Theoretical Economics Letters
Vol.09 No.02(2019), Article ID:90689,19 pages
10.4236/tel.2019.92023

Measuring E-Service Quality and Customer Satisfaction with Internet Banking in India

Sindhu Singh

K. J. Somaiya Institute of Management Studies and Research, Mumbai, India

Copyright © 2019 by author(s) and Scientific Research Publishing Inc.

This work is licensed under the Creative Commons Attribution International License (CC BY 4.0).

http://creativecommons.org/licenses/by/4.0/

Received: November 9, 2018; Accepted: February 22, 2019; Published: February 25, 2019

ABSTRACT

The objective of this study is to measure the e-service quality of internet banking and the relationship with customer satisfaction in India. This study aims to explore the critical factors of e-service quality of internet banking in India and to measure the customers’ satisfaction of internet banking on the identified e-service quality dimensions. A survey method was carried out to acquire data from 650 respondents from India. Exploratory and confirmatory factor analysis was used to identify the dimensions of internet banking. Multiple Regression Analysis was used to test the relationship with e-service quality dimensions and customer satisfaction of internet banking. The study uncovered three factors of e-service quality, namely, “Responsiveness,” “Efficiency,” and “Perceived Credibility”. “Responsiveness” found to be the most significant predictor of the e-service quality of internet banking. The study also found that there is a positive relationship exists between e-service quality dimensions and customer satisfaction of internet banking. These findings can be used by banks to improve the service quality of their internet banking service and thereby to satisfy their customers. The findings open up many business opportunities to India as well as other Asian countries. The digital payments industry can concentrate on improving the security of the payment systems, gateways, and payment networks. Advanced technologies can be developed to improve the digital payment systems which offer many business opportunities for creating computers, smartphones, and innovation in internet and security software. The study findings can be used by banks to improve the service quality of internet banking and attract more customers towards using this service. The improvement in service quality comprising of responsiveness, efficiency, and perceived credibility automatically leads to the customer satisfaction of internet banking services, which gives competitive advantages to the banks. This study is an attempt to cover both urban and rural population of India to understand the digital mindset by studying the quality perception of internet banking channel.

Keywords:

Internet Banking, Service Quality, India, Responsiveness, Efficiency

1. Introduction

The Internet and wireless technologies have revolutionized the entire world and transformed business. According to a report by [1] , Internet penetration reached 4.2 billion globally by the end of June 2018, with India (ranked second worldwide), reaching 462 million internet users as of March 2017. Banks are embracing diverse communications technologies through the Internet in order to offer wide-ranging services to their customers to meet customers’ expectations, endure the competitive environment, reduce costs and increase customer convenience. Internet banking experienced tremendous growth in both developed and developing countries and reshaped banking activities. Internet banking allows customers to access banking services online without visiting bank branches. Also known as e-banking or online banking, it uses the Internet as the delivery channel to offer banking products to its customers [2] . Digital payments like internet banking will be part of everyone’s day to day life due to any time any where features and on the go purchasing habits with the surging increase of e-commerce transactions. Besides that, the service-delivery process for internet banking, in which the customer interacts with the bank’s website, is very different from traditional brick-and-mortar service of banking operations [3] [4] [5] . Offering customers the ability to view transaction details, transfer funds, pay utility bills, or shop online [3] [6] , it has transformed the traditional “brick-and-mortar”1 approach into a “click-and-mortar”2 model [8] . ICICI Bank was the first bank to introduce internet banking to India, in 1996 [9] .

