Machine Learning for money laundering detection
Olloshukur Atadjanov
Machine Learning for money laundering detection.
Rel. Alessio Sacco, Akmal Rustamov, Guido Marchetto. Politecnico di Torino, Master of science program in Data Science And Engineering, 2025
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Abstract
This thesis explores the application of machine learning techniques for the detection of money laundering activities, a persistent challenge in the financial sector that undermines the integrity of economic systems worldwide. The study begins with a comprehensive introduction to money laundering, outlining its processes, the difficulties in traditional detection methods, and the significant potential of machine learning as a transformative approach. A thorough literature review reveals the landscape of existing research on money laundering detection, highlighting the limitations of conventional methods and the emergence of data-driven strategies. Key machine learning algorithms, including supervised and unsupervised learning techniques, are examined for their applicability to fraud detection, providing a theoretical framework for subsequent analysis.
The methodology chapter details a structured approach to research design, including the selection of data sources, ethical considerations, and the implementation of machine learning algorithms
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