INTERNET FINANCIAL FRAUD DETECTION BASED ON A DISTRIBUTED BIG DATA APPROACH WITH NODE2VEC

Authors

  • A NAGARAJU Author
  • S. AYESHA Author

Keywords:

information technologies, Internet financial fraud detections, better precision rate, recall rate, F1-Score, F2-Score, Apache Spark Graph, financial network graph, Artificial Intelligence, Blockchain, Big Data, Internet of Things

Abstract

The rapid development of information technologies like Internet of Things, Big Data, Artificial Intelligence, Blockchain, etc., has profoundly affected people's consumption behaviors and changed the development model of the financial industry. The financial services on Internet and IoT with new technologies has provided convenience and efficiency for consumers, but new hidden fraud risks are generated also. Fraud, arbitrage, vicious collection, etc., have caused bad effects and huge losses to the development of finance on Internet and IoT. However, as the scale of financial data continues to increase dramatically, it is more and more difficult
for existing rule-based expert systems and traditional machine learning model systems to detect financial frauds from large-scale historical data. In the meantime, as the degree of specialization of financial fraud continues to increase, fraudsters can evade fraud detection by frequently changing their fraud methods. In this article, an intelligent and distributed Big Data approach for Internet financial fraud detections is proposed to implement graph embedding algorithm Node2Vec to learn and represent the topological features in the financial network graph into low-dimensional dense vectors, so as to intelligently and efficiently classify and predict the data samples of the large-scale dataset with the deep neural network. The approach is distributed performed on the clusters of Apache Spark Graph and Hadoop to process the large dataset in parallel. The groups of experimental results demonstrate that the
proposed approach can improve the efficiency of Internet financial fraud detections with better precision rate, recall rate, F1-Score and F2-Score.

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Published

19-07-2024

How to Cite

INTERNET FINANCIAL FRAUD DETECTION BASED ON A DISTRIBUTED BIG DATA APPROACH WITH NODE2VEC. (2024). International Journal of Information Technology and Computer Engineering, 12(3), 114-122. https://ijitce.org/index.php/ijitce/article/view/649