Analysis of Possibilities to Automate Detection of Unscrupulous Microfinance Organizations based on Machine learning Methods

Microfinance is a way to fight poverty, and therefore is of high social significance. The microfinance sector in Russia is progressing. However, the engagement of microfinance organizations in illegal financial transactions associated with fraud, illegal creditors, money laundering, significantly li...

Full description

Bibliographic Details
Main Author: Yu. M. Beketnova
Format: Article
Language:Russian
Published: Government of the Russian Federation, Financial University 2020-12-01
Series:Финансы: теория и практика
Subjects:
Online Access:https://financetp.fa.ru/jour/article/view/1090
id doaj-03f3725e8e37458496d6d69581f7c0ae
record_format Article
spelling doaj-03f3725e8e37458496d6d69581f7c0ae2021-07-28T16:22:49ZrusGovernment of the Russian Federation, Financial University Финансы: теория и практика2587-56712587-70892020-12-01246385010.26794/2587-5671-2020-24-6-38-50813Analysis of Possibilities to Automate Detection of Unscrupulous Microfinance Organizations based on Machine learning MethodsYu. M. Beketnova0Financial UniversityMicrofinance is a way to fight poverty, and therefore is of high social significance. The microfinance sector in Russia is progressing. However, the engagement of microfinance organizations in illegal financial transactions associated with fraud, illegal creditors, money laundering, significantly limits their potential and has negative impact on their development. The aim of the paper is to study the possibilities to automate detection of unscrupulous microfinance organizations based on machine learning methods in order to promptly identify and suppress illegal activities by regulatory authorities. The author cites common fraudulent schemes involving microfinance organizations, including a scheme for cashing out maternity capital, a fraudulent lending scheme against real estate. The author carried out a comparative analysis of the results obtained by classification methods — the logistic regression method, decision trees (algorithms of two-class decision forest, Adaboost), support vector machine (algorithm of two-class support vector machine), neural network methods (algorithm of two-class neural network), Bayesian networks (algorithm of two-class Bayes network). The two-class support vector machine provided the most accurate results. The author analysed the data on microfinance institutions published by the Bank of Russia, the MFOs themselves, and banki.ru. The author concludes that the research results can be of further use by the Bank of Russia and Rosfinmonitoring to automate detection of unscrupulous microfinance organizations.https://financetp.fa.ru/jour/article/view/1090microfinance organizationsfinancial monitoringmachine learning methodsclassification algorithms
collection DOAJ
language Russian
format Article
sources DOAJ
author Yu. M. Beketnova
spellingShingle Yu. M. Beketnova
Analysis of Possibilities to Automate Detection of Unscrupulous Microfinance Organizations based on Machine learning Methods
Финансы: теория и практика
microfinance organizations
financial monitoring
machine learning methods
classification algorithms
author_facet Yu. M. Beketnova
author_sort Yu. M. Beketnova
title Analysis of Possibilities to Automate Detection of Unscrupulous Microfinance Organizations based on Machine learning Methods
title_short Analysis of Possibilities to Automate Detection of Unscrupulous Microfinance Organizations based on Machine learning Methods
title_full Analysis of Possibilities to Automate Detection of Unscrupulous Microfinance Organizations based on Machine learning Methods
title_fullStr Analysis of Possibilities to Automate Detection of Unscrupulous Microfinance Organizations based on Machine learning Methods
title_full_unstemmed Analysis of Possibilities to Automate Detection of Unscrupulous Microfinance Organizations based on Machine learning Methods
title_sort analysis of possibilities to automate detection of unscrupulous microfinance organizations based on machine learning methods
publisher Government of the Russian Federation, Financial University
series Финансы: теория и практика
issn 2587-5671
2587-7089
publishDate 2020-12-01
description Microfinance is a way to fight poverty, and therefore is of high social significance. The microfinance sector in Russia is progressing. However, the engagement of microfinance organizations in illegal financial transactions associated with fraud, illegal creditors, money laundering, significantly limits their potential and has negative impact on their development. The aim of the paper is to study the possibilities to automate detection of unscrupulous microfinance organizations based on machine learning methods in order to promptly identify and suppress illegal activities by regulatory authorities. The author cites common fraudulent schemes involving microfinance organizations, including a scheme for cashing out maternity capital, a fraudulent lending scheme against real estate. The author carried out a comparative analysis of the results obtained by classification methods — the logistic regression method, decision trees (algorithms of two-class decision forest, Adaboost), support vector machine (algorithm of two-class support vector machine), neural network methods (algorithm of two-class neural network), Bayesian networks (algorithm of two-class Bayes network). The two-class support vector machine provided the most accurate results. The author analysed the data on microfinance institutions published by the Bank of Russia, the MFOs themselves, and banki.ru. The author concludes that the research results can be of further use by the Bank of Russia and Rosfinmonitoring to automate detection of unscrupulous microfinance organizations.
topic microfinance organizations
financial monitoring
machine learning methods
classification algorithms
url https://financetp.fa.ru/jour/article/view/1090
work_keys_str_mv AT yumbeketnova analysisofpossibilitiestoautomatedetectionofunscrupulousmicrofinanceorganizationsbasedonmachinelearningmethods
_version_ 1721267016559493120