Harnessing machine learning for money laundering detection: a criminological theory-centric approach

被引:0
|
作者
Ramadhan, Syahril [1 ,2 ]
机构
[1] Univ Jakarta Int, Dept Accounting, Jakata, Indonesia
[2] Pancasila Univ, Postgrad Sch Econ, Jakarta, Indonesia
来源
JOURNAL OF MONEY LAUNDERING CONTROL | 2025年 / 28卷 / 01期
关键词
Criminology-centric machine learning (CCTML); Money laundering detection; Machine learning; Criminological theories; Predictive modeling; Financial crime;
D O I
10.1108/JMLC-04-2024-0083
中图分类号
DF [法律]; D9 [法律];
学科分类号
0301 ;
摘要
PurposeThe purpose of this study is to develop and evaluate the effectiveness of the criminology-centric machine learning (CCTML) framework in detecting money laundering activities by integrating criminological theories with machine learning techniques.Design/methodology/approachThis study uses a mixed-methods approach, this research synthesizes qualitative insights from expert interviews and literature reviews with quantitative analysis using machine learning models. Criminology-centric features are engineered based on established theories to capture behaviors indicative of money laundering. Various machine learning algorithms, including Voting Ensemble, XGBoost, Random Forest and LightGBM, are evaluated for their effectiveness in detecting financial crimes.FindingsThe findings of the study demonstrate that the CCTML approach consistently outperforms common machine learning models in detecting money laundering activities across various evaluation metrics, including area under the curve, log loss, Matthews correlation coefficient, precision, recall and balanced accuracy. The integration of criminological insights into machine learning models significantly enhances their predictive accuracy and reliability.Originality/valueThis research synthesizes diverse criminological insights into a cohesive framework known as CCTML. This approach goes beyond common feature engineering by incorporating complex behavioral patterns and social dynamics, thereby enhancing the accuracy and transparency of money laundering detection systems. By leveraging state-of-the-art machine learning algorithms and explainable artificial intelligence (AI) techniques, CCTML not only improves predictive capabilities but also ensures that model decisions are interpretable and fair. Explainable AI helps CCTML reveal why certain transactions are flagged, aiding investigators in identifying key suspects. Furthermore, this study contributes a comprehensive anti-money laundering framework that integrates ethical considerations, promoting a more robust and just approach to combating financial crimes.
引用
收藏
页码:184 / 201
页数:18
相关论文
共 50 条
  • [1] Money Laundering Detection using Machine Learning and Deep Learning
    Alotibi, Johrha
    Almutanni, Badriah
    Alsubait, Tahani
    Alhakami, Hosam
    Baz, Abdullah
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2022, 13 (10) : 732 - 738
  • [2] Machine Learning in Money Laundering Detection Over Blockchain Technology
    Venckauskas, Algimantas
    Grigaliunas, Sarunas
    Pocius, Linas
    Bruzgiene, Rasa
    Romanovs, Andrejs
    IEEE ACCESS, 2025, 13 : 7555 - 7573
  • [3] Machine Learning Approach to Anti-Money Laundering: A Review
    Mohammed, Habiba Nasir
    Malami, Nasir Shehu
    Thomas, Sadiq
    Aiyelabegan, Faridah Abdul
    Imam, Fatima Adam
    Ginsau, Halima Haruna
    2022 IEEE NIGERIA 4TH INTERNATIONAL CONFERENCE ON DISRUPTIVE TECHNOLOGIES FOR SUSTAINABLE DEVELOPMENT (IEEE NIGERCON), 2022, : 466 - 470
  • [4] Machine Learning and Sampling Scheme: An Empirical Study of Money Laundering Detection
    Zhang, Yan
    Trubey, Peter
    COMPUTATIONAL ECONOMICS, 2019, 54 (03) : 1043 - 1063
  • [5] Machine Learning and Sampling Scheme: An Empirical Study of Money Laundering Detection
    Yan Zhang
    Peter Trubey
    Computational Economics, 2019, 54 : 1043 - 1063
  • [6] Fighting Money Laundering With Statistics and Machine Learning
    Jensen, Rasmus Ingemann Tuffveson
    Iosifidis, Alexandros
    IEEE ACCESS, 2023, 11 : 8889 - 8903
  • [7] Detecting money laundering transactions with machine learning
    Jullum, Martin
    Loland, Anders
    Huseby, Ragnar Bang
    Anonsen, Geir
    Lorentzen, Johannes
    JOURNAL OF MONEY LAUNDERING CONTROL, 2020, 23 (01): : 173 - 186
  • [8] GCF-MLD: Integrated Approach for Money Laundering Detection Using Machine Learning and Graph Network Analysis
    Irshad, Faizan
    Alkhalifah, Tamim
    Alturise, Fahad
    Khan, Yaser Daanial
    IEEE ACCESS, 2024, 12 : 183961 - 183972
  • [9] An evolutionary game theory approach to combat money laundering
    Araujo, Ricardo Azevedo
    JOURNAL OF MONEY LAUNDERING CONTROL, 2010, 13 (01): : 70 - +
  • [10] Amaretto: An Active Learning Framework for Money Laundering Detection
    Labanca, Danilo
    Primerano, Luca
    Markland-Montgomery, Marcus
    Polino, Mario
    Carminati, Michele
    Zanero, Stefano
    IEEE ACCESS, 2022, 10 : 41720 - 41739