As per the report of [10] , 13% of consumer payments contributed by digital payments including internet banking. India is at present into the demonetization stage, and the Government of India is increasing its cashless transactions. In the present scenario, Indian bank customers are compelled to make greater use of digital payment systems. More and more digital payment systems are entering the Indian economy. In order to stay competitive, therefore, it is essential for banks in India to improve the quality of their internet banking systems so that more users will use this channel for their digital transactions. The use of Internet banking in India is more developed in urban areas than in rural areas. Currently, 44% of customers are using internet banking, and it is one of the preferred modes of digital payment [11] . Increased use of Internet banking will enhance customer expectations and perceptions regarding the quality of this new delivery channel. In this regard, it is vital to understand how to measure the service quality of Internet banking in India, as well as customer satisfaction with it. Awareness of how customers perceive service quality is essential to understanding what customers’ value in an online transaction. It is also essential to attracting new customers and retaining existing customers. Limited studies are there in the literature which embraces a rural and urban population of India measuring the service quality dimensions of internet banking. This study aims to identify the e-service quality dimensions and determine their impact on customers’ satisfaction with internet banking. The level of this customer satisfaction, which is influenced by the e-service quality, will play a significant role in determining the continued use of internet banking. The significant theoretical contribution of this study is to identify the service quality dimensions and its relationship with customer satisfaction in Indian banking context by mounting the prior literature in internet banking service quality. The practical contributions of this study will help the banks to improve the service quality of internet banking services, which will increase the satisfaction level and continued use of this service. The quality attributes identified from this study can be used to improve the internet banking products of their banks.

The structure of the paper is as follows. The first section describes the literature review which discusses the e-service quality, e-service quality of internet banking and customer satisfaction. Next, the second section explains the hypotheses development and the third section describes the research methodology used in this paper. The fourth section mentions the findings of this study and the fifth section discusses the theoretical and practical implications of this study. Finally, the limitations and future research directions are discussed.

2. Literature Review

2.1. E-Service Quality

Electronic service quality plays a crucial role in attracting and retaining customers in the business to consumer (B2C) e-commerce environment. [12] Defined e-service quality as “the extent to which a website facilitates efficient and effective shopping, purchasing and delivery of product and services.” [13] Defined e-service quality as “the degree to which an electronic service is able to effectively and efficiently fulfill relevant customer needs.” [14] Defined e-service quality as “the consumer’s evaluation of process and outcome quality of the interaction with a service provider’s electronic channels.” The conventional SERVQUAL scale was initially applied to the online environment to measure e-service quality, which had raised many criticisms [15] [16] . The main difference between the traditional service environment and the e-service environment is the absence of personal interaction between the customers and the employees within an e-service firm which leads to the measurement of e-service quality. The initial studies of e-service quality were more concentrated on website quality than on service quality in the online environment [17] - [23] . [12] developed an e-service quality scale consisting of five dimensions: information availability, ease of use, privacy/security, graphics style, and reliability. [24] conceptualized and constructed a multiple-item scale consisting of seven dimensions for measuring the service quality delivered by websites. These seven dimensions were subdivided into two scales consisting of E-S-QUAL and E-RecS-QUAL. E-S-QUAL [24] is a 22-item scale, with four dimensions: efficiency, system availability, fulfillment and privacy. The E-RecS-QUAL [24] is an eleven-item scale of three dimensions: responsiveness, compensation, and contact, focusing on handling service problems and inquiries.

2.2. E-Service Quality of Internet Banking

Internet banking is one of the narrowly defined e-services in the virtual environment. Internet banking transformed traditional brick-mortar branching services. In the absence of geographical constraints and personal interaction between customers and bank employees, attracting and retaining customers largely depends on the service quality of internet banking.

Prior studies on service quality of internet banking identified various service quality dimensions using various e-service quality scales. Among these studies, some of the researchers used the SERVQUAL scale [25] [26] , WebQual 4.0 scale [27] and some studies used e-SERVQUAL [28] [29] within the internet banking context. Few researchers classified the service quality dimensions of internet banking as customer service quality, banking service product quality and online system quality [30] [31] [32] .

In addition, prior studies identified some of the key dimensions of internet banking service quality as reliability [26] [30] [33] [34] , responsiveness [26] [32] [33] [35] [36] , trust [25] [37] [38] , web interface [25] [38] [39] [40] [41] , efficiency [28] [36] [42] , security [28] [35] , and fulfilment [29] [36] .

