Risks (Mar 2021)

A Machine Learning Approach for Micro-Credit Scoring

  • Apostolos Ampountolas,
  • Titus Nyarko Nde,
  • Paresh Date,
  • Corina Constantinescu

DOI
https://doi.org/10.3390/risks9030050
Journal volume & issue
Vol. 9, no. 3
p. 50

Abstract

Read online

In micro-lending markets, lack of recorded credit history is a significant impediment to assessing individual borrowers’ creditworthiness and therefore deciding fair interest rates. This research compares various machine learning algorithms on real micro-lending data to test their efficacy at classifying borrowers into various credit categories. We demonstrate that off-the-shelf multi-class classifiers such as random forest algorithms can perform this task very well, using readily available data about customers (such as age, occupation, and location). This presents inexpensive and reliable means to micro-lending institutions around the developing world with which to assess creditworthiness in the absence of credit history or central credit databases.

Keywords