.

ISSN 2063-5346
For urgent queries please contact : +918130348310

IMPROVED ACCURACY FOR CREDIT CARD FRAUD DETECTION USING PIPELINING AND ENSEMBLE LEARNING METHODS LOGISTIC REGRESSION COMPARED WITH NAIVE BAYES ALGORITHM

Main Article Content

CH. Kiran Kumar, S.S. Arumugam
» doi: 10.31838/ecb/2023.12.sa1.477

Abstract

Aim: The goal of this study is to provide an improved accuracy for credit card fraud detection using pipelining and ensemble learning methods in logistic regression compared with naive bayes algorithm to detect credit card fraud and comparing their accuracy. Materials and Methods: The sample size for logistic regression (N=10) and for naive bayes algorithm (N=10) was iterated 20 times to predict credit card fraud. Results: logistic regression has significantly better accuracy (98.2%) compared to naive bayes accuracy (92%)The statistical significance difference 0.00 (p<0.05 independent sample test) value states that the results in the study are significant. Conclusion: The results depicted that logistic regression provides good results in detection of credit card fraud over naive bayes.

Article Details