The review of the studies mentioned above reveals that the various studies have considered various dimensions and measurement scales. They show that there have been a multiplicity of constructs for measuring e-service quality and those researchers are still grappling over which construct best represent the e-service quality of internet banking. There are very few studies that cover the urban and rural population of India.

2.3. Customer Satisfaction

Satisfaction, according to [43] perspective is “an on-going evaluation of the surprise inherent in a product acquisition and/or consumption experience.” [44] Defined e-satisfaction as “the contentment of the customer with respect to his or her prior purchasing experience with a given electronic-commerce firm.” In their IS research, [45] described user satisfaction as covering “the entire customer experience cycle from information retrieval through purchase, payment, receipt, and service.”

3. Hypotheses Development

Relationship with E-Service Quality and Customer Satisfaction

Existing studies have found that there is a positive relationship between service quality and satisfaction [12] [46] [47] [48] [49] [50] . The positive or negative consumer perceptions of e-service quality of internet banking led to satisfaction (or dissatisfaction) with the internet banking services provided by the banks. Past studies of internet banking empirically proved that the customers’ overall satisfaction with internet banking depends on the quality of internet banking services provided to the customers [26] [42] . Hence, the following hypothesis is proposed:

H1: Internet banking service quality has a positive influence on customer satisfaction with internet banking.

4. Research Methodology

This study uses a cross-sectional design, which involved the collection of information from the sample only once. It uses a quantitative data collection method, employing a structured questionnaire to collect responses from existing bank customers. A survey questionnaire was used to administer data collection for identifying the e-service quality of internet banking and its relationship with customer satisfaction. In this study, the e-service quality of internet banking was measured using the following dimensions: access, web interface, attention and credibility from the [25] scale, which was a modified version of the original SERVQUAL [51] , scale. These dimensions were chosen because they are the dimensions used by past studies to measure the e-service quality of internet banking [2] [26] [28] [29] [33] [34] [35] [36] [38] [40] [41] [42] . Dimension access refers to empowering “customers to utilize the service through some points of entry and the ability to carry out a wide range of transactions.” The web interface is “maintenance of a website that enhances the overall browsing experience of customers.” Attention is the “provision of accurate, personalized service to customers.” Credibility refers to “delivering the promised service to customers at all times.” Variable customer satisfaction is measured using five items adapted from [52] . A total of 19 items were used to capture respondent views about e-service quality and their satisfaction with internet banking. The present study uses a 7-point Likert scale from 1 - 7, where 1 = strongly disagree and 7 = strongly agree since it is easy to specify the intended meanings of points with words and maximizes reliability and validity [53] for collecting the response from bank customers. The adapted scales were reworded to fit the need for the current study. These scales had shown reliability and validity in the studies from which they were adopted. Reliability and validity tests were conducted to verify the suitability of the adapted scales used in the present study. Cronbach Alpha was used to calculate the reliability of the constructs used in this study and only items having a Cronbach Alpha value of 0.7 or more were used [54] . Content validity had been ensured by adapting the constructs from prior validated studies based on well-accepted theoretical models. Construct validity was established through exploratory factor analysis. The questionnaire was shown to academicians in the IS and marketing fields, as well as practitioners to test the initial instrument for measurability, context and respondent’s perceptions of the topic of the current study. The questionnaire was pre-tested by collecting responses from five internet banking consumers and five non-internet banking consumers to check the wording, sequencing, and completeness. Based on the feedback from respondents, the sequencing of the questionnaire was modified, ambiguous questions were deleted, and some of the wording was changed as needed. The feedback received from both groups is incorporated into the questionnaire to improve its clarity, relevance, and consistency and the questionnaire was revised after pre-testing.

