can positively impact both commitment and trust. This result is concurrent to the results of past studies, which proposed that said dimensions can positively affect customer pleasure and arousal (Alsaggaf and Althonayan, 2018). But, it contradicts earlier research that emphasizes the importance of “all” the five SQ dimension for customer satisfaction and retention (Ahmed et al., 2010). Our results suggest that TSUs will have trust, commitment and loyalty toward the TSPs if they are responsive, i.e. provide strong customer and technical support service that is prompt and accessible. TSUs also expect empathy from TSPs in the form of care, understanding, interactive fairness, human touch, communication and personalization. Further, TSUs will stay with a TSP if the company can assure that user information is secure and private. We also observed that tangibility has a significant positive influence on trust, which is contrary to the previous research, which demeaned the importance of tangibility for a mobile service provider (Alsaggaf and Althonayan, 2018). This finding indicates that a customer does consider tangible resources like design, décor, equipment, communication facilities, well-dressed frontline personnel at the outlet, recharge, card availability, etc. (Zeithaml et al., 2017). In a virtual environment, a mobile service provider can give tangible cues through the appearance of the website (navigation, content, ease of use, aesthetics, etc.) (Kalia, 2017).

Further, we hypothesized that trust (H3) and commitment (H5) have a significant positive influence on customer loyalty. In the current study, we noticed a positive influence of commitment and trust on loyalty. This corroborates the results of past studies, establishing commitment as a stronger predictor of attitudinal loyalty (Izogo, 2016) and trust as an antecedent of positive word-of-mouth behavior (Oraedu, 2020).

A significant contribution of this research is ascertaining the mediating roles of trust (H4) and commitment (H6) between SQ and loyalty. We noticed that both commitment and trust act as mediators between three SQ dimensions (assurance, empathy and responsiveness) and CL. Additionally, trust mediates between tangibility and CL. We believe, there is no earlier research on this specific effect in the context of telecom service in India. However, there are few studies where researchers have reported trust (Kaur and Soch, 2012, 2018) and commitment (Kaur and Soch, 2013) as antecedents of loyalty.

Based on the marital status, we found significant differences in the structural model at assurance–commitment (H1e), empathy–trust (H2d) and responsiveness–trust (H2c) links. Similarly, we noticed differences in assurance–commitment (H1e) and empathy–trust (H2d) links between the two genders. Differences were also observed between empathy–trust (H2d) and trust–loyalty (H3) links based on the connection type. Together, these differences provide support for H7, H8 and H9. These differences due to marital status, gender and connection type are concerning, especially to the empathy–trust (H2d) path, which is common to all. It indicates that married–unmarried, male–female, prepaid–postpaid users evaluate the elements and links of the proposed structural model differently. These results corroborate previous submissions related to marital status (Omotayo et al., 2020), gender (Sharma et al., 2012) and connection type (Nazareth and Correa de Mattos, 2018).

Theoretical contributions

Firstly, this research confirmed that SQ has a significant positive influence on customer commitment and trust and an indirect effect on loyalty. However, all fingers are not equal as empathy (t = 6.66) has the highest influence on commitment followed by assurance (t = 4.09) and responsiveness (t = 4.08). Whereas, assurance (t = 8.74) has the highest influence on trust followed by tangibility (t = 5.74) and responsiveness (t = 3.72). The second important contribution of this research is establishing the direct and mediating influence of trust and commitment between SQ and loyalty. Here, the current study testifies that customer commitment (t = 17.41) has a higher influence on loyalty than customer trust (t = 3.989). Thirdly, the study confirmed that the same size does not fit all since differences based on the marital status, gender and connection type were observed.

Managerial implications

Based on the findings of this study, several practical implications emerge for marketers. We recommend telecom companies for higher attention to responsiveness, assurance and empathy dimensions. We highly recommend improving empathy and assurance to enhance customer commitment and trust, respectively. These dimensions are extrapolated in the telecom service context in Table 9. An important contribution of this study is decrypting differences in the examined model based on the marital status, gender and connection type. We found that assurance can lead to commitment in the case of married users than unmarried users. Therefore, we recommend TSPs give more assurance to married customers by increasing the accuracy of billing, records and timely service to win their commitment. On the other hand, the results of empathy–trust (H2d) and responsiveness–trust (H2c) links were significant for unmarried customers only. It signifies that unmarried customer seek empathy and responsiveness from the TSPs for trusting them. Companies can induce trust among unmarried customers through empathy (offering individualized attention, reducing waiting time and providing comparatively better services than competitors) and responsiveness (task accuracy, less waiting time, prompt and helpful staff). In the case of gender, we found that assurance–commitment (H1e) and empathy–trust (H2d) links are significant for male customers than female customers. Therefore, we can suggest TSPs acquire the trust of the male customers through assurance (security, credibility, believability, honesty, privacy) and empathy. Based on the connection type, we observed that the empathy–trust (H2d) link is only significant for postpaid users. Based on this finding, we advise TSPs to stay empathetic with their postpaid customers to gain their trust. By contrast, the trust–loyalty (H3) link was found to be significant for prepaid users only; hence, we suggest TSPs inculcate a feeling of trust in prepaid users to win their loyalty.

