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Deep Learning based Credit Card Fraudulency Detection System

Huge increase in the internet usage has been observed since last decade. It led to the emergence of services like ecommerce, tap and pay systems, online bill payment systems, etc. have proliferated and become more widely used. Due to various online payment options introduced by e- commerce and other...

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Bibliographic Details
Published in:International journal for research in applied science and engineering technology 2024-05, Vol.12 (5), p.477-481
Main Authors: G, Kavyasri, D, Keerthana, B, Keerthi Reddy, K, Keerthi, J, KesavaAditya, Kumar, Prof. S. Ramesh
Format: Article
Language:English
Online Access:Get full text
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Summary:Huge increase in the internet usage has been observed since last decade. It led to the emergence of services like ecommerce, tap and pay systems, online bill payment systems, etc. have proliferated and become more widely used. Due to various online payment options introduced by e- commerce and other numerous websites, the possibility of online fraud has risen drastically. Thus, due to an increase in fraud rates, research on analyzing and detecting fraud in online transactions has begun utilizing various machine learning techniques. The Deep Learning techniques viz., Convolutional Neural Network Architecture is used to detect credit card frauds in the proposed model. The Principal Component Analysis transformation gives a set of numerical input variables as output which are taken as the features to be considered. Due to confidentiality concerns, some of the original characteristics and background information about the data are not entirely disclosed. Features of credit card frauds must be chosen carefully as they play important role when deep learning techniques are used for credit card fraud detection. The TensorFlow and Keras are used for the development of the current proposed model. The proposed model aims to predict credit card frauds with 91.9% accuracy
ISSN:2321-9653
2321-9653
DOI:10.22214/ijraset.2024.61553