1School of Mathematics, University of Nairobi
2School of Sciences and Engineering, Daystar University
Journal of Finance and Economics.
2018,
Vol. 6 No. 6, 242-249
DOI: 10.12691/jfe-6-6-6
Copyright © 2018 Science and Education PublishingCite this paper: Davis Bundi Ntwiga, Carolyne Ogutu, Michael Kiura Kirumbu, Patrick Weke. A Hidden Markov Model of Risk Classification among the Low Income Earners.
Journal of Finance and Economics. 2018; 6(6):242-249. doi: 10.12691/jfe-6-6-6.
Correspondence to: Davis Bundi Ntwiga, School of Mathematics, University of Nairobi. Email:
dbundi@uonbi.ac.keAbstract
Low income earners have volatile incomes and most financial providers shun this group of borrowers even though they are motivated in managing the limited resources they have through savings and investments as a means to lower the fluctuations of their income. Peer groupings of the low income earners can assist in pooling the resources they have and improve the group risk mitigation process as group members act like social collateral in credit lending. The study used Kenya Kenya Financial Diaries data of from households to analyze and understand the credit quality levels and credit scores of peer groups versus individuals among men and women. Hidden Markov model classified the low income earners into credit risk profiles wih a view of understanding the role of groups in low income group lending. Peer groups diversify risk inherent in individual borrowers with women only groups having higher credit quality levels as compared to men only groups. Women and their respective peer groups are more stable with less variability as compared to men. Financial technology providers can incorporate the wide array of soft information to lend to low income earners through mobile based peer groups.
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