Machine Learning Applications in Fraud Detection for Financial Institutions
DOI:
https://doi.org/10.36676/dira.v12.i3.130Keywords:
Machine learning, fraud detection, financial institutions, anomaly detection, supervised learning, unsupervised learningAbstract
In the rapidly evolving financial landscape, fraud detection has emerged as a critical challenge for institutions seeking to protect their assets and maintain customer trust. This paper explores the application of machine learning (ML) techniques in enhancing fraud detection mechanisms within financial institutions. By harnessing the power of algorithms and data analytics, organizations can identify patterns and anomalies in transaction data that traditional methods often overlook. Various ML models, including supervised, unsupervised, and reinforcement learning, are evaluated for their effectiveness in detecting fraudulent activities.
The study emphasizes the importance of feature engineering and data preprocessing in developing robust ML models, as the quality of input data significantly influences the accuracy of predictions. Furthermore, the paper discusses the integration of real-time data processing, which enables institutions to respond swiftly to potential threats. The challenges associated with imbalanced datasets, false positives, and the need for continuous model updates to adapt to evolving fraud tactics are also addressed.
Ultimately, this research highlights that leveraging machine learning not only improves the detection rate of fraudulent transactions but also enhances operational efficiency and customer satisfaction. By implementing these advanced technologies, financial institutions can create a proactive fraud detection framework, significantly reducing financial losses and reinforcing their commitment to safeguarding client interests in an increasingly digital world. This study serves as a foundational reference for practitioners and researchers aiming to advance the application of ML in the fight against financial fraud.
References
Vadlamani, Satish, Santhosh Vijayabaskar, Bipin Gajbhiye, Om Goel, Arpit Jain, and Punit Goel. 2022. “Improving Field Sales Efficiency with Data Driven Analytical Solutions.” International Journal of Research in Modern Engineering and Emerging Technology 10(8):70. Retrieved from https://www.ijrmeet.org.
Gannamneni, Nanda Kishore, Rahul Arulkumaran, Shreyas Mahimkar, S. P. Singh, Sangeet Vashishtha, and Arpit Jain. 2022. "Best Practices for Migrating Legacy Systems to S4 HANA Using SAP MDG and Data Migration Cockpit." International Journal of Research in Modern Engineering and Emerging Technology (IJRMEET) 10(8):93. Retrieved (http://www.ijrmeet.org).
Nanda Kishore Gannamneni, Raja Kumar Kolli, Chandrasekhara, Dr. Shakeb Khan, Om Goel, Prof.(Dr.) Arpit Jain. 2022. "Effective Implementation of SAP Revenue Accounting and Reporting (RAR) in Financial Operations." IJRAR - International Journal of Research and Analytical Reviews (IJRAR), 9(3), pp. 338-353. Available at: http://www.ijrar.org/IJRAR22C3167.pdf
Kshirsagar, Rajas Paresh, Shashwat Agrawal, Swetha Singiri, Akshun Chhapola, Om Goel, and Shalu Jain. 2022. "Revenue Growth Strategies through Auction Based Display Advertising." International Journal of Research in Modern Engineering and Emerging Technology 10(8):30. Retrieved October 3, 2024 (http://www.ijrmeet.org).
Satish Vadlamani, Vishwasrao Salunkhe, Pronoy Chopra, Er. Aman Shrivastav, Prof.(Dr) Punit Goel, Om Goel. 2022. "Designing and Implementing Cloud Based Data Warehousing Solutions." IJRAR - International Journal of Research and Analytical Reviews (IJRAR), 9(3), pp. 324-337. Available at: http://www.ijrar.org/IJRAR22C3166.pdf
Kankanampati, Phanindra Kumar, Pramod Kumar Voola, Amit Mangal, Prof. (Dr) Punit Goel, Aayush Jain, and Dr. S.P. Singh. 2022. "Customizing Procurement Solutions for Complex Supply Chains Challenges and Solutions." International Journal of Research in Modern Engineering and Emerging Technology (IJRMEET) 10(8):50. Retrieved (https://www.ijrmeet.org).
Phanindra Kumar Kankanampati, Siddhey Mahadik, Shanmukha Eeti, Om Goel, Shalu Jain, & Raghav Agarwal. (2022). Enhancing Sourcing and Contracts Management Through Digital Transformation. Universal Research Reports, 9(4), 496–519. https://doi.org/10.36676/urr.v9.i4.1382
Rajas Paresh Kshirsagar, Rahul Arulkumaran, Shreyas Mahimkar, Aayush Jain, Dr. Shakeb Khan, Prof.(Dr.) Arpit Jain, "Innovative Approaches to Header Bidding The NEO Platform", IJRAR - International Journal of Research and Analytical Reviews (IJRAR), Volume.9, Issue 3, Page No pp.354-368, August 2022. Available at: http://www.ijrar.org/IJRAR22C3168.pdf
Phanindra Kumar, Shashwat Agrawal, Swetha Singiri, Akshun Chhapola, Om Goel, Shalu Jain, "The Role of APIs and Web Services in Modern Procurement Systems", IJRAR - International Journal of Research and Analytical Reviews (IJRAR), Volume.9, Issue 3, Page No pp.292-307, August 2022. Available at: http://www.ijrar.org/IJRAR22C3164.pdf
Satish Vadlamani, Raja Kumar Kolli, Chandrasekhara Mokkapati, Om Goel, Dr. Shakeb Khan, & Prof.(Dr.) Arpit Jain. (2022). Enhancing Corporate Finance Data Management Using Databricks And Snowflake. Universal Research Reports, 9(4), 682–602. https://doi.org/10.36676/urr.v9.i4.1394
Dandu, Murali Mohana Krishna, Vanitha Sivasankaran Balasubramaniam, A. Renuka, Om Goel, Punit Goel, and Alok Gupta. (2022). "BERT Models for Biomedical Relation Extraction." International Journal of General Engineering and Technology 11(1): 9-48. ISSN (P): 2278–9928; ISSN (E): 2278–9936.