The target population identified for this study was the bank customers who have operational bank accounts from various public, private, co-operative and foreign banks in India. The population group of bank centers was classified as rural, semi-urban, urban and metropolitan, based on the population of the centers was available in the 2001 census of India. This research study used convenience sampling, a non-probability sampling method, as the choice for selecting the respondents to collect the sample elements. Convenience sampling was chosen as a method of collecting responses from the survey questionnaire because of the unavailability of the total banking customer list and the expense and time required to collect responses from every bank customer. The choice of respondents was particular, limited to computer literate individuals who use internet banking. A total of 1000 questionnaires were distributed, using a combination of the self-administered method and by sending e-mail through personal contacts. Seven hundred completed questionnaires were collected from bank customers, of whom 650 were usable, for a response rate of 65%. When the sample size becomes larger, it assures the confidence with which the estimates of the population can be obtained. In multivariate techniques like multiple regression analysis, the sample size should be at least ten times larger than the number of variables being considered [54] . The minimum sample size required for SEM (Structural Equation Model) analysis is 200 [54] . Hence, the sample size was considered robust by [55] , as cited by [56] .

The survey-based research is liable to common method variance where respondents fill out the survey questionnaire themselves [57] . Harman’s single-factor test was conducted to examine the common method bias. An exploratory factor analysis was conducted with all the items of the measured constructs, and the results showed that more than one factor with eigen value greater than one was extracted and no single factor accounted major variance. Hence, common method bias was not a concern in this study.

The primary data collected from the questionnaire were tabulated and analyzed using SPSS (Statistical Package for Social Sciences) version 16.0. A reliability test was conducted using Cronbach Alpha to assess the internal consistency of the scales. The validity of the measures was conducted using exploratory and confirmatory factor analysis. Multiple regression analysis was used to measure the relationship between service quality dimensions and customer satisfaction. Confirmatory factor analysis using AMOS (Analysis of Moment Structures), version 16.0, was used to confirm the factor structure of the e-service quality dimensions of internet banking.

5. Findings

The demographic profile of the respondents (Table 1) includes gender, age, education, profession, and income. Of the total of 650 internet banking user respondents, the majority (72%) were male, consistent with the earlier findings of internet banking usage [58] [59] . The majority of the respondents (64.2%) were in the younger age group, between 20 to 29 years, indicating that adoption of innovative technologies like internet banking is more common among the younger population, which is consistent with past studies [60] . The majority of the respondents’ educational qualifications were graduate (52%), followed by post-graduate (34.77%). This findings indicates that more educated people are more willing or able to use internet banking. The annual income of the majority of respondents falls between Rs. 1 lakh and Rs. 8 lakhs (43.85%), whereas the highest annual incomes, i.e., Rs. 50 lakh and above, were reported by 1.23% of the respondents.

Among the respondents who are internet banking users (N = 650), 38.3% use internet banking very often for their banking services (Table 2). The next highest frequency of usage is 37.1%, who sometimes use internet banking for their banking services. The lowest usage percent age category is those who have an internet banking account but never use it (5.5%). The results indicate that frequency of usage of internet banking is high in India, with customers preferring it as a convenient option enabling them to bank anytime and anywhere.

The descriptive statistics of the variables are presented in Table 3. The results show that the mean rating of all the variables were in the range of 5.17 and 5.88. Respondents rated all items above the neutral point 4 [54] .

The multi-item scale is tested for reliability and validity. Exploratory factor analysis is conducted using principal component analysis as the extraction method and varimax as the rotation method to test the construct validity of the e-service quality scale.

The KMO and Barlett’s test for the sphericity of internet banking service quality and satisfaction scale (Table 4) shows that the KMO value obtained is 0.917 indicates superb [61] verified the sampling adequacy of the analysis. Barlett’s Test of sphericity χ2 (105) = 4639.275, p = 0.000 (<0.05) indicates that the correlation matrix is not an identity matrix and the factor analysis is appropriate. The criteria to accept items are factor loadings greater than 0.5 [54] . A three-factor solution is found, accounting for a combined percent of 61.92 percent of the total variance explained.

The original scale adapted for the present study [25] did not factor out to the same dimensions. Some similarities and differences exist between the new factors and the original dimensions. The new factors emerged, and the factor loadings of each factor are provided in the following table (Table 5).

Table 1. Demographic profile of the respondents.

Table 2. Frequency of internet banking usage.

