Abstract
In microfinance, with more loans, there is a high risk of increasing overdue loans by overloading the resources available to take actions on the repayment. So, three experiments were conducted to search for a distribution of the loans through the officers available to maximize the probability of recovery. Firstly, the relation between the loan and some characteristics of the officers was analyzed. The results were not that strong with F1 scores between 0 and 0.74, with a lot of variation in the scores of the good predictions. Secondly, the loan is classified as paid/unpaid based on what prediction could result of the analysis of the characteristics of the loan. The Support Vector Machine had potential to be a solution with a F1 score average of 0.625; however, when predicting the unpaid loans, it showed to be random with a score of 0.55. Finally, the experiment focused on segmentation of the overdue loans in different groups, from where it would be possible to know their prioritization. The visualization of three clusters in the data was clear through Principal Component Analysis. To reinforce this good visualization, the final silhouette score was 0.194, which reflects that is a model that can be trusted. This way, an implementation of clustering loans into three groups, and a respective prioritization scale would be the best strategy to organize and assign the loans to maximize recovery.
Funder
Fundação para a Ciência e Tecnologia
Subject
Computer Networks and Communications
Reference23 articles.
1. Allocation of overdue loans in a Sub-Saharan Africa micronance institution;Araújo,2021
2. Bank failure in Nigeria: A consequence of capital inadequacy, lack of transparency and nonperforming loans;Adeyemi;Banks Bank Syst.,2011
3. From Financial Crash to Debt Crisis
4. Determinants of credit risk in the banking system in Sub-Saharan Africa
5. The role of online peer-to-peer lending in crisis response: Evidence from kiva;Yang;ICIS 2016 Proc.,2016
Cited by
1 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献