Conclusion

This study determined the role of SQ, trust and commitment to CL for TSUs. We also checked the moderating role of gender, connection type and marital status in this model. A structural model was created based on 615 responses received from TSUs in India. We found that responsiveness, assurance and empathy are important dimensions of SQ that can positively impact both commitment and trust. Whereas, tangibility had a significant positive influence on trust only. Further, a positive influence of commitment and trust on loyalty was observed. While checking the mediation effects, we noticed that both commitment and trust act as mediators between three SQ dimensions (assurance, empathy and responsiveness) and CL. Additionally, trust mediates between tangibility and CL as well. The MGA revealed the moderating effect of marital status, gender and connection type within the model. The customer data are drawn from India; therefore, the results can be generalized to TSUs in India (which is the second-largest telecom market) and other developing countries with similar market situations.

Limitations and future directions

Despite the significant findings in the present study, there are some limitations. First, the data were collected from respondents in Northern India; future researchers can collect data from other regions of India to check for any differences. Second, a major classification used by the Telecom Regulatory Authority of India for reporting the data is based on urban and rural subscribers. Hence, a future study can use this classification to see the behavioral difference between the two. Third, the study is limited to a specific country, i.e. India, an emerging economy from the Asian region. There may be generalization issues due to the cultural and economic context. In the future, researchers can collect data from users of different continents to understand the similarities and dissimilarities. Fourth, a longitudinal study can better explain the actual consumer behaviors like loyalty and commitment than a cross-sectional analysis. Fifth, future researchers may include other variables like value cautiousness, brand reputation, customer switching behavior, customer experience, etc. Sixth, more demographic moderators like age, income, occupation and education can be included in the model. Seventh, this study has considered loyalty and commitment as a single-order construct. Future studies can explore loyalty (attitudinal and behavioral) and commitment (affective and calculative) in the second order.

Figures

The proposed research model

Figure 1

The proposed research model

Comparative review of studies focused on telecom service and customer loyalty in India to present research gap

Authors and yearIndependent variablesMediatorsModeratorsOther endogenous variablesOutcome variables
Kaur and Soch (2013)Customer satisfactionCommitment, corporate imageTrustCL
Reddy et al. (2014)SQ, customer relation, customer satisfaction, customer value, inconvenience barrier, advantageous barriersCustomer retention
Rahul and Majhi (2014)SatisfactionLoyalty
Gupta and Sahu (2015)Relationship marketing dimensionsCL
Mishra et al. (2016)SQAdvertisement, customer satisfaction, personal factorsCL
Rajini and Balaji (2017)Customer satisfaction, end-user, technology, marketingCustomer loyalty based on mobile number portability
Kumar et al. (2017)SQ, switching costsSwitching behavior
Kaur and Soch (2018)Customer satisfaction, trustCommitment, corporate image, switching costsCustomer loyalty
Poulose et al. (2018)CL, consumer satisfaction, customer relationship management, alternative attractivenessSwitching costSwitching barrierConsumer retention
Saroha and Diwan (2020)Customer touchpoints, price Value, quality, imageCL
This studySQTrust, commitmentMarital status, gender, connection typeCL

Source(s): The authors

Literature review

ConstructItemsAdapted from source
SQTangibility (4), reliability (4), responsiveness (4), empathy (5), assurance (5)Parasuraman et al. (1985), Parasuraman et al. (1988), Zeithaml et al. (1996)
Trust
  1. I trust the telecom operator and its staff

  2. The company is consistent in providing quality services

  3. I feel very safe while dealing with the company

  4. The staff of the company treats me fairly

  5. If I share my problem with the staff, I know they would respond positively

Moorman et al. (1992), Pritchard (1999), Morgan and Hunt (1994), Kalafatis and Miller (1996), Pritchard et al. (1999), Zhang and Feng (2009)
Commitment
  1. The company provides individualized attention while solving customer complaints

  2. If customer satisfaction requires more expenses, the company incurs them

  3. The company offers price significantly lesser than other operators

  4. Customer care ensures that problems will not arise in our relationship

  5. The company takes proactive measures to avoid any future complaint situations

Moorman et al. (1992), Kalafatis and Miller (1996), Pritchard et al. (1999), Jalili (2008)
Loyalty
  1. I feel proud to tell others for using this network for telecommunication services

  2. I would pay more than competitors' prices for the benefits I receive from the company

  3. I feel very loyal to the company

  4. The company contacts customers to find out their loyalty and commitment

  5. The competitive strategies of the company are strong enough to make its market position

Jalili (2008), Zhang and Feng (2009), Jahanzeb et al. (2011), Chen and Cheng (2012)

Source(s): The authors

Demographic characteristics of the sample

CharacteristicsN%
Gender
Male37761.3
Female23838.7
Marital status
Married28346
Unmarried33254
Connection
Prepaid35056.9
Postpaid26543.1
State
Punjab20633.5
Haryana20433.2
Rajasthan20533.3
Age
Below 208113.2
20–3028045.5
30–4018329.8
40–50528.5
Above 50193.1

