How Real-Time Streaming Helping Fraud Detection for Trade Clearing Firms

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© 2024 by IJCTT Journal
Volume-72 Issue-6
Year of Publication : 2024
Authors : Prabhu Patel
DOI :  10.14445/22312803/IJCTT-V72I6P110

How to Cite?

Prabhu Patel, "How Real-Time Streaming Helping Fraud Detection for Trade Clearing Firms ," International Journal of Computer Trends and Technology, vol. 72, no. 6, pp. 72-79, 2024. Crossref, https://doi.org/10.14445/22312803/IJCTT-V72I6P110

Abstract
The application of Time-Series Analysis and Fraud Score Calculation as essential elements of clearing organisations' fraud detection systems is investigated in this paper. Using sequential data point analysis and numerical scoring of transactions, these analytical methods provide proactive ways to identify and reduce fraudulent activity. Through Fraud Score Calculation, clearing companies may quickly detect high-risk transactions and prioritise resources by utilising statistical methodologies and machine learning algorithms. In order to preserve market integrity, Time-Series Analysis simultaneously makes it possible to identify minute patterns and trends in transaction data, which paves the way for predictive modelling and proactive intervention. The results highlight how crucial these analytical skills are for negotiating the intricacies of the financial markets and avoiding possible dangers. On the other hand, clearing companies are better able to detect fraud, reduce losses, and maintain customer confidence thanks to the combination of Time-Series Analysis and Fraud Score Calculation.

Keywords
Real-Time Data Streaming, Fraud detection, Trade clearing firm.

