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The Impact of Perceived Risk and Trust on Adoption of Mobile Money Services: An Empirical Study in Pakistan

  • NOREEN, Misbah (School of Economics, Finance and Banking (SEFB), College of Business (COB), Universiti Utara Malaysia (UUM)) ;
  • GHAZALI, Zahiruddin (School of Economics, Finance and Banking (SEFB), College of Business (COB), Universiti Utara Malaysia (UUM)) ;
  • MIA, Md. Shahin (School of Economics, Finance and Banking (SEFB), College of Business (COB), Universiti Utara Malaysia (UUM))
  • Received : 2021.02.20
  • Accepted : 2021.05.02
  • Published : 2021.06.30

Abstract

In Pakistan, usage of mobile money services is very poor due to several reasons including lack of understanding of services, low financial literacy rate, and fear of losing their hard-earned money. Moreover, the association between perceived risk, perceived trust, and mobile money adoption has not yet been examined comprehensively. Therefore, this study aims to assess the impact of perceived risk and perceived trust on the adoption of mobile money services in Pakistan. This study carried out a cross-sectional survey using a standardized questionnaire to collect primary data from the mobile money users in the Punjab Province, Pakistan. Smart-PLS Algorithm and bootstrapping method were employed to analyze the data. The study found that three dimensions of perceived risk, namely, security risk, privacy risk, and financial risk have a significant impact on adoption of mobile money services in Pakistan. Perceived trust was also found to be a significant factor for mobile money adoption in the country. Moreover, the respondents reported that mobile money services save their time and reduce costs in performing financial transactions. The empirical findings of the study might be useful for the policymakers and service providers in enhancing the usage of mobile money services among financially-excluded segments of society.

Keywords

1. Introduction

Mobile money is an innovative financial service that allows people to execute their financial transactions, like money transfers and bills payment by using means of portable devices such as mobile phones and personal computers (Alhassan, Li, Reddy, & Duppati, 2020). Mobile money is a prominent emerging fintech service where money is stored on a SIM card (subscriber identity module) for financial transactions, as opposed to the account number given by conventional banking (Ndiwalana, Morawczynski, & Popov, 2010). The emergence of mobile money services plays a significant role to provide access to financial services for financially excluded and underprivileged population (Leong & Sung, 2018). Mobile money in developing countries is a new technological innovation in the financial sector, which is likely to bridge the gap between the accessibility of financial services and financially-excluded communities. Furthermore, mobile money enables consumers to transfer funds, make a deposit, and buy a variety of services and goods by using mobile phones and personal computers (Munyegera & Matsumoto, 2016). According to Morawczynski and Pickens (2009), mobile money is primarily used to transfer money among users without additional exchange of goods or services (Morawczynski, 2008, 2009). Furthermore, mobile money creates advantages for the unbanked population by providing financial access (Munyegera & Matsumoto, 2016).

The rapid increase in the ownership and usage of mobile phones in developing countries shows a greater opportunity for underprivileged people to be part of digital services specifically mobile money services (Fischer, Blumenstock, & Khan, 2018). Mobile money services also have the potential to improve the living standard of the deprived people. However, in many countries, mobile money uptake still remains low due to several reasons including lack of awareness about its benefits, financial literacy problems, trust, and risk issues (InterMedia, 2013). Particularly, the customers are more concerned about risk and trust issues that arise from the execution of financial transactions via mobile money services (Arslan, Geçti, & Zengin, 2013; McKnight & Chervany, 2001).

According to Yang, Pang, Liu, Yen, and Tarn (2015) perceived ‘risk’ and perceived ‘trust’ remain a central concern for adoption and usage of digital payment systems (Wismantoro, Himawan, & Widiyatmoko, 2020) via mobile money service. When customers experience any potential losses because of innovative technology usage, that may increase their sensitivity for risk. The generated losses may embrace any adverse effects for customers, like financial loss, privacy breach, performance disappointment, mental distress, or discomfort. Perceived risk is that consumers have doubts, reservations, or potential dangers about the consequence of their purchase decision (Arslan et al., 2013). Perceived risk is typically higher for the product given the distinctive characteristics of a service (Carter, Weerakkody, Phillips, & Dwivedi, 2016; De Kerviler, Demoulin, & Zidda, 2016). A possible obstacle for the adoption of financial services could be the potential of risk exposure to mobile money services. The perceived risk linked with the financial service could be security, privacy, and financial risk. Perceived trust also gained separate attention in technology base financial services because of the high level of ambiguity and domain-related risk (Lafraxo, Hadri, Amhal, & Rossafi, 2018). Perceived trust exhibits the willingness of an individual to take risks in order to fulfill a need without prior experience, credible, or meaningful information (McKnight & Chervany, 2001). The significance of perceived trust in digital financial services has been examined comprehensively by a number of previous studies (Connolly & Bannister, 2007; Fisher, Burstein, Lynch, & Lazarenko, 2008; Howard Chen & Corkindale, 2008; Karthikeyan, 2016; Surucu, Yesilada, & Maslakci, 2020).