Source(s): Authors' calculations

Results of the measurement model

ConstructsItemLoadingVIFCronbachCRAVE
TangibilityTAN10.8251.5820.7210.8430.642
TAN20.81.506
TAN30.7791.292
ReliabilityREL10.8111.3330.6930.8290.618
REL20.7861.397
REL30.7621.326
ResponsivenessRES10.7551.4570.7680.8510.59
RES20.6661.317
RES30.8281.647
RES40.8131.647
EmpathyEMP10.7841.2810.6520.8120.59
EMP20.7951.353
EMP40.7241.222
AssuranceASS10.71.2960.7430.8380.566
ASS20.6961.344
ASS30.7991.606
ASS40.8061.6
TrustTRU10.7911.9330.8690.9050.657
TRU20.8172.077
TRU30.8232.08
TRU40.832.218
TRU50.791.885
CommitmentCM10.7641.5580.8110.8690.571
CM20.7471.586
CM30.6361.347
CM40.8081.886
CM50.811.835
LoyaltyLOY10.8011.8010.8140.870.573
LOY20.7241.52
LOY30.7531.639
LOY40.7551.651
LOY50.7491.612

Source(s): Authors' calculations

Discriminant validity: Fornell–Larcker criterion

ASSCOMEMPLOYRELRESTANTRU
ASS0.752
COM0.6370.756
EMP0.6950.6780.768
LOY0.6070.7330.6330.757
REL0.7780.5520.6590.5750.786
RES0.7710.6680.7650.5960.7120.768
TAN0.7080.5550.6380.5250.6940.7260.801
TRU0.7580.6610.6660.5810.6410.7290.7050.81

Note(s): Diagonals (in italic) represent the square root of AVE and other entries represent the correlations

Source(s): Authors' calculations

Results of the structural model

HypVariablesPath coefficientsSEt-statistics (O/STDEV)p-valuesR2Results
H1aTAN → COM0.0320.050.6760.499 NS
H1bREL → COM−0.040.050.8280.408 NS
H1cRES → COM0.2330.064.0870 S
H1dEMP → COM0.3530.056.6650 S
H1eASS → COM0.2210.054.0920 S
H2aTAN → TRU0.2480.045.7390 S
H2bREL → TRU−0.050.051.0890.276 NS
H2cRES → TRU0.1870.053.7220 S
H2dEMP → TRU0.1280.043.1390.002 S
H2eASS → TRU0.390.048.7470 S
H3TRU → LOY0.1720.043.98900.5S
H5COM → LOY0.620.0417.41300.7S

Source(s): Authors' own findings, S = Supported, NS = Not supported

Results of mediation effect of commitment and trust

HypVariablesOriginal sample (O)Sample mean (M)St. devt-statistics (O/St.dev)p-valueResults
H4aTAN → TRU → LOY0.0430.0430.0133.190S
H4bREL → TRU → LOY−0.009−0.0080.0081.0570.29NS
H4cRES → TRU → LOY0.0320.0320.0112.8860S
H4dEMP → TRU → LOY0.0220.0220.0092.4660.01S
H4eASS → TRU → LOY0.0670.0670.0193.4930S
H6aTAN → COM → LOY0.020.020.0290.6730.5NS
H6bREL → COM → LOY−0.025−0.0250.030.8230.41NS
H6cRES → COM → LOY0.1450.1450.0363.9970S
H6dEMP → COM → LOY0.2180.2190.0356.1570S
H6eASS → COM → LOY0.1360.1370.0353.890S

Source(s): Authors' own findings, S = Supported, NS = Not supported

Results of PLS-MGA for marital status, gender and connection type

Indicators/p-valueMarriedSingleMaleFemalePrepaidPostpaid
ASS → COM0.000***0.1540.000***0.1180.000***0.000***
ASS → TRU0.000***0.000***0.000***0.000***0.000***0.000***
COM → LOY0.000***0.000***0.000***0.000***0.000***0.000***
EMP → COM0.000***0.000***0.000***0.000***0.000***0.000***
EMP → TRU0.0530.013**0.003**0.3160.2540.001**
REL → COM0.4010.8870.3570.5360.1230.796
REL → TRU0.9630.0540.1050.6260.4440.404
RES → COM0.023**0.001***0.004**0.001**0.002***0.012**
RES → TRU0.0710.001***0.003**0.033**0.024**0.002**
TAN → COM0.4670.8120.2270.6480.3770.904
TAN → TRU0.000***0.000***0.000***0.004**0.000***0.011**
TRU → LOY0.001***0.014**0.039**0.000***0.000***0.157

Source(s): Authors' own findings, *** significant at 1%, ** significant at 5%

Extrapolating traditional SQ dimensions in the telecom service context

Traditional*Analogous dimension in the context of telecom service
Responsiveness, willingness to help customers and provide prompt servicesCustomer service (customer problems and answering inquiries)
Technical support
Service performance
Processing speed (interactive, prompt response to customer requests and queries)
Access (availability of alternative communication channels)
Empathy, caring and individualized attention a firm provides its customersUnderstanding the customer
Interactive fairness
Sensation (e.g. human touch instead of automated responses)
Communication (through the helpline, mobile application, chat room, e-mail, frequently asked questions, bulletin board, etc.)
Personalization (e.g. multiple-language options)
Assurance, knowledge and courtesy of employees and their ability to inspire trust and confidenceSecurity (e.g. online transaction)
Credibility, i.e. believability, trustworthiness and honesty of the service provider
Confidence and trust in the service provider
Privacy (e.g. sensitive information)

Source(s): Adapted from Kalia (2017), *given by Parasuraman et al. (1988).

