An Analysis of the Most Used Machine Learning Algorithms for Online Fraud Detection
Today illegal activities regarding online financial transactions have become increasingly complex and borderless, resulting in huge financial losses for both sides, customers and organizations. Many techniques have been proposed to fraud prevention and detection in the online environment. However, a...
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doaj-680f4d60ae8a482fb0510f85f52fa2e62020-11-25T02:28:07ZengInforec AssociationInformatică economică1453-13051842-80882019-01-0123151610.12948/issn14531305/23.1.2019.01An Analysis of the Most Used Machine Learning Algorithms for Online Fraud DetectionElena-Adriana MINASTIREANUGabriela MESNITAToday illegal activities regarding online financial transactions have become increasingly complex and borderless, resulting in huge financial losses for both sides, customers and organizations. Many techniques have been proposed to fraud prevention and detection in the online environment. However, all of these techniques besides having the same goal of identifying and combating fraudulent online transactions, they come with their own characteristics, advantages and disadvantages. In this context, this paper reviews the existing research done in fraud detection with the aim of identifying algorithms used and analyze each of these algorithms based on certain criteria. To analyze the research studies in the field of fraud detection, the systematic quantitative literature review methodology was applied. Based on the most called machine-learning algorithms in scientific articles and their characteristics, a hierarchical typology is made. Therefore, our paper highlights, in a new way, the most suitable techniques for detecting fraud by combining three selection criteria: accuracy, coverage and costs.http://revistaie.ase.ro/content/89/01%20-%20minastireanu,%20mesnita.pdfBank fraudDetection algorithmsMachine-Learning algorithmsOnline transactions |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Elena-Adriana MINASTIREANU Gabriela MESNITA |
spellingShingle |
Elena-Adriana MINASTIREANU Gabriela MESNITA An Analysis of the Most Used Machine Learning Algorithms for Online Fraud Detection Informatică economică Bank fraud Detection algorithms Machine-Learning algorithms Online transactions |
author_facet |
Elena-Adriana MINASTIREANU Gabriela MESNITA |
author_sort |
Elena-Adriana MINASTIREANU |
title |
An Analysis of the Most Used Machine Learning Algorithms for Online Fraud Detection |
title_short |
An Analysis of the Most Used Machine Learning Algorithms for Online Fraud Detection |
title_full |
An Analysis of the Most Used Machine Learning Algorithms for Online Fraud Detection |
title_fullStr |
An Analysis of the Most Used Machine Learning Algorithms for Online Fraud Detection |
title_full_unstemmed |
An Analysis of the Most Used Machine Learning Algorithms for Online Fraud Detection |
title_sort |
analysis of the most used machine learning algorithms for online fraud detection |
publisher |
Inforec Association |
series |
Informatică economică |
issn |
1453-1305 1842-8088 |
publishDate |
2019-01-01 |
description |
Today illegal activities regarding online financial transactions have become increasingly complex and borderless, resulting in huge financial losses for both sides, customers and organizations. Many techniques have been proposed to fraud prevention and detection in the online environment. However, all of these techniques besides having the same goal of identifying and combating fraudulent online transactions, they come with their own characteristics, advantages and disadvantages. In this context, this paper reviews the existing research done in fraud detection with the aim of identifying algorithms used and analyze each of these algorithms based on certain criteria. To analyze the research studies in the field of fraud detection, the systematic quantitative literature review methodology was applied. Based on the most called machine-learning algorithms in scientific articles and their characteristics, a hierarchical typology is made. Therefore, our paper highlights, in a new way, the most suitable techniques for detecting fraud by combining three selection criteria: accuracy, coverage and costs. |
topic |
Bank fraud Detection algorithms Machine-Learning algorithms Online transactions |
url |
http://revistaie.ase.ro/content/89/01%20-%20minastireanu,%20mesnita.pdf |
work_keys_str_mv |
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