Financial Inclusion in Emerging Economies: The Application of Machine Learning and Artificial Intelligence in Credit Risk Assessment
Abstract
:1. Introduction
2. Background of Financial Inclusion
2.1. AI, Machine Learning, a Brief Overview
2.2. The Theories of Financial Inclusion and Credit Risk Analysis a Brief Review-Information Asymmetry and Credit Risk
2.3. The Adverse Selection Theory
2.4. Moral Hazard Theory
2.5. Empirical Literature Review
3. Methodology
3.1. Discussion of the Findings on Application of Machine Learning and AI in Credit Risk Assessments
3.2. AI, Machine Learning, and Asymmetric Information and Credit Risk Assessments
3.3. How Does AI Help to Solve the Problem of Information Asymmetry?
3.4. AI, Machine Learning and Adverse Selection
3.5. AI, Machine Learning and Moral Hazard
4. Conclusions and Policy Recommendations
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Impact of Artificial Intelligence and Machine Learning | Brief Description |
---|---|
AI, Machine Learning, and Asymmetric Information and Credit Risk Assessments | The first way in which AI can help to solve the problem of information asymmetry is through signalling and the use of big data and deep learning. One example given by Marwala and Hurwitz (2015) was the issue of social networks which are powered by AI to an extent that they can signal information in a much more accurate fashion than what a human agent can do. In this way, it is believed that AI can help to solve the problem of information asymmetry in many circumstances including the credit market |
AI, Machine Learning and Adverse Selection | Information asymmetry in the credit market generates two problems, adverse selection, and moral hazard (Moloi and Marwala 2020a; Tfaily 2017). Moloi and Marwala (2020b) argued that the era of intense automation and digitization powered by AI can push economic agents to a form of some peculiar relationships which include the sharing of certain information that will help in opening the opportunities to harvest and store big data that can be used by economic agents such as banks to do effective credit analysis of the individuals seeking credit. Using AI economic agents can build, link, and analyses the big new data sets which are difficult for human beings. In a way, the problem of adverse selection will greatly be reduced. |
AI, Machine Learning and Moral Hazard | The existence of ex-post information asymmetry in a contract generates moral hazard especially after signing the contract. This problem arises due to the inability of agents to be able to observe the actions of other agents. Moloi and Marwala (2020c) stated that the coming of AI will be able to reduce the problems associated with moral hazard because with AI there is no need to depend more on economic agents to be fair by disclosing material information. At the same time, it was highlighted that there is also no need to come up with innovative ways to persuade economic agents through incentives to disclose material information or using threats of penalties for them to disclose important information. As a result, AI presents a better way to harvest information about the borrower helping lenders to address the problem of moral hazard. |
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Mhlanga, D. Financial Inclusion in Emerging Economies: The Application of Machine Learning and Artificial Intelligence in Credit Risk Assessment. Int. J. Financial Stud. 2021, 9, 39. https://doi.org/10.3390/ijfs9030039
Mhlanga D. Financial Inclusion in Emerging Economies: The Application of Machine Learning and Artificial Intelligence in Credit Risk Assessment. International Journal of Financial Studies. 2021; 9(3):39. https://doi.org/10.3390/ijfs9030039
Chicago/Turabian StyleMhlanga, David. 2021. "Financial Inclusion in Emerging Economies: The Application of Machine Learning and Artificial Intelligence in Credit Risk Assessment" International Journal of Financial Studies 9, no. 3: 39. https://doi.org/10.3390/ijfs9030039
APA StyleMhlanga, D. (2021). Financial Inclusion in Emerging Economies: The Application of Machine Learning and Artificial Intelligence in Credit Risk Assessment. International Journal of Financial Studies, 9(3), 39. https://doi.org/10.3390/ijfs9030039