Ravi Kiran Pagidi, Rajas Paresh Kshirsagar, Phanindra Kumar Kankanampati, Er. Aman Shrivastav, Prof. (Dr) Punit Goel, & Om Goel. (2022). Leveraging Data Engineering Techniques for Enhanced Business Intelligence. Universal Research Reports, 9(4), 561–581. https://doi.org/10.36676/urr.v9.i4.1392
Mahadik, Siddhey, Dignesh Kumar Khatri, Viharika Bhimanapati, Lagan Goel, and Arpit Jain. 2022. "The Role of Data Analysis in Enhancing Product Features." International Journal of Computer Science and Engineering 11(2):9–22.
Rajas Paresh Kshirsagar, Nishit Agarwal, Venkata Ramanaiah Chintha, Er. Aman Shrivastav, Shalu Jain, & Om Goel. (2022). Real Time Auction Models for Programmatic Advertising Efficiency. Universal Research Reports, 9(4), 451–472. https://doi.org/10.36676/urr.v9.i4.1380
Tirupati, Krishna Kishor, Dasaiah Pakanati, Harshita Cherukuri, Om Goel, and Dr. Shakeb Khan. 2022. "Implementing Scalable Backend Solutions with Azure Stack and REST APIs." International Journal of General Engineering and Technology (IJGET) 11(1): 9–48. ISSN (P): 2278–9928; ISSN (E): 2278–9936.
Nadukuru, Sivaprasad, Raja Kumar Kolli, Shanmukha Eeti, Punit Goel, Arpit Jain, and Aman Shrivastav. 2022. “Best Practices for SAP OTC Processes from Inquiry to Consignment.” International Journal of Computer Science and Engineering 11(1):141–164. ISSN (P): 2278–9960; ISSN (E): 2278–9979. © IASET.
Pagidi, Ravi Kiran, Siddhey Mahadik, Shanmukha Eeti, Om Goel, Shalu Jain, and Raghav Agarwal. 2022. “Data Governance in Cloud Based Data Warehousing with Snowflake.” International Journal of Research in Modern Engineering and Emerging Technology (IJRMEET) 10(8):10. Retrieved from http://www.ijrmeet.org.
HR Efficiency Through Oracle HCM Cloud Optimization." International Journal of Creative Research Thoughts (IJCRT) 10(12).p. (ISSN: 2320-2882). Retrieved from https://ijcrt.org.
Salunkhe, Vishwasrao, Umababu Chinta, Vijay Bhasker Reddy Bhimanapati, Shubham Jain, and Punit Goel. 2022. “Clinical Quality Measures (eCQM) Development Using CQL: Streamlining Healthcare Data Quality and Reporting.” International Journal of Computer Science and Engineering (IJCSE) 11(2):9–22.
Khair, Md Abul, Kumar Kodyvaur Krishna Murthy, Saketh Reddy Cheruku, S. P. Singh, and Om Goel. 2022. "Future Trends in Oracle HCM Cloud." International Journal of Computer Science and Engineering 11(2):9–22.
Chopra, E. P., Goel, E. O., & Jain, R. (2023). Generative AI vs. Machine Learning in cloud environments: An analytical comparison. Journal of New Research in Development, 1(3), a1-a17. Available at: http://www.tijer/jnrid/viewpaperforall.php?paper=JNRID2303001
Pronoy Chopra, Om Goel, Dr. Tikam Singh. (August 2023). Managing AWS IoT Authorization: A Study of Amazon Verified Permissions. IJRAR - International Journal of Research and Analytical Reviews, 10(3), pp.6-23. Available at: http://www.ijrar/IJRAR23C3642.pdf
Shanmukha Eeti, Priyanshi, Prof.(Dr) Sangeet Vashishtha. (March 2023). Optimizing Data Pipelines in AWS: Best Practices and Techniques. International Journal of Creative Research Thoughts (IJCRT), 11(3), pp.i351-i365. Available at: http://www.ijcrt/IJCRT2303992.pdf
Eeti, S., Jain, P. A., & Goel, E. O. (2023). Creating robust data pipelines: Kafka vs. Spark. Journal of Emerging Technologies in Networking and Research, 1(3), a12-a22. Available at: http://www.rjpn/jetnr/viewpaperforall.php?paper=JETNR2303002
Chopra, E., Verma, P., & Garg, M. (2023). Accelerating Monte Carlo simulations: A comparison of Celery and Docker. Journal of Emerging Technologies and Network Research, 1(9), a1-a14. Available at: http://www.rjpn/jetnr/viewpaperforall.php?paper=JETNR2309001
Eeti, S., Jain, A., & Goel, P. (2023). A comparative study of NoSQL databases: MongoDB, HBase, and Phoenix. International Journal of New Trends in Information Technology, 1(12), a91-a108. Available at: http://www.rjpn/ijnti/papers/IJNTI2312013.pdf
Downloads
Published
How to Cite
Issue
Section
License
Copyright (c) 2024 Darpan International Research Analysis
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.