Factor 1 is labeled “responsiveness,” which includes support expected by the customer from the bank. The reliability statistic using Cronbach’s Alpha obtained is 0.819, which is above the accepted value of 0.7. Factor 2 is labeled “perceived credibility,” which covers the security aspects of internet banking. The reliability statistic, obtained using Cronbach’s Alpha, is 0.836, which is above the

Table 3. Descriptive statistics of variables.

Table 4. KMOand Bartlett’s Test of Internet Banking Service Quality and Satisfaction Scale.

accepted value of 0.7 and above. Factor 3 is labeled “efficiency,” which encompasses the convenience and competence of internet banking. The reliability statistic using Cronbach’s Alpha is 0.843 which is above the accepted value of 0.70 and above.

The dimensionality of the e-service quality of internet banking scale obtained through exploratory factor analysis was examined using confirmatory factor analysis. Confirmatory factor analysis (CFA) was conducted to examine whether the measurement items of e-service quality of internet banking loaded by the pattern revealed in the exploratory factor analysis. The structural equation modeling (SEM) method using AMOS 16.0 is used to conduct the CFA. The CFA, also known as the measurement model, is used to assess the overall validity of

Table 5. Factor loadings.

the measures, to check whether the three-factor e-service quality fits the data set. Using CFA, the measurement model is assessed for unidimensionality, reliability, and validity. The measurement model consists of three factors: responsiveness, efficiency and perceived credibility. These factors are measured using 14 measurement items (indicators), which are derived from the exploratory factor analysis. The fit of the measurement model is assessed using eight common model-fit measures: χ2/df, the goodness-of-fit index (GFI), the adjusted goodness-of-fit index (AGFI),the root mean square residual (RMR), the normed-fit index (NFI), the non-normed fit index (NNFI), known as the Tucker-Lewis index (TLI), the comparative fit index (CFI), and the root mean square error of approximation (RMSEA). The model fit-indices are presented in Table 6.

The results of the CFA obtained in Table 6 show that the chi-square is statistically significant (χ2 = 148.779, df = 67, p < 0.001, χ2/df = 2.221), that is, below the cut-off point of 3 [62] . The GFI and AGFI (0.969 and 0.951) exceed the recommended cut-off point of 0.95 and 0.90, respectively, which indicates well-fitting models [63] . The root-mean-square residual (RMR) represents the square root of the difference between the residuals of the sample covariance matrix and the hypothesized covariance model. The values of the RMR range from 0 to 1 and the well-fitting models have RMR less than 0.05 [64] . The RMR value (Table 6) is 0.044, which is less than 0.05, showing that the measurement model fits well. The value obtained for NFI and NNFI is 0.967 and 0.975 (Table 6), respectively, which exceeds the cut-off point. The comparative fit index (CFI) is the most popular fit index in SEM and a value of CFI ≥ 0.95 is considered to be indicative of good fit [62] . The CFI value obtained is 0.981 (Table 6) which is above the cut-off point, indicating that the measurement model is a good fit. The root mean square error of approximation (RMSEA) with a cut-off value close to

Table 6. Fit Indices of the Measurement Model of E-Service Quality Dimensions of Internet Banking.

0.06 [62] or a stringent upper limit of 0.07 shows a good fit [64] , and from the Table 6 the RMSEA obtained is 0.043 proves that the measurement model has a good fit of the sample data.

The model fit indices in Table 6 exceeded the common acceptance level of the fit statistics. Hence, it is confirmed that the measurement model adequately fit the data and established the three-factor structure of the e-service quality of internet banking.