References

Abdullah, M.I., Huang, D., Sarfraz, M., Ivascu, L. and Riaz, A. (2021), “Effects of internal service quality on nurses' job satisfaction, commitment and performance: mediating role of employee well-being”, Nursing Open, Vol. 8 No. 2, pp. 607-619.

Ahmed, I., Nawaz, M.M., Usman, A., Shaukat, M.Z. and Ahmed, N. (2010), “A mediation of customer satisfaction relationship between service quality and repurchase intentions for the telecom sector in Pakistan: a case study of university students”, African Journal of Business Management, Vol. 4 No. 16, pp. 3457-3462.

Alkhurshan, M. and Rjoub, H. (2020), “The scope of an integrated analysis of trust, switching barriers, customer satisfaction, and loyalty”, Journal of Competitiveness, Vol. 12 No. 2, pp. 5-21.

Alsaggaf, M.A. and Althonayan, A. (2018), “An empirical investigation of customer intentions influenced by service quality using the mediation of emotional and cognitive responses”, Journal of Enterprise Information Management, Vol. 31 No. 1, pp. 194-223.

Aslam, W. and Frooghi, R. (2018), “Switching behaviour of young adults in cellular service industry: an empirical study of Pakistan”, Global Business Review, Vol. 19 No. 3, pp. 635-649.

Aslam, W., Arif, I., Farhat, K. and Khursheed, M. (2018), “The role of customer trust, service quality and value dimensions in determining satisfaction and loyalty: an empirical study of mobile telecommunication industry in Pakistan”, Market-Tržište, Vol. 30 No. 2, pp. 177-194.

Babakus, E. and Mangold, W. (1992), “Adapting the SERVQUAL scale to hospital services: an empirical investigation”, Health Services Research, Vol. 26 No. 6, pp. 767-786.

Babin, B.J., Hair, J.F. and Boles, J.S. (2008), “Publishing research in marketing journals using structural equation modeling”, Journal of Marketing Theory and Practice, Routledge, Vol. 16 No. 4, pp. 279-286.

Barman, H., Dutta, M.K. and Nath, H.K. (2018), “The telecommunications divide among Indian states”, Telecommunications Policy, Elsevier Ltd, Vol. 42 No. 7, pp. 530-551.

Belwal, R. and Amireh, M. (2018), “Service quality and attitudinal loyalty: consumers' perception of two major telecommunication companies in Oman”, Arab Economic and Business Journal, Korea Institute of Oriental Medicine, Vol. 13 No. 2, pp. 197-208.

Chen, C.F. and Cheng, L.T. (2012), “A study on mobile phone service loyalty in Taiwan”, Total Quality Management and Business Excellence, Vol. 23 Nos 7-8, pp. 807-819.

Chen, A., Feamster, N. and Calandro, E. (2017), “Exploring the walled garden theory: an empirical framework to assess pricing effects on mobile data usage”, Telecommunications Policy, Vol. 41 No. 7, pp. 587-599.

Cohen, J. (1992), “A power primer”, Psychological Bulletin, Vol. 112 No. 1, pp. 155-159.

Daniel, C.N. and Berinyuy, L.P. (2010), “Using the SERVQUAL model to assess service quality and customer satisfaction. An empirical study of grocery stores in umea”, Umea School of Business, pp. 1-78.

Deogaonkar, A. and Washimkar, G. (2014), “Impact of changes in service sector in shaping business and society telecommunication industry”, Procedia Economics and Finance, Vol. 11 No. 14, pp. 495-499.

Dey, B.L., Al-Karaghouli, W., Minov, S., Babu, M.M., Ayios, A., Mahammad, S.S. and Binsardi, B. (2020), “The role of speed on customer satisfaction and switching intention: a study of the UK mobile telecom market”, Information Systems Management, Vol. 37 No. 1, pp. 2-15.

Endara, Y.M., Ali, A.B. and Yajid, M.S.A. (2019), “The influence of culture on service quality leading to customer satisfaction and moderation role of type of bank”, Journal of Islamic Accounting and Business Research, Vol. 10 No. 1, pp. 134-154.

Fornell, C. and Larcker, D.F. (1981), “Structural equation models with unobservable variables and measurement error: algebra and statistics”, Journal of Marketing Research, SAGE Publications, Vol. 18 No. 3, pp. 382-388.

Garbarino, E. and Johnson, M.S. (1999), “The different roles of satisfaction trust and commitment in customer relationships”, Journal of Marketing, Vol. 63 No. 2, pp. 70-87.

Gupta, R. and Jain, K. (2020), “What drives Indian mobile service market: policies or users?”, Telematics and Informatics, Vol. 50, p. 101383.

