Cyber Defense in the Age of Artificial Intelligence and Machine Learning for Financial Fraud Detection Application

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Abstract

Cyber security comes with a combination of various security policies, AI techniques, network technologies that work together to protect various computing resources like computing networks, intelligent programs, and sensitive data from attacks. Nowadays, the shift to digital freedom had led to opened many new challenges for financial services. Cybercriminals have found the ability to leverage e-currency exchanges and other financial transactions to perform their fraudulent activities. The unregulated channel makes it essential for banks and financial institutions to deploy advanced AI & ML (DL) techniques to fight cybercrime. This can be implemented by deploying AI & ML (DL) techniques. Customers are experiencing an increase in the fraud-hit rate in financial banking operations. It is difficult to defend against dynamic cyber-attacks using conventional non-dynamic algorithms. Therefore, AI with machine learning techniques has been set up with cyber security to build intelligent models for malware categorization & intelligently sensing the fraught with danger. This paper introduces the cyber security defense mechanism by using artificial intelligence (AI), machine learning (ML)) techniques with the current Feedzai security model to identifying fraudulent banking transaction. We have given a preface to the popular ML & AI model with random forest algorithm and Feedzai’s Open ML fraud detection software tool, which provides automatic fraud-recognition to the current intelligent framework for solving Financial Fraud Detection.

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APA

Narsimha, B., Raghavendran, C. V., Rajyalakshmi, P., Kasi Reddy, G., Bhargavi, M., & Naresh, P. (2022). Cyber Defense in the Age of Artificial Intelligence and Machine Learning for Financial Fraud Detection Application. International Journal of Electrical and Electronics Research, 10(2), 87–92. https://doi.org/10.37391/IJEER.100206

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