A Model Framework to Estimate the Fraud Probability of Acquiring Merchants

abstract: Using historical data from the third-party payment acquiring industry, I develop a statistical model to predict the probability of fraudulent transactions by the merchants. The model consists of two levels of analysis – the first focuses on fraud detection at the store level, and the secon...

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Bibliographic Details
Other Authors: Zhou, Ye (Author)
Format: Doctoral Thesis
Language:Chinese
Published: 2015
Subjects:
Online Access:http://hdl.handle.net/2286/R.I.29798
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spelling ndltd-asu.edu-item-297982018-06-22T03:06:05Z A Model Framework to Estimate the Fraud Probability of Acquiring Merchants abstract: Using historical data from the third-party payment acquiring industry, I develop a statistical model to predict the probability of fraudulent transactions by the merchants. The model consists of two levels of analysis – the first focuses on fraud detection at the store level, and the second focuses on fraud detection at the merchant level by aggregating store level data to the merchant level for merchants with multiple stores. My purpose is to put the model into business operations, helping to identify fraudulent merchants at the time of transactions and thus mitigate the risk exposure of the payment acquiring businesses. The model developed in this study is distinct from existing fraud detection models in three important aspects. First, it predicts the probability of fraud at the merchant level, as opposed to at the transaction level or by the cardholders. Second, it is developed by applying machine learning algorithms and logistical regressions to all the transaction level and merchant level variables collected from real business operations, rather than relying on the experiences and analytical abilities of business experts as in the development of traditional expert systems. Third, instead of using a small sample, I develop and test the model using a huge sample that consists of over 600,000 merchants and 10 million transactions per month. I conclude this study with a discussion of the model’s possible applications in practice as well as its implications for future research. Dissertation/Thesis Zhou, Ye (Author) Chen, Hong (Advisor) Gu, Bin (Advisor) Chao, Xiuli (Committee member) Arizona State University (Publisher) Business Banking fraud detection fraudulent transactions merchant level transaction level chi 69 pages Doctoral Dissertation Business Administration 2015 Doctoral Dissertation http://hdl.handle.net/2286/R.I.29798 http://rightsstatements.org/vocab/InC/1.0/ All Rights Reserved 2015
collection NDLTD
language Chinese
format Doctoral Thesis
sources NDLTD
topic Business
Banking
fraud detection
fraudulent transactions
merchant level
transaction level
spellingShingle Business
Banking
fraud detection
fraudulent transactions
merchant level
transaction level
A Model Framework to Estimate the Fraud Probability of Acquiring Merchants
description abstract: Using historical data from the third-party payment acquiring industry, I develop a statistical model to predict the probability of fraudulent transactions by the merchants. The model consists of two levels of analysis – the first focuses on fraud detection at the store level, and the second focuses on fraud detection at the merchant level by aggregating store level data to the merchant level for merchants with multiple stores. My purpose is to put the model into business operations, helping to identify fraudulent merchants at the time of transactions and thus mitigate the risk exposure of the payment acquiring businesses. The model developed in this study is distinct from existing fraud detection models in three important aspects. First, it predicts the probability of fraud at the merchant level, as opposed to at the transaction level or by the cardholders. Second, it is developed by applying machine learning algorithms and logistical regressions to all the transaction level and merchant level variables collected from real business operations, rather than relying on the experiences and analytical abilities of business experts as in the development of traditional expert systems. Third, instead of using a small sample, I develop and test the model using a huge sample that consists of over 600,000 merchants and 10 million transactions per month. I conclude this study with a discussion of the model’s possible applications in practice as well as its implications for future research. === Dissertation/Thesis === Doctoral Dissertation Business Administration 2015
author2 Zhou, Ye (Author)
author_facet Zhou, Ye (Author)
title A Model Framework to Estimate the Fraud Probability of Acquiring Merchants
title_short A Model Framework to Estimate the Fraud Probability of Acquiring Merchants
title_full A Model Framework to Estimate the Fraud Probability of Acquiring Merchants
title_fullStr A Model Framework to Estimate the Fraud Probability of Acquiring Merchants
title_full_unstemmed A Model Framework to Estimate the Fraud Probability of Acquiring Merchants
title_sort model framework to estimate the fraud probability of acquiring merchants
publishDate 2015
url http://hdl.handle.net/2286/R.I.29798
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