Gupta, A. and Sahu, G.P. (2015), “Exploring relationship marketing dimensions and their effect on customer loyalty-a study of Indian mobile telecom market”, International Journal of Business Innovation and Research, Vol. 9 No. 4, pp. 375-395.

Hadi, N.U., Aslam, N. and Gulzar, A. (2019), “Sustainable service quality and customer loyalty: the role of customer satisfaction and switching costs in the Pakistan cellphone industry”, Sustainability, Vol. 11 No. 8, p. 2408, doi: 10.3390/su11082408.

Hair, J.F., Ringle, C.M. and Sarstedt, M. (2011), “PLS-SEM: indeed a silver bullet”, Journal of Marketing Theory and Practice, Vol. 19 No. 2, pp. 139-152.

Hair, J.F., Sarstedt, M. and Ringle, C.M. (2019), “Rethinking some of the rethinking of partial least squares”, European Journal of Marketing, Vol. 53 No. 4, pp. 566-584.

Han, H., Kiatkawsin, K. and Kim, W. (2019), “Traveler loyalty and its antecedents in the hotel industry: impact of continuance commitment”, International Journal of Contemporary Hospitality Management, Vol. 31 No. 1, pp. 474-495.

Henseler, J., Ringle, C.M. and Sinkovics, R.R. (2009), “The use of partial least squares path modeling in international marketing”, in Sinkovics, R.R. and Ghauri, P.N. (Eds), Advances in International Marketing, Emerald Publishing Limited, Bingley, West Yorkshire, England, Vol. 20, pp. 277-319.

Izogo, E.E. (2015), “Determinants of attitudinal loyalty in Nigerian telecom service sector: does commitment play a mediating role?”, Journal of Retailing and Consumer Services, Vol. 23, pp. 107-117.

Izogo, E.E. (2016), “Antecedents of attitudinal loyalty in a telecom service sector: the Nigerian case”, International Journal of Quality and Reliability Management, Vol. 33 No. 6, pp. 747-768.

Izogo, E.E. (2017), “Customer loyalty in telecom service sector: the role of service quality”, The TQM Journal, Vol. 29 No. 1, pp. 19-36.

Jacob, R. and Subramoniam, S. (2021), “Identifying the critical success factors of telecom switching barriers using the AHP”, Global Business Review, Vol. 22 No. 3, pp. 767-779, doi: 10.1177/0972150918816897.

Jahanzeb, S., Fatima, T. and Khan, M.B. (2011), “An empirical analysis of customer loyalty in Pakistan's telecommunication industry”, Journal of Database Marketing and Customer Strategy Management, Vol. 18 No. 1, pp. 5-15.

Jalili, P.P. (2008), The Impact of Customer Relationship Marketing on Market Performance: A Study Among Iranian Telecommunication Service Providers, Luleå University of Technology, available at: http://ltu.diva-portal.org/smash/record.jsf?aq2=%5B%5B%5D%5D&c=885&af=%5B%5D&searchType=LIST_LATEST&query=&language=sv&pid=diva2%3A1031668&aq=%5B%5B%5D%5D&sf=all&aqe=%5B%5D&sortOrder=author_sort_asc&onlyFullText=false&noOfRows=50&dswid=-6745 (accessed 19 October 2020).

Kalafatis, S. and Miller, H. (1996), “A re-examination of the commitment-trust theory”, in Gemünden, H.G., Ritter, T. and Walter, A. (Eds), IMP Conference (12th): Interaction, Relationships And Networks, University of Karlsruhe, pp. 399-418.

Kalia, P. (2017), “Service quality scales in online retail: methodological issues”, International Journal of Operations and Production Management, Vol. 37 No. 5, pp. 630-663.

Kalia, P. (2019), “Web surfers are web spenders: finding the truth of online shopping”, International Journal of Management Practice, Vol. 12 No. 3, pp. 376-400.

Kalia, P., Arora, R. and Kumalo, S. (2016), “E-service quality, consumer satisfaction and future purchase intentions in e-retail”, E-Service Journal, Vol. 10 No. 1, pp. 24-41.

Kalia, P., Kaur, N. and Singh, T. (2017), “E-commerce in India: evolution and revolution of online retail”, in Khosrow-Pour, M. (Ed.), Mobile Commerce: Concepts, Methodologies, Tools, and Applications, IGI Global, Hershey, Pennsylvania, pp. 736-758.

Karjaluoto, H., Jayawardhena, C., Leppäniemi, M. and Pihlström, M. (2012), “How value and trust influence loyalty in wireless telecommunications industry”, Telecommunications Policy, Vol. 36 No. 8, pp. 636-649.

Kaur, H. and Soch, H. (2012), “Validating antecedents of customer loyalty for Indian cell phone users”, Vikalpa, Vol. 37 No. 4, pp. 47-61.

Kaur, H. and Soch, H. (2013), “Mediating roles of commitment and corporate image in the formation of customer loyalty”, Journal of Indian Business Research, Vol. 5 No. 1, pp. 33-51.

Kaur, H. and Soch, H. (2018), “Satisfaction, trust and loyalty: investigating the mediating effects of commitment, switching costs and corporate image”, Journal of Asia Business Studies, Vol. 12 No. 4, pp. 361-380.