The usage of mobile money services is very poor in Pakistan, despite the fact that mobile money services are potentially cheaper, more convenient, and time-saving as compared to the traditional channel (Fischer et al., 2018; Tahar, Riyadh, Sofyani, & Purnomo, 2020). Mobile money could have a great impact on financial inclusion in Pakistan. In 2017, only 8.7% of Pakistani people reported having an account at a financial institution, and nearly 48% of financially excluded adults reported owning a mobile phone (Demirguc-Kunt, Klapper, Singer, Ansar, & Hess, 2018). A number of factors were reported as the potential barriers to adoption of mobile money including lack of understanding of services, low financial literacy rate, and fear of losing their hard-earned money (InterMedia, 2013). Moreover, the virtual nature of technology makes people insecure before commencing their financial transactions (Kironget, 2014). However, there is a research gap in assessing the impact of perceived risk and trust in adoption of mobile money services in Pakistan. In other words, the association between perceived risk, perceived trust, and adoption of mobile money service has rarely been examined. Therefore, the aim of this study is to examine the impact of perceived risk and perceived trust on adoption of mobile money services in Pakistan. To the best knowledge of the researchers, this study is the first academic attempt to provide the empirical evidence on the relationship between perceived trust, perceived risk, and mobile money adoption in Pakistan.

2. Literature Review

Mobile money services mean the use of portable devices to access financial services that were previously been provided by the traditional financial institutes (Mothobi & Grzybowski, 2017). Mobile money services provide the facilities to transfers funds and make payments. Mobile money is also known as “cell phone banking and branchless banking” (Diniz, Birochi, & Pozzebon, 2012). The previous traditional banking channel and other automated banking services such as ATMs and e-banking are not satisfying the users’ financial needs. Innovative technologies provide access and availability of financial services, and Internet connection also contributes greatly to increase the popularity of mobile money services. Mobile money service is an innovative technology service that helps to execute low-cost financial transactions. Mobile money services operate by the intersection of financial and telecommunications, various stakeholders from different fields also take part in the process (Donovan, 2012). Among these stakeholders, mobile money agents or companies that are playing the forefront role in the development of mobile money service, play an integral role adoption of mobile money services.

“Trust” and “risk” are widely believed to play significant roles in the adoption of digital services (Safeena, Kammani, & Date, 2018). This is perhaps because online transactions that are performed via smart devices are subject to hacking, financial loss, and are unclear and risky (Shaikh, Glavee-Geo, & Karjaluoto, 2018). Similarly, perceived trust represents a “desire to be vulnerable based on the positive expectation of a future behavior by another party” (Kim, Wang, & Chen, 2018). Concerning innovative financial services, perceived trust denotes “the belief that technological services will save their time and cost and service providers will protect their hard-earned money and personal information”. An agent delivers financial services to the customer, the trust in the agent plays a great role in consumer’s intention to use mobile money services.

Trust in financial transactions is essential because it can address the fear of losing financial assets, while lack of trust could cause reason to prevent potential users not to engage in innovative financial services particularly mobile money services (Chauhan, 2015). Trust is associated with perceived risk, and lack of trust contributes to increasing the perceived risk (Y. Kim & Peterson, 2017). The risk can be defined as an exposure to a hazard arising from the purchase of a digital financial product or service, like m-banking (Shaikh et al., 2018). In addition, “perceived risk as the amount of risk that unbanked customer observes before using digital financial services particularly mobile money services”. It is difficult to measure the risk objectively; therefore, this study focuses on people’s perception of the risk associated with the digital financial transaction. If the risk is high in any financial transaction, customers may opt out of the transaction or may end up the current exchange of financial products and service (Al-Gahtani, 2011).

Perceived trust and perceived risk are widespread concepts influencing users’ intention for adoption of mobile money services. The administration of money (physical or electronic) would have some advantages for its users. The usage of mobile money services therefore probably brings the benefits and fear of loss as well to users that are either largely deprived or banked. The user’s perception that using digital financial services may expose them to loss of money may also affect the adoption of mobile money services. In addition, mobile money users may also not able to predict the actual outcome accurately or it could be possible that these outcomes could be undesirable (Yang et al., 2015). Furthermore, due to the virtual nature of mobile money services, consumers are not assured that they will receive their cash back when transaction errors occur as it was facilitated in traditional settings.

The theory of planned behavior and theory of reasoned action (Ajzen, 1991) have demonstrated that technology adoption can be determined through “perceived behavioral control, subjective norms, and attitudes”. However, these leading behavioral models rarely address the issues of perceived trust and perceived risk that are the main concern for the adoption of innovative financial services (Yang et al., 2015). Therefore, the current study seeks to bridge that gap by examining customers’ adoption of mobile money services with customers’ perceived trust and perceived risk.