After establishing the fit of the measurement model, the next step is to assess the unidimensionality of the three factors and establish the reliability and validity of a three-factor e-service quality of internet banking model. The factors (constructs) having unidimensionality with the measurement items load significantly on the underlying constructs. All the measurement items (indicators) have a significant load on their underlying constructs (p < 0.01) with factor loadings varying between 0.611 and 0.862 (Table 7). The unstandardized regression weights are significant from the critical ratio (CR) values above ± 1.96 (Table 7). The unidimensionality is thus established [64] . The reliability of the e-service quality dimensions is assessed by computing the composite reliability (CR) of each of the latent constructs (factors). The recommended value for the composite reliability coefficient is above 0.70 [54] . The composite reliability obtained for the three factors of e-service quality, namely, responsiveness, efficiency, and perceived credibility are 0.73, 0.79 and 0.77, respectively (Table 7). The average variance extracted (AVE) is a complementary measure to the composite reliability, reflecting the overall amount of variance in the indicators accounted for by the latent construct [54] . The AVE value of a construct should exceed 0.50 [54] , nd from Table 7, it is apparent that the AVE obtained for the construct’s responsiveness (0.52), efficiency (0.57) and perceived credibility (0.51) exceed the cut-off point of 0.50.

The validity of the measurement model is established by estimating the convergent validity and discriminant validity. The convergent validity of the measurement model is estimated using the composite reliability of each construct and

Table 7. Confirmatory factor analysis (CFA) results of e-service quality of internet banking.

***Significant at p < 0.01 level; *Unstandardised regression weights assumed as 1.

the average variance extracted by each construct. From the Table 7, it is found that the composite reliability of all three constructs was above the recommended value of 0.70 and the average variance extracted of all the three constructs exceeded the cut-off point of 0.50 [65] . The convergent validity is there by established for the three-factor structure of e-service quality of internet banking. The discriminant validity can be assessed by comparing the shared variance between the constructs and the average variance extracted from the individual constructs [65] . The CFA results reveal that the shared variance between the factors was lower than the average variance extracted from the individual factors. The discriminant validity is thus established.

Relationship with E-Service Quality and Customer Satisfaction

The e-service quality of internet banking is perceived to be an antecedent of customer satisfaction with internet banking. This study identified the e-service quality dimensions of internet banking comprising of responsiveness, efficiency and perceived credibility. Multiple regression analysis is performed to test the relationship between e-service quality dimensions and customer satisfaction with internet banking. The result is presented in the following table (Table 8).

It can be observed from Table 8 that the model is significant (F-value = 408.018, p = 0.000) since the p-value is less than 0.01. The R2 value is 0.655, which means that all the independent variables together explained 65.5 % of the

Table 8. Multiple regression analysis with customer satisfaction with internet banking as dependent variable.

**Significant (p < 0.01).

variation in the dependent variable customer satisfaction with internet banking. It is evident that multicollinearity is not found between the independent variables, with all VIF scores less than 2 and well below the cut-off of VIF = 10 [61] . From Table 8, it can be seen that responsiveness (β = 0.386, t = 12.694, p = 0.000), efficiency (β = 0.286, t = 9.566, p = 0.000) and perceived credibility (β = 0.282, t = 9.144, p = 0.000) are statistically significant at 99% confidence level, as their p-values are less than 0.01. The responsiveness dimension has the highest impact on customer satisfaction since the standardized beta coefficient of responsiveness shown in Table 8 has the highest value, followed by efficiency and perceived credibility.

6. Discussion

The internet banking quality dimensions that emerged from the current study did not factor out the original dimensions adopted by [25] , except for the perceived credibility dimension. Three new factors resulted from the research data analyzed in the present study. The results confirm that responsiveness, efficiency and perceived credibility are distinct dimensions of service quality in internet banking in India. These dimensions are consistent with the past e-service quality dimensions [12] [24] [32] and also consistent with past internet banking e-service quality studies [2] [25] [28] [29] [35] [36] [41] .

