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Isolation Forest and Local Outlier Factor for Credit Card Fraud Detection System

V. Vijayakumar, N Divya, P. Sarojini, K. Sonika

2020International Journal of Engineering and Advanced Technology29 citationsDOIOpen Access PDF

Abstract

Fraud identification is a crucial issue facing large economic institutions, which has caused due to the rise in credit card payments. This paper brings a new approach for the predictive identification of credit card payment frauds focused on Isolation Forest and Local Outlier Factor. The suggested solution comprises of the corresponding phases: pre-processing of data-sets, training and sorting, convergence of decisions and analysis of tests. In this article, the behavior characteristics of correct and incorrect transactions are to be taught by two kinds of algorithms local outlier factor and isolation forest. To date, several researchers identified different approaches for identifying and growing such frauds. In this paper we suggest analysis of Isolation Forest and Local Outlier Factor algorithms using python and their comprehensive experimental results. Upon evaluating the dataset, we received Isolation Forest with high accuracy compared to Local Outlier Factor Algorithm

Topics & Concepts

Local outlier factorCredit cardOutlierIdentification (biology)Computer scienceRandom forestPaymentAnomaly detectionIsolation (microbiology)Data miningArtificial intelligenceMachine learningMicrobiologyWorld Wide WebBiologyBotanyImbalanced Data Classification TechniquesCurrency Recognition and DetectionAnomaly Detection Techniques and Applications
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