2.1. Research Hypothesis and Model

The research hypothesis and research model were developed based on the review of existing literature and theories. Security risk “refers to threats that may cause the potential to economic hardship, data issues, or network resources issues in the form of damage, leaks, alteration of data, denial of service, fraud, waste or abuse” (Nofer, 2015). In addition, mobile money users also have fear of identity theft, because it is shown that consumers of digital platforms are very vulnerable to theft (Hille, Walsh, & Cleveland, 2015). Moreover, security risks highlighted such as illegal access to the financial account by using the means of false authentication create security issues for users (Nofer, 2015). According to Jang-Jaccard and Nepal (2014) it is the greatest challenge for the digital financial service provider in winning the customers’ trust related to security issues. Thus, based on the evidence this study formulates the following hypothesis:

H1: Security risk has a significant effect on adoption of mobile money services.

Privacy risk is “the possibility of losing the personal information while using the financial products and services” (Akturan & Tezcan, 2012). Customers of mobile money services are concerned about their personal information or fear that may be a third party could hack their personal information while conducting digital financial transactions by using the mean of mobile money service (Aboobucker & Bao, 2018). Privacy is particularly critical as consumers can now connect their mobile money accounts to their bank accounts. These risks have a great impact on electronic banking services (Chau & Ngai, 2010). Based on the above discussion, it was hypothesized:

H2: Privacy risk has a significant effect on adoption of mobile money services.

Financial risk is the assumption that the potential negative effects (danger) of the use of digital goods or services are unknown (Featherman & Pavlou, 2003). Moreover, it is the perception of a user’s potential risk when others know his/her private information (Cox & Rich, 1964; Featherman & Pavlou, 2003; Nyshadham, 2000). When customers experience any potential losses that could be generated because of the uncertainty of using mobile money services, that may increase their perception of risk. The losses may embrace any adverse effects for customers, like a financial loss. Perceived risk is denoted as a critical factor in predicting the adoption of technology. Perceived risk perform a significant role in consumer’s decision to adopt technology (Laforet & Li, 2005; Pavlou, 2003). Therefore, this study developed the following hypothesis:

H3: Financial risk has a significant impact on adoption of mobile money services.

Trust plays a central role in adoption (Tobbin & Kuwornu, 2011) of mobile money services. Trust reflects the positive outcome by customer (Song & Zahedi, 2002), in the form to influence the transaction by using mobile money, while lack of trust place an adverse effect on adoption of mobile money services. According to Gefen, Karahanna, and Straub (2003), in a digital environment, clients make rational assessments to ensure their cash value is harmless. It is also evident that consumers don’t want to waste time in regulating their financial transactions and therefore promote digital trade, which saves their transaction time (Kuisma, Laukkanen, & Hiltunen, 2007). Customers prefer their trustworthy sellers (Pavlou, Liang, & Xue, 2007), which indicates that trust in firms will affect customer intention to adopt mobile money services. Thus, based on the existing literature, the following hypothesis was proposed.

H4: Perceived trust has a significant impact on adoption of mobile money services.

The proposed relationships among the variables in this study can be shown in a graphical format in Figure 1.

Figure 1: The Research Model and Hypotheses

3. Research Methodology

3.1. Survey Design, Sampling Technique, and Data Collection

This study conducted a cross-sectional survey in the Punjab province, Pakistan, to collect the primary data. A structured and standardized questionnaire was used to conduct the survey. The questionnaire for this study contained multiple items measures of perceived risk, perceived trust, and mobile money adoption. The targeted population of the study was the users of mobile money services, i.e., people who either pay or receive cash via mobile money services. Krejcie and Morgan (1970) technique was employed to determine the required sample size for this study. According to this technique, the appropriate sample size is 384 mobile money users in the study area. The study used the “convenience sampling” technique to select the respondents. This technique is easy to use and less expensive for the study area with a very big geographical location. The questionnaires were distributed to the selected respondents and asked them to provide free and fair responses.

3.2. Data Analysis

This study used the partial least squares structural equation modeling (PLS-SEM) approach to analyze the data. Smart PLS 3.0 (Hair, Hult, Ringle, & Sarstedt, 2016) was employed to assess the measurement model and the structural model.

3.3. Measurement of Variables

To measure the constructs of this study, all items were adapted from the existing literature after considering the reliability and validity of specific constructs. Adoption of mobile money service items was adapted from Bongomin, Mpeera Ntayi, and C. Munene (2017); Bongomin and Ntayi (2019). Similarly, items measuring security risk were adapted from Akturan and Tezcan (2012), privacy risk and financial risk from Akturan and Tezcan (2012). The items measuring perceived trust were adapted from G. Kim, Shin, and Lee (2009), Bongomin and Ntayi (2019). All items were measured on a five-point Likert scale (1= strongly disagree, 2 = disagree, 3 = neutral, 4 = agree and 5 = strongly agree).

