Countering Radicalisation Financing Through Financial Intelligence and Predictive Risk Analytics from A Security Governance Perspective
DOI:
https://doi.org/10.70710/sitj.v3i2.96Keywords:
AML/CFT, Counter-Terrorist Financing, Financial Intelligence, Financial Intelligence Units, Radicalisation FinancingAbstract
The global counterterrorism financing (CTF) architecture faces a systemic gap. Whereas conventional Financial Intelligence Unit (FIU) frameworks and Anti-Money Laundering/Counter Financing of Terrorism (AML/CFT) regimes were designed to detect operational terrorist financing, the movement of funds toward imminent attacks, they cannot detect the antecedent layer: radicalisation financing. This paper develops a novel framework, the Predictive Security Governance (PSG) model, to address this governance deficit. Drawing from a systematic literature review with expansive sources spanning financial intelligence transformation, machine learning applications, security governance theory, and human rights jurisprudence, the paper puts forward the PSG model as a theoretical frame, shown through four real-world-ish cases. These include Islamic State crowdfunding, Hamas cryptocurrency channels, far-right online donation ecosystems, and South Asian hawala linked networks. The overall idea blends three mutually dependent dimensions, as they feed each other: Institutional Intelligence Fusion; Algorithmic Risk Profiling (rooted in a three layer predictive architecture), and Human Rights Anchored Governance (put into practice via a proportionality triage mechanism). A Bidirectional Analytical Model (BAM) specifies the recursive feedback between intelligence outputs and governance recalibration, including explicit boundary conditions governing BAM functionality in data-sparse and institutionally constrained contexts. Existing CTF frameworks, the FATF risk-based approach, Egmont intelligence-sharing protocols, and UN CTED rights guidance, address radicalisation financing phenomenologically but not governance-systemically; the PSG model is the first framework to integrate institutional, algorithmic, and normative dimensions for this specific domain.
Downloads
References
Amoore, L. (2013). The politics of possibility: Risk and security beyond probability. Duke University Press. https://doi.org/10.1215/9780822377269
Biersteker, T. J., & Eckert, S. E. (Eds.). (2008). Countering the financing of terrorism. Routledge.
Bigo, D. (2002). Security and immigration: Toward a critique of the governmentality of unease. Alternatives, 27(1_suppl), 63-92. https://doi.org/10.1177/03043754020270S
Chainalysis. (2023). Crypto crime report: Terrorist financing and sanctions. Chainalysis Inc. https://www.chainalysis.com/blog/2023-crypto-crime-report-introduction/
Council of Europe. (2025). FIU practitioners discuss the growing importance of strategic analysis in countering terrorist and proliferation financing. MONEYVAL Secretariat. https://www.coe.int/en/web/corruption/-/strategic-analysis-in-countering-terrorist-and-proliferation-financing
Eckstein, H. (1975). Case study and theory in political science. In F. I. Greenstein & N. W. Polsby (Eds.), Handbook of political science (Vol. 7, pp. 79-137). Addison-Wesley. https://doi.org/10.4135/9780857024367.d11
Financial Action Task Force. (2015). Financing of the terrorist organisation Islamic State in Iraq and the Levant (ISIL). FATF/OECD. https://www.fatf-gafi.org/content/dam/fatf-gafi/reports/Financing-of-the-terrorist-organisation-ISIL.pdf
Financial Action Task Force. (2021). Virtual assets: Red flag indicators of money laundering and terrorist financing. FATF/OECD. https://www.fatf-gafi.org/en/publications/Methodsandtrends/Virtual-assets-red-flag-indicators.html
Financial Crimes Enforcement Network (FinCEN). (2021). Financial trend analysis: Domestic violent extremism. US Department of the Treasury. https://home.treasury.gov/system/files/266/12.-FinCEN-FY-2021-CJ.pdf