Reference

[1] Youness Abakarim, Mohamed Lahby, and Abdelbaki Attioui, “An Efficient Real Time Model for Credit Card Fraud Detection based on Deep Learning,” Proceedings of the 12th International Conference on Intelligent Systems: Theories and Applications, Rabat Morocco, pp. 1-7, 2018.
[CrossRef] [Google Scholar] [Publisher Link]
[2] Muhammad Ali et al., “Edge Enhanced Deep Learning System for Large-scale Video Stream Analytics,” 2018 IEEE 2nd International Conference on Fog and Edge Computing, Washington, DC, USA, pp. 1-10, 2018.
[CrossRef] [Google Scholar] [Publisher Link]
[3] Messod D. Beneish, and Patrick Vorst, “The Cost of Fraud Prediction Errors,” The Accounting Review, vol. 97, no. 6, pp. 91-121, 2022.
[CrossRef] [Google Scholar] [Publisher Link]
[4] Bernardo Branco et al., “Interleaved sequence RNNs for Fraud Detection,” Proceedings of the 26th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining, CA USA, pp. 3101-3109, 2020.
[CrossRef] [Google Scholar] [Publisher Link]
[5] Shaosheng Cao et al., “Titant: Online Real-time Transaction Fraud Detection in Ant Financial,” arXiv, 2019.
[CrossRef] [Google Scholar] [Publisher Link]
[6] Fabrizio Carcillo et al., “Scarff: A Scalable Framework for Streaming Credit Card Fraud Detection with Spark,” Information Fusion, vol. 41, pp. 182-194, 2018.
[CrossRef] [Google Scholar] [Publisher Link]
[7] Chris Chatfield, and Haipeng Xing, The Analysis of Time Series: An Introduction with R, Chapman and Hall/CRC, 2019.
[CrossRef] [Google Scholar] [Publisher Link]
[8] Asma Cherif et al., “Credit Card Fraud Detection in the Era of Disruptive Technologies: A Systematic Review,” Journal of King Saud University-Computer and Information Sciences, vol. 35, no. 1, pp. 145-174, 2023.
[CrossRef] [Google Scholar] [Publisher Link]
[9] Alae Chouiekh, and EL Hassane Ibn EL Haj, “Convnets for Fraud Detection Analysis,” Procedia Computer Science, vol. 127, pp. 133- 138, 2018.
[CrossRef] [Google Scholar] [Publisher Link]
[10] Tarek Elsaleh et al., “IoT-Stream: A Lightweight Ontology for Internet of Things Data Streams and Its use with Data Analytics and Event Detection Services,” Sensors, vol. 20, no. 4, pp. 1-22, 2020.
[CrossRef] [Google Scholar] [Publisher Link]
[11] Mateusz Fedoryszak et al., “Real-time event Detection on Social Data Streams,” Proceedings of the 25th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining, Anchorage AK USA, pp. 2774-2782, 2019.
[CrossRef] [Google Scholar] [Publisher Link]
[12] Xiang Fei et al., “CPS Data Streams Analytics Based on Machine Learning for Cloud and Fog Computing: A Survey,” Future Generation Computer Systems, vol. 90, pp. 435-450, 2019.
[CrossRef] [Google Scholar] [Publisher Link]
[13] Ben D. Fulcher, Feature-based Time-series Analysis, Feature Engineering for Machine Learning and Data Analytics, 1st ed., CRC Press, pp. 1-30, 2018.
[Google Scholar] [Publisher Link]
[14] Riyaz Ahamed Ariyaluran Habeeb et al., “Real-time Big Data Processing for Anomaly Detection: A Survey,” International Journal of Information Management, vol. 45, pp. 289-307, 2019.
[CrossRef] [Google Scholar] [Publisher Link]
[15] Ananda Putra Nindhita Aulia Haqq, and Gideon Setyo Budiwitjaksono, “Fraud Pentagon for Detecting Financial Statement Fraud,” Journal of Economics, Business, and Accountancy Ventura, vol. 22, no. 3, pp. 319-332, 2020.
[CrossRef] [Google Scholar] [Publisher Link]
[16] Ahmed Hassan, and Ali H. Mhmood, “Optimizing Network Performance, Automation, and Intelligent Decision-Making through RealTime Big Data Analytics,” International Journal of Responsible Artificial Intelligence, vol. 11, no. 8, 2021.
[Google Scholar] [Publisher Link]
[17] Waleed Hilal, S. Andrew Gadsden, and John Yawney, “Financial Fraud: A Review of Anomaly Detection Techniques and Recent Advances,” Expert Systems with Applications, vol. 193, pp. 1-34, 2022.
[CrossRef] [Google Scholar] [Publisher Link]
[18] Anayo Chukwu Ikegwu et al., “Big Data Analytics for Data-driven Industry: A Review of Data Sources, Tools, Challenges, Solutions, and Research Directions,” Cluster Computing, vol. 25, no. 5, pp. 3343-3387, 2022.
[CrossRef] [Google Scholar] [Publisher Link]
[19] Soni Agus Irwandi et al., “Detection Fraudulent Financial Statement: Beneish M-score Model,” WSEAS Transactions on Business and Economics, vol. 16, pp. 271-281, 2019.
[Google Scholar]
[20] Mohd Javaid et al., “A Review of Blockchain Technology Applications for Financial Services,” BenchCouncil Transactions on Benchmarks, Standards and Evaluations, vol. 2, no. 3, pp. 1-18, 2022.
[CrossRef] [Google Scholar] [Publisher Link]
[21] Hari Prasad Josyula, “Fraud Detection in Fintech Leveraging Machine Learning and Behavioral Analytics,” 2023.
[CrossRef] [Google Scholar] [Publisher Link]
[22] Pradeep Kumar, and H. Howie Huang, “Graphone: A Data Store for Real-time Analytics on Evolving Graphs,” ACM Transactions on Storage, vol. 15, no. 4, pp. 1-40, 2020.
[CrossRef] [Google Scholar] [Publisher Link]
[23] Mark E. Lokanan, “Incorporating Machine Learning in Dispute Resolution and Settlement Process for Financial Fraud,” Journal of Computational Social Science, vol. 6, pp. 515-539, 2023.
[CrossRef] [Google Scholar] [Publisher Link]
[24] Mehdi Mohammadi et al., “Deep Learning for IoT Big Data and Streaming Analytics: A Survey,” IEEE Communications Surveys & Tutorials, vol. 20, no. 4, pp. 2923-2960, 2018.
[CrossRef] [Google Scholar] [Publisher Link]
[25] Manfred Mudelsee, “Trend Analysis of Climate Time Series: A Review of Methods,” Earth-science Reviews, vol. 190, pp. 310-322, 2019.
[CrossRef] [Google Scholar] [Publisher Link]
[26] Aileen Nielsen, Practical time Series Analysis: Prediction with Statistics and Machine Learning, O'Reilly Media, 2019.
[Google Scholar] [Publisher Link]
[27] Dwi Ratmono, Darsono Darsono, and Nur Cahyonowati, “Financial Statement Fraud Detection with Beneish M-score and Dechow Fscore Model: An Empirical Analysis of Fraud Pentagon Theory in Indonesia,” International Journal of Financial Research, vol. 11, no. 6, 2020.
[CrossRef] [Google Scholar] [Publisher Link]
[28] Laura Rettig et al., “Online Anomaly Detection Over Big Data Streams,” Applied Data Science, pp. 289-312, 2019.
[CrossRef] [Google Scholar] [Publisher Link]
[29] Roberto Saia, and Salvatore Carta, “Evaluating the Benefits of using Proactive Transformed-domain-based Techniques in Fraud Detection Tasks,” Future Generation Computer Systems, vol. 93, pp. 18-32, 2019.
[CrossRef] [Google Scholar] [Publisher Link]
[30] Varun Shah, “Machine Learning Algorithms for Cybersecurity: Detecting and Preventing Threats,” Revista Espanola de Documentacion Cientifica, vol. 15, no. 4, 2021.
[Google Scholar] [Publisher Link]
[31] Vanessa Freitas Silva et al., “Time Series Analysis via Network Science: Concepts and Algorithms,” Wiley Interdisciplinary Reviews: Data Mining and Knowledge Discovery, vol. 11, no. 3, 2021.
[CrossRef] [Google Scholar] [Publisher Link]
[32] Naomi Clara Situngkir, and Dedik Nur Triyanto, “Detecting Fraudulent Financial Reporting using Fraud Score Model and Fraud Pentagon Theory: Empirical Study of Companies Listed in the LQ 45 Index,” The Indonesian Journal of Accounting Research, vol. 23, no. 3, 2020.
[CrossRef] [Google Scholar] [Publisher Link]
[33] Anuruddha Thennakoon et al., “Real-time Credit Card Fraud Detection Using Machine Learning,” 2019 9th International Conference on Cloud Computing, Data Science & Engineering, Noida, India, pp. 488-493, 2019.
[CrossRef] [Google Scholar] [Publisher Link]
[34] Konstantinos Vassakis, Emmanuel Petrakis, and Ioannis Kopanakis, “Big Data Analytics: Applications, Prospects and Challenges,” Mobile Big Data: A Roadmap from Models to Technologies, pp. 3-20, 2017.
[CrossRef] [Google Scholar] [Publisher Link]
[35] Ben Zhang et al., “Awstream: Adaptive Wide-area Streaming Analytics,” Proceedings of the 2018 Conference of the ACM Special Interest Group on Data Communication, Budapest Hungary, pp. 236-252, 2018.
[CrossRef] [Google Scholar] [Publisher Link]