Title: A Novel Approach for Credit Card Fraud Detection Using Machine Learning Paradigm
Abstract: The brisk help in online based transactional activities raises the phony cases wherever all throughthe world and makes tremendous disasters the individuals and cash related industry. Credit card fraud isadditionally developing alongside the improvement in innovation. It can likewise be said that financial fraud isradically expanding in the worldwide correspondence improvement. Present day credit card deception is asignificant stress for most by far of the cash related organizations. Online trades become essential, basic andprofitable as a consequence of the formation of credit card. But it makes odds of making transactions fraud bythe fraudster. In order to keep up a vital separation from more fraud, there may be two concept used. One is tofind the fraud, also called fraud identification and other is fraud prevention [1]. In classification of fraudulentand genuine transaction made by credit card holder perhaps one of the best test beds for the machine learningand deep learning algorithm. In fact this task itself consists of challenges like data imbalance, concept drift, andsmall disjuncts etc. In order to tackle the scenario an ensemble based machine learning model, LogisticRegression and support vector machine are designed and identify the fraudulent transaction once transaction isbeing made. The proposed model outperforms from the literature in terms of measure of MCC is 0.894.
Publication Year: 2020
Publication Date: 2020-03-25
Language: en
Type: article
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