Litcius/Paper detail

Credit Card Fraud Detection Using Fuzzy Rough Nearest Neighbor and Sequential Minimal Optimization with Logistic Regression

Ameer Hussein, Rihab Salah Khairy, Shaima Miqdad Mohamed Najeeb, Haider TH. Salim ALRikabi

2021International Journal of Interactive Mobile Technologies (iJIM)109 citationsDOIOpen Access PDF

Abstract

<p>The global online communication channel made possible with the internet has increased credit card fraud leading to huge loss of monetary fund in their billions annually for consumers and financial institutions. The fraudsters constantly devise new strategy to perpetrate illegal transactions. As such, innovative detection systems in combating fraud are imperative to curb these losses. This paper presents the combination of multiple classifiers through stacking ensemble technique for credit card fraud detection. The fuzzy-rough nearest neighbor (FRNN) and sequential minimal optimization (SMO) are employed as base classifiers. Their combined prediction becomes data input for the meta-classifier, which is logistic regression (LR) resulting in a final predictive outcome for improved detection. Simulation results compared with seven other algorithms affirms that ensemble model can adequately detect credit card fraud with detection rates of 84.90% and 76.30%.</p>

Topics & Concepts

Credit card fraudCredit cardComputer scienceLogistic regressionClassifier (UML)k-nearest neighbors algorithmFuzzy logicArtificial intelligenceMachine learningData miningPaymentWorld Wide WebImbalanced Data Classification TechniquesRough Sets and Fuzzy LogicData Mining Algorithms and Applications