Examining Trust and Risk in Mobile Money Acceptance in Uganda
Abstract
:1. Introduction
2. Literature Review
2.1. Mobile Money
2.2. Mobile Money Adoption in East Africa
3. Conceptual Framework and Hypothesis Development
3.1. The Relevance of Trust in Mobile Money
3.2. Meaning of Trust in Mobile Money
3.3. Perceived Risk in Mobile Money
3.4. Self-Efficacy and Mobile Money
3.5. Self-Efficacy and Perceived Risk in Mobile Money
3.6. Performance Expectancy of Mobile Money
3.7. Performance Expectancy and Perceived Risk of Mobile Money
3.8. Trust Belief and Perceived Risk in Mobile Money
3.9. Structural Assurance, Perceived Risk and Behavioral Intention towards Mobile Money
3.10. Performance Expectancy and Trust Belief in Mobile Money
3.11. Behavioral Intention and Trust/Risk Beliefs in Mobile Money
4. Research Methodology
4.1. Design of the Study and Sampling Distribution
4.2. Measurement Development
5. Data Analysis and Results
5.1. Descriptive Statistics
5.2. Analysis of Results
5.3. Measurement Model
5.3.1. Reliability
5.3.2. Validity
5.4. Structural Model
6. Discussion
6.1. Findings
6.2. Theoretical Contribution
6.3. Implications for Research
6.4. Implications for Practice
7. Limitations and Future Research Directions
8. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Construct | Item Code | Survey Statement | Likert Scale | Source |
---|---|---|---|---|
Structural assurance (SA) | SA1 | MM has enough safeguards to make me feel comfortable using it to transact personal business. | Strongly Disagree/Strongly Agree | McKnight et al. [40] |
SA2 | I feel assured of the legal and technological structure of MM to protect me from financial losses. | |||
SA3 | I feel confident that encryption and other technological advances of MM make it safe for me to do business there. | |||
Trust belief (TB) | TB1 | Based on my experience with MM service providers in the past, I know they are honest. | Strongly Disagree/Strongly Agree | Gefen et al. [37] |
TB2 | Based on my experience with MM service providers in the past, I know they care about customers. | |||
TB3 | Based on my experience with MM service providers in the past, I know they are not opportunistic. | |||
Self-efficacy (SE) | SE1 | I could complete a job or task using MM application if there was no one around to tell me what to do. | Strongly Disagree/Strongly Agree | Venkatesh et al. [29] |
SE2 | I could complete a job or task using MM application if I could call someone for help if I got stuck. | |||
SE3 | I could complete a job using MM application if I had a lot of time to complete the task for which the application was provided. | |||
Performance expectancy (PE) | PE1 | Using MM enables me to accomplish tasks more quickly. | Strongly Disagree/Strongly Agree | Venkatesh et al. [29] |
PE2 | Using MM increases my productivity. | |||
PE3 | If I use MM, I will increase my chances of getting a pay rise. | |||
Behavioral intention (BI) | BI1 | I intend to use MM in the next 3 months. | Strongly Disagree/Strongly Agree | Venkatesh et al. [29] |
BI2 | I predict I would use MM in the next 6 months. | |||
BI3 | I plan to use MM in the next 12 months. | |||
Perceived risk (PR) | PR1 | What are the chances that you stand to lose money if you use MM? | Low/high chance | Chen et al. [38]; Featherman and Pavlou [66]; Jacoby and Kaplan [39] |
PR2 | What is the likelihood that there will be something wrong with the performance of MM? | Low/high risk | ||
PR3 | What are the chances that using MM will cause you to lose control over the privacy of your payment information? | Improbable/probable | ||
PR4 | Usage of MM would lead to a psychological loss for me because it would not fit in well with my self-image or self-concept | Improbable/probable | ||
PR5 | What are the chances that using MM will negatively affect the way others think of you? | Low/high risk | ||
PR6 | If you had begun to use MM, what are the chances that you will lose time due to having to switch to a different payment method like using Banks? | Low/high loss | ||
PR7 | On the whole, considering all sorts of factors combined, about how risky would you say it would be to sign up for and use MM? | Not risky at all/very risky |
Measure | Items | Frequency | Percentage |
---|---|---|---|
Gender | Male | 208 | 47.49 |
Female | 230 | 52.51 | |
Age | 18–30 | 276 | 63.01 |
31–40 | 117 | 26.71 | |