The study also found that there is a positive relationship exists between e-service quality dimensions and customer satisfaction with internet banking. This result is consistent with prior research that explored the relationship between e-service quality and customer satisfaction [27] [28] [31] [34] [42] . All three dimensions have a significant positive impact on customer satisfaction. The three dimensions together explained 65.5% variance to customer satisfaction with internet banking. Among the dimensions, responsiveness has the most substantial impact, followed by efficiency and perceived credibility. Internet banking customers ranked responsiveness as the highest since customers interact with the bank in an online environment, where they are exposed to many fraudulent activities. Customers expect their banks to handle such situations and get prompt customer service during banking hours, as well as post-transactions. The second most important dimension is efficiency since customers expect their banks’ technical expertise to conduct internet banking. This finding implies that banks should improve the service quality of internet banking with a secured website, easy to follow instructions, user-friendly interface and prompt response to the customers. Perceived credibility dimension is ranked as the third, by Indian banking customers who show the confidence they feel about their bank about internet banking. The improvement in service quality comprising of responsiveness, efficiency and perceived credibility automatically leads to customer satisfaction with internet banking services, which gives competitive advantages to the banks.

In the online environment, the customer expects an accurate response and personalized attention during and following internet banking transactions. It is imperative to give accurate, friendly and helpful customer service to internet banking users. The banking operations carried through internet banking might vary for individual customers, depending on their needs. Internet banking at present primarily facilitates traditional banking operations. Banks need to provide more comprehensive range of services through internet banking to attract more customers to use internet banking.

The internet banking website plays a crucial role in measuring the service quality of electronic banking. The customer expects a banking website to be available 24/7. The visual layout and the up-to-date information provided at the website plays a significant role in the quality of electronic banking. Banks need to understand the importance of a good website for the success of internet banking and need to concentrate on the technical functionalities of an e-banking website. Moreover, it is significant for the banks to strengthen the security measures of internet banking continuously. It is also crucial for banks to pay more attention to consumer education and consistently inform customers about security measures and policies about internet banking operations.

The findings of this study are crucial for India as well as for other Asian countries. India is at present moving towards demonetization and a cashless economy. Internet banking was optional for customers before demonetization, but the Government of India is now insisting that every bank link customer account to internet banking in order to be able to offer government services and other subsidies. The service quality dimensions identified in this study were the most important factors identified by the Indian banking customers. Moreover, the survey respondents were from all parts of India, rather than a specified city or state.

To sum up, these respondents represents both rural and urban population of India. As a result, these findings can be used by banks to improve the service quality of their internet banking service and thereby to satisfy their customers. The findings open up many business opportunities to India as well as other Asian countries. The digital payments industry can concentrate on improving the security of the payment systems, gateways, and payment networks. Advanced technologies can be developed to improve the digital payment systems which offer many business opportunities for creating computers, smartphones, and innovation in internet and security software. These findings are distinct compared with other studies, which concentrated on certain cities of India [66] and this study can be used as a guiding force for the digital payment industry after demonetization.

7. Conclusions

The objective of this study was to identify the critical dimensions of the e-service quality of internet banking as perceived by Indian banking customers and their satisfaction with internet banking. The study found a three-factor solution to the e-service quality of internet banking. The results suggest that responsiveness, efficiency and perceived credibility significantly influenced overall service quality. The most significant predictor identified is responsiveness. The study also established a positive relationship between e-service quality dimensions and customer satisfaction. The findings provide practical information useful for improving the service quality of internet banking. Commercial banks and financial institution should implement best practices in the industry in order to strengthen customers’ confidence in using internet banking services.

It remains to highlight the limitations of the present study and their implications for future research. One limitation of this study is that the sampling method used is convenience sampling, which limits the study’s generalizability. Another limitation is that there is a possibility that it has not captured all e-service quality dimensions. Future research can explore otherservice quality dimensions and their applicability toother technology-enabled banking services. Another potential future research area would be measuring the automated service quality and satisfaction of the self-service technologies offered by the banks.

Conflicts of Interest

The author declares no conflicts of interest regarding the publication of this paper.

Cite this paper

Singh, S. (2019) Measuring E-Service Quality and Customer Satisfaction with Internet Banking in India. Theoretical Economics Letters, 9, 308-326. https://doi.org/10.4236/tel.2019.92023

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NOTES

1The expression “brick and mortar” is defined as “based on a physical store where the vendor interacts with the customer” [7] .

2The expression “click and mortar” refers to a scenario in which both online and offline operations, i.e., both a website and a physical store (Wikipedia).