3.4. Measurement Model

The measurement assessment model is the first step in smart-PLS. This study assessed the measurement model by using three different criteria: reliability, convergent validity, and discriminant validity as recommended by Hair, Sarstedt, Hopkins, and Kuppelwieser (2014). The reliability of the items in this study was assessed by using Cronbach’s alpha and composite reliability. The convergent validity of the constructs was assessed by using the average variance extracted (AVE). Discriminant validity was assessed by the Hetero-Trait and Mono-Trait ratios.

3.5. Structural Model

After assessment of the measurement model, structural models were assessed by using the smart-PLS. PLS Algorithm and bootstrapping approach were used to measure the structural model of the study. The blindfolding process was also used to assess the predictive relevance of the model. Subsequently, path coefficients were used to assess the hypothesis of the study.

4. Results and Discussion

4.1. Assessment of Measurement Model

The findings of the measurement model are presented in Table 1. It can be seen that all constructs have successfully met the required criteria of reliability and validity. Cronbach’s alpha and composite reliability of all constructs are greater than 0.7. In addition, the values of AVE are greater than 0.5. The results suggest that all constructs successfully met the criteria of reliability and convergent validity.

Table 1: Constructs Reliability and Validity

Table 2 shows the findings related to discriminant validity. It is important to note that all constructs met the required criteria of discriminant validity. All values among constructs are lower than 0.95. Hence, it is proved that all constructs have met the reliability and validity criteria.

Table 2: Discriminant Validity (HTMT)

The correlation among the study constructs is presented in Table 3. It can be seen that the correlation value is lower than 0.85 indicating that the variables do not correlate with each other. The findings suggest that the problem of correlation does not exist in this study.

Table 3: Correlation between Constructs

4.2. Assessment of Structural Model

Figure 2 shows the structural path model. The results of the structural model are also presented in Table 4. Four hypotheses of the study show a significant relationship among them.

Figure 2: Structural Model Assessment

Table 4: Assessment of Structural Model

The relationship between security risk and adoption of mobile money was significant (β = 0.244; p = 0.000). The relationship between privacy risk and adoption of mobile money was also significant (β = 0.142; p = 0.013). In addition, the relationship between financial risk and adoption of mobile money services was found to be significant (β = 0.115; p = 0.023). Moreover, the relationship between perceived trust and adoption of mobile money services was also significant (β = 0.270; p = 0.003).

Results of the hypothesis testing are presented in Table 4. Hypothesis H1 was supported, that is, security risk impacts the adoption of mobile money service. The results indicate that in Pakistan the security risk for using mobile money services is low. People perceive mobile money services as a secure way to conduct their financial transactions. Thus, the results of the study were consistent with Hille et al., (2015). Hypothesis H2 also shows a significant relationship among privacy risk and adoption of mobile money. Results show that in Pakistan mobile money services are secure in terms of the private information of mobile money users. Services providers do not disclose the pin code and other personal information of the users.

Hypothesis H3 shows a significant relationship between financial risk and adoption of mobile money. Results of the study indicate that transfer of virtual cash or availing any financial services is secure in Pakistan. There is no financial constraint that exists while using mobile money services in Pakistan. Users find mobile money services secure for the execution of their financial transactions. Hypothesis H4 also shows a significant relationship between perceived trust and adoption of mobile money. Post-usage experience greatly contributes to enhancing the customer trust for the virtual nature of the transaction. Trust in digital services also greatly contributes to reducing the fear of risk for adoption of mobile money services.

5. Conclusion

This study examined the impact of perceived trust and various dimensions of perceived risk on customers’ adoption of mobile money services in Pakistan. The analysis revealed that perceived risk, particularly security risk, privacy risk, and financial risk, have a significant impact on the adoption of mobile money services in the country. The study also found a significant impact of perceived trust on mobile money adoption in Pakistan. Furthermore, the findings of the study confirmed that mobile money service providers in Pakistan work as a safeguard of their customers’ hard-earned money. In addition, mobile money service providers show their highest level of integrity in maintaining the confidentiality of the customers’ personal information as well as mobile money account-related information. On the other hand, customers find mobile money services as a time-savor and cost-effective way for the execution of financial transactions. This study provided empirical evidence on the relationship between perceived trust, perceived risk, and adoption of mobile money services in Pakistan. The findings of the study might be useful for the regulators and policymakers to design and implement policies to enhance the usage of mobile money services for an inclusive financial system to include the far located and unbanked segments of the society.

*Acknowledgements:

The authors of the manuscript would like to thanks the study participants who provided their time and efforts to participate in the survey.

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