DOIONLINE

DOIONLINE NO - IJAECS-IRAJ-DOIONLINE-19326

Publish In
International Journal of Advances in Electronics and Computer Science-IJAECS
Journal Home
Volume Issue
Issue
Volume-9,Issue-12  ( Dec, 2022 )
Paper Title
Credit Card Fraud Detection with Data Mining and Machine Learning Approach
Author Name
Rushikesh Basavant Kolte, Krishnakumar Gautam Rathod, Sujeet More
Affilition
1,2BE Student, Department of Information Technology TCOER, Pune, India 3Assistant Professor, Department of Information Technology, TCOER, Pune, India
Pages
11-13
Abstract
Abstract - Nowaday’s online payment gaining popularity because of easy and convenience use of ecommerce. It became very easy mode of payment. People choose online payment and e-shopping; because of time convenience, transport convenience, etc. As the result of huge amount of e-commerce use, there is a vast increment in credit card fraud also. Machine Learning has been successfully applied to finance databases to automate analysis of huge volumes of complex data. Machine Learning has also played a salient role in the detection of credit card fraud in online transactions. Fraud detection in credit card is a big problem, it becomes challenging due to two major reasons–first, the profiles of normal and fraudulent behaviours change frequently and secondly due to reason that credit card fraud data sets are highly skewed. This paper research and checks the performance of Random Forest on highly skewed credit card fraud data. Dataset of credit card transactions is sourced from European cardholders containing 1 lakh transactions. These techniques are applied on the raw and pre-processed data. The performance of the techniques is evaluated based on accuracy, sensitivity, and specificity, precision. Keywords - Data Analysis, Fraud in Credit Card, Decision Tree, Random Forest, Machine Learning, Security
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