Kim, S.H., Kim, J.H. and Lee, W.J. (2018), “Exploring the impact of product service quality on buyer commitment and loyalty in B TO B relationships”, Journal of Business-to-Business Marketing, Routledge, Vol. 25 No. 2, pp. 91-117.

Kumar, D.P., Rajyalakshmi, K. and Asadi, S.S. (2017), “Analysis of mobile technology switching behavior of consumer using chi-square technique: a model study from Hyderabad”, International Journal of Civil Engineering and Technology, Vol. 8 No. 9, pp. 99-109.

Lanin, D. and Hermanto, N. (2019), “The effect of service quality toward public satisfaction and public trust on local government in Indonesia”, International Journal of Social Economics, Vol. 46 No. 3, pp. 377-392.

Lee and Seong, M.H. (2020), “A study on the effects of business service quality on satisfaction, commitment, performance, and loyalty at a private university”, Journal of Asian Finance, Economics and Business, Vol. 7 No. 9, pp. 439-453.

Li, Y. and Shang, H. (2020), “Service quality, perceived value, and citizens' continuous-use intention regarding e-government: empirical evidence from China”, Information and Management, Vol. 57 No. 3, p. 103197.

Liu, C.T., Guo, Y.M. and Lee, C.H. (2011), “The effects of relationship quality and switching barriers on customer loyalty”, International Journal of Information Management, Vol. 31 No. 1, pp. 71-79.

Mishra, U.S., Praharaj, S. and Sahoo, D. (2016), “Investigating the impact of service quality on customer satisfaction and loyalty: an empirical study in Indian telecom sector”, International Journal of Applied Business and Economic Research, Vol. 14 No. 6, pp. 3765-3780.

Misra, R. (2012), “An empirical study on the preference and satisfaction for the pre-paid and post-paid cellular subscribers”, Abhigyan, Vol. 30 No. 3, pp. 23-34.

Moorman, C., Zaltman, G. and Deshpande, G. (1992), “Relationships between providers and users of market research: the dynamics of trust within and between organizations”, Journal of Marketing Research, Vol. 29 No. 3, pp. 314-328.

Morgan, R.M. and Hunt, S.D. (1994), “The commitment-trust theory of relationship marketing”, Journal of Marketing, Vol. 58 No. 3, pp. 20-38.

Nazareth, P.H.M. and Correa de Mattos, C.A. (2018), “Relationship strategies of mobile operators: a comparative investigation between prepaid and postpaid customers in Belem - para, Brazi”, Navus - Revista de Gestão e Tecnologia, Vol. 8 No. 1, pp. 32-45.

Nelson, J.L. and Kim, S.J. (2021), “Improve trust, increase loyalty? Analyzing the relationship between news credibility and consumption”, Journalism Practice, Vol. 15 No. 3, pp. 348-365.

Ngoma, M. and Ntale, P.D. (2019), “Word of mouth communication: a mediator of relationship marketing and customer loyalty”, Cogent Business and Management, Cogent, Vol. 6 No. 1, doi: 10.1080/23311975.2019.1580123.

Nulty, D.D. (2008), “The adequacy of response rates to online and paper surveys: what can be done?”, Assessment & Evaluation in Higher Education, Vol. 33 No. 3, pp. 301-314.

Ofori, K.S., Boakye, K. and Narteh, B. (2018), “Factors influencing consumer loyalty towards 3G mobile data service providers: evidence from Ghana”, Total Quality Management and Business Excellence, Taylor & Francis, Vol. 29 Nos 5-6, pp. 580-598.

Ojo, O. (2010), “The relationship between service quality and customer satisfaction in the telecommunication industry: evidence from Nigeria”, Brand Research in Accounting, Negotiation and Distribution, Vol. 1 No. 1, pp. 88-100.

Omotayo, O., Anthonia, A., Hezekiah, F., Odunayo, S., Opeyemi, O. and Odion, E.-I. (2020), “Diversity management and organisational performance in deposit money banks in Nigeria”, Cogent Business and Management, Vol. 7 No. 1, p. 1836751.

Oraedu, C. (2020), “How relationship value and quality motivate positive word-of-mouth behaviour: expressing the rules of reasoning in the Nigerian telecom market”, International Journal of Quality and Reliability Management, Vol. 38 No. 1, pp. 249-272, doi: 10.1108/IJQRM-07-2018-0188.

Parasuraman, A., Zeithaml, V. and Berry, L. (1985), “A conceptual model of service quality and its implications for future research”, Journal of Marketing, Vol. 49 No. Fall, pp. 41-50.

Parasuraman, A., Zeithaml, V.A. and Berry, L.L. (1988), “SERVQUAL : a multiple-item scale for measuring consumer perceptions of service quality”, Journal of Retailing, Vol. 64 No. 1, pp. 12-40.

Pool, A.K., Pool, M.K. and Manjiri, H. (2018), “Effect of brand community commitment on loyalty and brand outcomes in Iranian Samsung mobile users”, Journal of Behavioral Science, Vol. 13 No. 1, pp. 56-67.