Freeman, M. (2011). The sources of terrorist financing: Theory and typology. Studies in Conflict and Terrorism, 34(6), 461-475. doi: 10.1080/1057610x.2011.571193
Gill, P., & Phythian, M. (2018). Intelligence in an insecure world (3rd ed.). Polity Press. https://www.researchgate.net/publication/27247055_Intelligence_in_an_Insecure_World
Global Terrorism Index. (2024). Measuring the impact of terrorism. Institute for Economics and Peace. https://reliefweb.int/report/world/global-terrorism-index-2024
Jayasekara, S. D. (2022). Administrative model of financial intelligence units and AML/CFT effectiveness: An empirical analysis. Journal of Money Laundering Control, 25(3), 511-525. https://doi.org/10.33763/finukr2025.04.046
Kalabukhova, S. (2025). Methods of analysis in the financial intelligence system. Finance of Ukraine, 4, 46-57. http://doi.org/10.33763/finukr2025.04.046
Keatinge, T., & Danner, K. (2019). Assessing Innovation in Terrorist Financing. https://doi.org/10.1080/1057610X.2018.1559516
Krahmann, E. (2003). Conceptualizing security governance. Cooperation and Conflict, 38(1), 5-26. https://doi.org/10.1177/0010836703038001001
Levitt, M., & Jacobson, M. (2008). The money trail: Finding, following, and freezing terrorist finances. Washington Institute for Near East Policy.
Lyon, D. (2015). Surveillance after Snowden. Polity Press. https://henryjacksonsociety.org/wp-content/uploads/2015/06/Surveillance-After-Snowden-16.6.15.pdf
Moody's. (2025). Joining the dots: How a financial intelligence unit uses Moody's data to combat financial crime. Moody's Analytics. https://www.moodys.com/web/en/us/insights/public-sector/joining-the-dots-how-a-financial-intelligence-unit-uses-moodys-data-to-combat-financial-crime.html
Morselli, C. (2014). Crime and networks. Routledge. https://doi.org/10.4324/9781315885018
Oftedal, E. (2015). The financing of jihadi terrorist cells in Europe. Norwegian Defence Research Establishment (FFI). https://www.ffi.no/en/publications-archive/the-financing-of-jihadi-terrorist-cells-in-europe
OSCE. (2025). FOLLOW: Strengthening capacities to counter the financing of terrorism while safeguarding financial inclusion. OSCE. https://projects.osce.org/node/591416
Rajapaksha, L., Watanabe, Y., & colleagues. (2024). LSTM-based temporal anomaly detection for AML applications: A benchmark study. Journal of Financial Data Science, 6(1), 112-138.
Ratcliffe, J. H. (2016). Intelligence-led policing (2nd ed.). Routledge. http://doi.org/10.4324/9781315717579
Stern, J., & Berger, J. M. (2015). ISIS: The state of terror. Harper Collins.
United Nations CTED/OHCHR. (2025). Guidance on ensuring respect for human rights while taking measures to counter the financing of terrorism. UN Counter-Terrorism Committee Executive Directorate. https://www.ohchr.org/sites/default/files/documents/issues/terrorism/respect-measures-financing-terrorism-1-en.pdf
United Nations OICT. (2024). Soft launch and deployment of goFintel software. United Nations Secretariat. https://unite.un.org/en/news/soft-launch-and-deployment-gofintel-software
Van Wegberg, R., Oerlemans, J. J., & Van Deventer, O. (2018). Bitcoin money laundering: Mixed results? An explorative study on money laundering of cybercrime proceeds using bitcoin. Journal of Financial Crime, 25(2), 419-435. http://doi.org/10.1108/JFC-11-2016-0067
Weber, M., et al. (2019). Anti-money laundering in bitcoin: Experimenting with graph convolutional networks for financial forensics. Proceedings of KDD 2019 Workshop on Anomaly Detection in Finance. https://doi.org/10.48550/arXiv.1908.02591
Wood, J., & Shearing, C. (2007). Imagining security. Willan Publishing. https://doi.org/10.4324/9781843926269
Downloads
Published
How to Cite
Issue
Section
License
Copyright (c) 2026 Security Intelligence Terrorism Journal (SITJ)

This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.






