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Using Harmony Search Algorithm in Neural Networks to Improve Fraud Detection in Banking System

Sajjad Daliri

2020Computational Intelligence and Neuroscience49 citationsDOIOpen Access PDF

Abstract

Financial fraud is among the main problems undermining the confidence of customers in addition to incurring economic losses to banks and financial institutions. In recent years, along with the proliferation of fraud, financial institutions began looking for ways to find a suitable solution in the fight against fraud. Given the advanced and varied changes in methods of fraud, extensive research has been conducted to detect fraud. In this paper, the Artificial Neural Network technique and Harmony Search Algorithm are used to detect fraud. In the proposed method, hidden patterns between normal and fraudulent customers' information are searched. Given that fraudulent behavior could be detected and stopped before they take place, the results of the proposed system show that it has an acceptable capability in fraud detection.

Topics & Concepts

Harmony searchFinancial fraudArtificial neural networkHarmony (color)Computer scienceAlgorithmFinanceMachine learningBusinessArtificial intelligenceAccountingArtVisual artsImbalanced Data Classification TechniquesStock Market Forecasting MethodsCurrency Recognition and Detection
Using Harmony Search Algorithm in Neural Networks to Improve Fraud Detection in Banking System | Litcius