Loan Frauds in the Indian Banking Industry: A New Approach to Fraud Prevention Using Natural Language Processing (NLP)

IF 2.6 Q2 ECONOMICS
Smita Roy Trivedi, Dipali Krishnakumar, Richa Verma Bajaj
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引用次数: 0

Abstract

Context/Motivation

Non-identification of Early Warning Signals (EWS) or Red Flag Indicators (RFI) on time is an important reason behind the rising trend in credit frauds in the Indian banking industry. Literature suggests that for effective identification of EWS, it is not enough to have a set of EWS but it is essential to rank them and highlight the most important ones to look out for. In the Indian context, there is no ranking of EWS for credit frauds, which is a serious challenge to practicing bankers.

Design/Methodology

This paper therefore ranks the EWS for credit frauds using a novel Natural Language processing (NLP) approach and further analyses the most important EWS impacting frauds.

Findings

This paper finds that the presence of early warning signals from Diversion of Funds, Inter-Group/Concentration of Transactions, Issues in Primary/Collateral Security (COLSEC), makes it very likely that frauds would be in the high-value category.

Originality

First, this is the first Indian study which develops a ranking or scoring of either EWS/RFI on the basis of NLP tools. Secondly, we use a unique methodology for identification of EWS based on NLP techniques, which makes possible the harnessing of a rich source of data, not so far attempted.

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印度银行业的贷款欺诈:利用自然语言处理 (NLP) 预防欺诈的新方法
背景/动机未及时识别早期预警信号(EWS)或红旗指标(RFI)是印度银行业信贷欺诈上升趋势背后的重要原因。文献表明,为了有效地识别EWS,仅拥有一组EWS是不够的,重要的是对它们进行排序并突出显示最重要的EWS。在印度,没有信用欺诈的EWS排名,这对执业银行家来说是一个严重的挑战。设计/方法因此,本文使用一种新颖的自然语言处理(NLP)方法对信用欺诈的EWS进行排名,并进一步分析影响欺诈的最重要的EWS。本文发现,资金转移、集团间/交易集中、初级/担保证券(COLSEC)问题等早期预警信号的存在,使得欺诈行为很可能属于高价值类别。这是印度第一个基于NLP工具对EWS/RFI进行排名或评分的研究。其次,我们使用了一种基于NLP技术的独特方法来识别EWS,这使得利用丰富的数据来源成为可能,迄今为止还没有尝试过。
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来源期刊
CiteScore
3.00
自引率
0.00%
发文量
34
期刊介绍: The current remarkable growth in the Asia-Pacific financial markets is certain to continue. These markets are expected to play a further important role in the world capital markets for investment and risk management. In accordance with this development, Asia-Pacific Financial Markets (formerly Financial Engineering and the Japanese Markets), the official journal of the Japanese Association of Financial Econometrics and Engineering (JAFEE), is expected to provide an international forum for researchers and practitioners in academia, industry, and government, who engage in empirical and/or theoretical research into the financial markets. We invite submission of quality papers on all aspects of finance and financial engineering. Here we interpret the term ''financial engineering'' broadly enough to cover such topics as financial time series, portfolio analysis, global asset allocation, trading strategy for investment, optimization methods, macro monetary economic analysis and pricing models for various financial assets including derivatives We stress that purely theoretical papers, as well as empirical studies that use Asia-Pacific market data, are welcome. Officially cited as: Asia-Pac Financ Markets
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