Poulose, J., Sharma, V. and Joseph, S. (2018), “Determinants of consumer retention strategies for telecom service industry in Central India”, Problems and Perspectives in Management, Vol. 16 No. 2, pp. 306-320.

Pritchard, M.P., Havitz, M.E. and Howard, D.R. (1999), “Journal of the academy of marketing science analyzing the commitment-loyalty link in service contexts”, Journal of the Academy of Marketing Science, Vol. 27 No. 3, pp. 333-348.

Purwanto, E., Deviny, J. and Mutahar, A.M. (2020), “The mediating role of trust in the relationship between corporate image, security, word of mouth and loyalty in M-banking using among the millennial generation in Indonesia”, Management and Marketing, Vol. 15 No. 2, pp. 255-274.

Rahul, T. and Majhi, R. (2014), “An adaptive nonlinear approach for estimation of consumer satisfaction and loyalty in mobile phone sector of India”, Journal of Retailing and Consumer Services, Vol. 21 No. 4, pp. 570-580.

Rajeswari, S., Srinivasulu, Y. and Thiyagarajan, S. (2017), “Relationship among service quality, customer satisfaction and customer loyalty: with special reference to wireline telecom sector (DSL service)”, Global Business Review, Vol. 18 No. 4, pp. 1041-1058.

Rajini, G. and Balaji, K. (2017), “Retention of customer loyalty: assessment of factors leading to mobile number portability”, International Journal of Economic Research, Vol. 14 No. 11, pp. 137-144.

Reddy, M.R., Ganesh, S., Rahul, T. and Mann, N. (2014), “Estimation of customer retention for Indian mobile telecommunication sector”, International Journal of Business Information Systems, Vol. 16 No. 3, pp. 233-246.

Reichheld, F.F. and Schefter, P. (2000), “E-loyalty: your secret weapon on the web”, Harvard Business Review, Vol. 78 No. 4, pp. 105-113.

Rice, R.E. and Katz, J.E. (2003), “Comparing internet and mobile phone usage: digital divides of usage, adoption, and dropouts”, Telecommunications Policy, Vol. 27 No. 8, pp. 597-623.

Saroha, R. and Diwan, S.P. (2020), “Development of an empirical framework of customer loyalty in the mobile telecommunications sector”, Journal of Strategic Marketing, Routledge, Vol. 28 No. 8, pp. 659-680.

Shahbaz, H., Li, Y. and Li, W. (2020), “Psychological contract-based consumer repurchase behavior on Social commerce platform: an empirical study”, KSII Transactions on Internet and Information Systems, Vol. 14 No. 5, pp. 2061-2083.

Sharma, B. (2014), “Customers satisfaction in telecom sector in Saudi Arabia: an empirical investigation”, European Scientific Journal, Vol. 10 No. 13, pp. 1857-7881.

Sharma, P., Chen, I.S.N. and Luk, S.T.K. (2012), “Gender and age as moderators in the service evaluation process”, Journal of Services Marketing, Vol. 26 No. 2, pp. 102-114.

Sharma, P., Kong, T.T.C. and Kingshott, R.P.J. (2016), “Internal service quality as a driver of employee satisfaction, commitment and performance: exploring the focal role of employee well-being”, Journal of Service Management, Vol. 27 No. 5, pp. 773-797.

Singh, G. and Slack, N.J. (2020), “New public management and customer perceptions of service quality – a mixed-methods study”, International Journal of Public Administration, pp. 1-15, doi: 10.1080/01900692.2020.1839494.

Singh, G., Slack, N., Sharma, S., Mudaliar, K., Narayan, S., Kaur, R. and Sharma, K.U. (2021), “Antecedents involved in developing fast-food restaurant customer loyalty”, The TQM Journal. doi: 10.1108/TQM-07-2020-0163.

Sirdeshmukh, D., Singh, J. and Sabol, B. (2002), “Consumer trust, value, and loyalty”, Journal of Marketing, Vol. 66 No. 1, pp. 15-37.

Slack, N. and Singh, G. (2020), “The effect of service quality on customer satisfaction and loyalty and the mediating role of customer satisfaction”, The TQM Journal, Vol. 32 No. 3, pp. 543-558.

Slack, N., Singh, G. and Sharma, S. (2020a), “The effect of supermarket service quality dimensions and customer satisfaction on customer loyalty and disloyalty dimensions”, International Journal of Quality and Service Sciences, Vol. 12 No. 3, pp. 297-318.

Slack, N., Singh, G. and Sharma, S. (2020b), “Impact of perceived value on the satisfaction of supermarket customers: developing country perspective”, International Journal of Retail and Distribution Management, Vol. 48 No. 11, pp. 1235-1254.

Soper, D.S. (2021), “A-priori sample size calculator for structural equation models”, available at: https://www.danielsoper.com/statcalc (accessed 25 July 2021).

TRAI. (2019), The Indian Telecom Services Performance Indicators April – June, 2019, New Delhi, available at: https://www.trai.gov.in/release-publication/reports/performance-indicators-reports (accessed 14 October 2020).

Wickramasinghe, V. and De Zoyza, N. (2008), “Gender, age and marital status as predictors of managerial competency needs: empirical evidence from a Sri Lankan telecommunication service provider”, Gender in Management, Vol. 23 No. 5, pp. 337-354.