41–50 | 40 | 9.13 | |
51–60 | 5 | 1.14 | |
Mobile Money experience | Less than 1 year | 84 | 19.18 |
1–5 years | 273 | 62.33 | |
6–10 years | 77 | 17.58 | |
More than 10 years | 4 | 0.91 | |
MM Service provider preference | Airtel Money | 188 | 42.92 |
Orange Money | 16 | 3.65 | |
MTN Mobile Money | 203 | 46.35 | |
M-Sente | 11 | 2.51 | |
Ezee-Money | 16 | 3.65 | |
M-Cash | 4 | 0.91 | |
Level of Education | Primary School | 34 | 7.76 |
Secondary School | 241 | 55.02 | |
University Degree | 157 | 35.84 | |
Postgraduate (Masters) | 6 | 1.37 |
Constructs | CR | AVE | BI | PE | PR | SA | SE | TB |
---|---|---|---|---|---|---|---|---|
Behavioral Intention (BI) | 0.9130 | 0.7793 | 0.8828 | |||||
Performance Expectancy (PE) | 0.8606 | 0.6737 | 0.3926 | 0.8208 | ||||
Perceived Risk (PR) | 0.7675 | 0.5241 | −0.3009 | −0.2026 | 0.7239 | |||
Structural Assurance (SA) | 0.8713 | 0.6939 | 0.1815 | 0.1470 | −0.1845 | 0.8330 | ||
Self-Efficacy (SE) | 0.7476 | 0.6012 | −0.1269 | −0.2049 | −0.0904 | −0.0987 | 0.7754 | |
Trust Belief (TB) | 0.8629 | 0.7601 | 0.0328 | −0.1047 | −0.2221 | 0.2585 | 0.2449 | 0.8718 |
BI | PE | PR | SA | SE | TB | |
---|---|---|---|---|---|---|
BI1 | 0.9215 | 0.3731 | −0.3150 | 0.2001 | −0.1493 | 0.0924 |
BI2 | 0.9551 | 0.3802 | −0.2820 | 0.1841 | −0.1319 | 0.0240 |
BI3 | 0.7592 | 0.2726 | −0.1782 | 0.0710 | −0.0302 | −0.0601 |
PE1 | 0.2775 | 0.7581 | −0.0930 | 0.1413 | −0.2219 | −0.1805 |
PE2 | 0.2956 | 0.8290 | −0.1563 | 0.1350 | −0.1333 | 0.0200 |
PE3 | 0.3797 | 0.8712 | −0.2331 | 0.0947 | −0.1521 | −0.0883 |
PR1 | −0.1945 | −0.1974 | 0.7016 | −0.2201 | 0.0433 | −0.0486 |
PR2 | −0.2236 | −0.0656 | 0.7479 | −0.1407 | −0.1788 | −0.2548 |
PR7 | −0.2342 | −0.1861 | 0.7216 | −0.0454 | −0.0464 | −0.1660 |
SA1 | 0.0667 | 0.0144 | −0.1718 | 0.7503 | −0.0408 | 0.2962 |
SA2 | 0.1271 | 0.0705 | −0.1725 | 0.8770 | −0.0909 | 0.2248 |
SA3 | 0.2284 | 0.2373 | −0.1295 | 0.8659 | −0.1028 | 0.1607 |
SE1 | −0.1588 | −0.2019 | −0.0163 | −0.1212 | 0.8720 | 0.2363 |
SE2 | −0.0110 | −0.1008 | −0.1556 | −0.0120 | 0.6649 | 0.1281 |
TB1 | 0.0871 | −0.0659 | −0.2474 | 0.2473 | 0.1542 | 0.9402 |
TB2 | −0.0734 | −0.1412 | −0.1088 | 0.1985 | 0.3301 | 0.7976 |
Hypothesis | Path Coefficients () | t Values | Conclusions |
---|---|---|---|
H1. Self-efficacy positively impacts structural assurance. | −0.0987 | 1.4369 | p > 0.05 (Not-supported) |
H2. Self-efficacy negatively impacts perceived risk in mobile money. | −0.0637 | 0.8043 | p > 0.01 (Not-supported) |
H3. Self-efficacy is positively related to Performance expectancy of mobile money. | −0.2001 | 3.5716 | p < 0.05 (Supported) |
H4. Performance expectancy positively impacts behavioral intention to adopt mobile money. | 0.3344 | 7.7119 | p < 0.01 (Supported) |
H5. Perceived risk negatively impacts performance expectancy of mobile money. | −0.2451 | 5.1196 | p < 0.01 (Supported) |
H6. Trust belief will negatively impact perceived risk in mobile money. | −0.1685 | 2.5795 | p < 0.05 (Supported) |
H7. Structural assurance is negatively related to perceived risk in mobile money. | −0.1472 | 2.3377 | p < 0.01 (Supported) |
H8. Structural assurance positively impacts behavioral intention towards mobile money. | 0.0935 | 2.0437 | p < 0.05 (Supported) |
H9. Trust belief is positively related to performance expectancy of mobile money. | −0.1101 | 2.0641 | p < 0.05 (Supported) |
H10. Trust belief positively impacts behavioral intention to adopt mobile money. | −0.0045 | 0.0840 | p > 0.05 (Not-supported) |
H11. Perceived risk is negatively related to behavioral intention to adopt mobile money. | −0.2169 | 4.0926 | p < 0.01 (Supported) |
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Baganzi, R.; Lau, A.K.W. Examining Trust and Risk in Mobile Money Acceptance in Uganda. Sustainability 2017, 9, 2233. https://doi.org/10.3390/su9122233
Baganzi R, Lau AKW. Examining Trust and Risk in Mobile Money Acceptance in Uganda. Sustainability. 2017; 9(12):2233. https://doi.org/10.3390/su9122233
Chicago/Turabian StyleBaganzi, Ronald, and Antonio K. W. Lau. 2017. "Examining Trust and Risk in Mobile Money Acceptance in Uganda" Sustainability 9, no. 12: 2233. https://doi.org/10.3390/su9122233
APA StyleBaganzi, R., & Lau, A. K. W. (2017). Examining Trust and Risk in Mobile Money Acceptance in Uganda. Sustainability, 9(12), 2233. https://doi.org/10.3390/su9122233