Abstract

Financial technology, or Fintech, represents an emerging industry on the global market. With online transactions on the rise, the use of IT for automation of financial services is of increasing importance. Fintech enables institutions to deliver services to customers worldwide on a 24/7 basis. Its services are often easy to access and enable customers to perform transactions in real-time. In fact, advantages such as these make Fintech increasingly popular among clients. However, since Fintech transactions are made up of information, ensuring security becomes a critical issue. Vulnerabilities in such systems leave them exposed to fraudulent acts, which cause severe damage to clients and providers alike. For this reason, techniques from the area of Machine Learning (ML) are applied to identify anomalies in Fintech applications. They target suspicious activity in financial datasets and generate models in order to anticipate future frauds. We contribute to this important issue and provide an evaluation on anomaly detection methods for this matter. Experiments were conducted on several fraudulent datasets from real-world and synthetic databases, respectively. The obtained results confirm that ML methods contribute to fraud detection with varying success. Therefore, we discuss the effectiveness of the individual methods with regard to the detection rate. In addition, we provide an analysis on the influence of selected features on their performance. Finally, we discuss the impact of the observed results for the security of Fintech applications in the future.

Highlights

  • Modern-day demands for services require availability and worldwide accessibility around-the-clock

  • We provide an overview about the application of several Machine Learning (ML) methods for the detection of cybercrime in the bitcoin ecosystem

  • If the number of positive Relevance scores is zero, Rsi ign is set equal to the number of features (=29)

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Summary

Introduction

Modern-day demands for services require availability and worldwide accessibility around-the-clock. Fintech represents the application of IT solutions in business models in order to deliver improved financial services to clients. Fintech represents a blanket term for a broad scope of technologies that dynamically interact in a common infrastructure. The term has stood for the continuous co-evolution of technology and finance. Companies that apply this business model offer advantages, such as easier use and cheaper and more secure transactions [2]. Fintech services have become more attractive for both clients and providers. This fact is further confirmed by the constant rise of Fintech investments over the last few years [2,3]. Fintech might outperform and even replace traditional finance institutions

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