Wu, X., Zhou, H. and Wu, D. (2012), “Commitment, satisfaction, and customer loyalty: a theoretical explanation of the ‘satisfaction trap’”, Service Industries Journal, Vol. 32 No. 11, pp. 1759-1774.

Yang, S.Q. (2015), “Understanding B2B customer loyalty in the mobile telecommunication industry: a look at dedication and constraint”, Journal of Business and Industrial Marketing, Vol. 30 No. 2, pp. 117-128.

Yousaf, A., Mishra, A. and Bashir, M. (2020), “Brand trust, institutional commitment, and their impact on student loyalty: evidence for higher education in India”, Studies in Higher Education, Vol. 45 No. 4, pp. 878-891.

Zeithaml, V.A., Berry, L.L. and Parasuraman, A. (1996), “The behavioral consequences of service quality”, Journal of Marketing, Vol. 60 No. 2, pp. 31-46.

Zeithaml, V.A., Bitner, M.J. and Gremler, D. (2017), Services Marketing: Integrating Customer Focus Across the Firm, 7th ed., McGraw-Hill Education, New York.

Zhang, X. and Feng, Y. (2009), The Impact of Customer Relationship Marketing Tactics On Customer Loyalty— Within Swedish Mobile Telecommunication Industry, Halmstad University, available at: http://www.diva-portal.org/smash/record.jsf?pid=diva2%3A239882&dswid=-9454 (accessed 13 August 2021).

Zhang, H., Lu, Y., Gupta, S., Zhao, L., Chen, A. and Huang, H. (2014), “Understanding the antecedents of customer loyalty in the Chinese mobile service industry: a push-pull-mooring framework”, International Journal of Mobile Communications, Vol. 12 No. 6, pp. 551-577.

Zubair, A., Kiran, F., Shahzadi, I. and Mahmood, M.A.H. (2019), “How to generate loyalty through service quality”, Indo American Journal of Pharmaceutical Sciences, Vol. 6 No. 1, pp. 652-661.

Further reading

Strenitzerová, M. and Gaňa, J. (2018), “Customer satisfaction and loyalty as a part of customer-based corporate sustainability in the sector of mobile communications services”, Sustainability, Vol. 10 No. 5, p. 1657.

Wang, Y., Lo, H.P. and Yang, Y. (2004), “An integrated framework for service quality, customer value, satisfaction: evidence from China's telecommunication industry”, Information Systems Frontiers, Vol. 6, pp. 325-340.

Acknowledgements

The authors acknowledge the APC voucher provided by Masaryk University, Brno, Czech Republic for open access publishing.

Corresponding author

Prateek Kalia is the corresponding author and can be contacted at: prateek.kalia@econ.muni.cz

About the authors

Dr Prateek Kalia is a Post-Doctoral Researcher at the Department of Corporate Economy, Faculty of Economics and Administration, Masaryk University, Brno, Czech Republic. Earlier, he has worked as the Director and Professor at a leading university in North India. He is a specialist in the field of management with a keen interest in electronic commerce, e-service quality and consumer behavior. His articles are published in leading international journals like Computers in Human Behavior, International Journal of Operations and Production Management, Journal of International Consumer Marketing, etc. He has presented his work at several national and international conferences and received awards and accolades. He holds a copyright for a novel concept in mobile commerce.

Dr Robin Kaushal is currently working as an Assistant Professor at Sri Aurobindo College of Commerce and Management, Ludhiana, affiliated with Panjab University, Chandigarh. She earned her PhD degree from Punjabi University, Patiala, and MCom from Panjab University, Chandigarh, with distinction. She has 12 years of academic experience. She has also cleared the Junior Research Fellowship (JRF) and National Eligibility Test for Lectureship conducted by University Grants Commission. She has also worked as a Senior Research Fellow at Punjabi University, Patiala. She has participated and presented papers at various national and international conferences. She has also been awarded a gold medal from Bangalore University for her research contribution to information technology adoption in the banking sector. Her research interest includes banking, finance, statistics and economics.

Dr Meenu Singla is an Assistant Professor in Sri Aurobindo College of Commerce and Management, Ludhiana affiliated with Panjab University, Chandigarh. She has an experience of more than 14 years in academics. She is a postgraduate in Commerce from Panjab University, Chandigarh. She also has an MPhil and MBA to her credit that supplements her teaching and management skills. She earned her Doctorate in Management from I.K. Gujral Punjab Technical University, Jalandhar. She has also cleared the University Grants Commission-National Eligibility Test for Lectureship. Her research interests include human resource management (HRM) and Operations Research and author of the book also. She has participated and presented papers at various National and International Conferences. She is an active social worker.

Dr Jai Parkash has 13 years of teaching experience and years of Industrial experience too. He is a Postgraduate in Commerce from Guru Nanak Dev University, Amritsar, and earned his Doctorate in Management from I.K. Gujral Punjab Technical University, Jalandhar. His area of interest is Marketing Management and Organizational Behavior. He has participated and presented papers at various national and international conferences. He has also authored one book on service marketing. He is an active social worker and has initiated several extra-curricular activities for students.

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