Abstract

Financial fraud under IoT environment refers to the unauthorized use of mobile transaction using mobile platform through identity theft or credit card stealing to obtain money fraudulently. Financial fraud under IoT environment is the fast-growing issue through the emergence of smartphone and online transition services. In the real world, a highly accurate process of financial fraud detection under IoT environment is needed since financial fraud causes financial loss. Therefore, we have surveyed financial fraud methods using machine learning and deep learning methodology, mainly from 2016 to 2018, and proposed a process for accurate fraud detection based on the advantages and limitations of each research. Moreover, our approach proposed the overall process of detecting financial fraud based on machine learning and compared with artificial neural networks approach to detect fraud and process large amounts of financial data. To detect financial fraud and process large amounts of financial data, our proposed process includes feature selection, sampling, and applying supervised and unsupervised algorithms. The final model was validated by the actual financial transaction data occurring in Korea, 2015.

Highlights

  • Financial fraud under IoT environment is the fast-growing issue since the mobile channel can facilitate nearly any type of payments

  • We performed the validation based on the identical actual financial transaction data for machine learning method and artificial neural network

  • We reviewed the latest financial fraud detection technique using machine learning and artificial neural networks and implemented the experiment based on the real financial data in Korea

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Summary

Introduction

Financial fraud under IoT environment is the fast-growing issue since the mobile channel can facilitate nearly any type of payments. The online credit card fraud that does not require the presence of a credit card mainly occurs under IoT environment, since the payment under IoT environment does not require the presence of a physical payment tool; instead, it needs some information such as card number, expiration date, card verification code, and pin number to make the fraudulent payment. For this reason, financial fraud, which usually takes place under the IoT environment, is the most frequent type of financial fraud that involves taking or modifying credit card information.

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