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Artificial Intelligence Applications in Banking and Financial Services: Anti Money Laundering and Compliance
Kategorie Beschreibung
036aXB-SG
037beng
087q978-981-99-2570-4
087q978-981-99-2572-8
087q978-981-99-2573-5
100 Gupta, Abhishek ¬[VerfasserIn]¬
104aDwivedi, Dwijendra Nath ¬[VerfasserIn]¬
108aShah, Jigar ¬[VerfasserIn]¬
331 Artificial Intelligence Applications in Banking and Financial Services
335 Anti Money Laundering and Compliance
410 Singapore
410 Singapore
412 Springer Nature Singapore
412 Imprint: Springer
425 2023
425 2023
425a2023
433 1 Online-Ressource (XVI, 140 p. 51 illus., 4 illus. in color.)
451bFuture of Business and Finance
527 Erscheint auch als (Druck-Ausgabe)ISBN: 978-981-99-2570-4
527 Erscheint auch als (Druck-Ausgabe)ISBN: 978-981-99-2572-8
527 Erscheint auch als (Druck-Ausgabe)ISBN: 978-981-99-2573-5
540aISBN 978-981-99-2571-1
700 |KFF
700 |BUS027010
700b|332
700b|658.15
750 Chapter 1: Introduction to financial crimes and its participants -- Chapter 2: Anti financial crimes organization overview in a financial institution -- Chapter 3: Financial institutions approach to curbing and mitigating financial crimes -- Chapter 4: IT solutions for monitoring and managing financial crimes -- Chapter 5: Typical challenges faced by AML and compliance divisions -- Chapter 6: Applications of artificial intelligence and digitization in financial crimes -- Chapter 7: Data organization and governance in financial crimes -- Chapter 8: Machine learning approach to customer due diligence and watchlist monitoring -- Chapter 9: Applying machine learning for transaction monitoring to optimize false positives -- Chapter 10: application of network analysis to further improve detection of financial crimes -- Chapter 11: AML investigation and application of digitization and machine learning for saving investigation time -- Chapter 12: Futuristic enterprise level AI driven Financial Crime Investigation unit (FCU) for a financial institution.
753 This book discusses all aspects of money laundering, starting from traditional approach to financial crimes to artificial intelligence-enabled solutions. It also discusses the regulators approach to curb financial crimes and how syndication among financial institutions can create a robust ecosystem for monitoring and managing financial crimes. It opens with an introduction to financial crimes for a financial institution, the context of financial crimes, and its various participants. Various types of money laundering, terrorist financing, and dealing with watch list entities are also part of the discussion. Through its twelve chapters, the book provides an overview of ways in which financial institutions deal with financial crimes; various IT solutions for monitoring and managing financial crimes; data organization and governance in the financial crimes context; machine learning and artificial intelligence (AI) in financial crimes; customer-level transaction monitoring system; machine learning-driven alert optimization; AML investigation; bias and ethical pitfalls in machine learning; and enterprise-level AI-driven Financial Crime Investigation (FCI) unit. There is also an Appendix which contains a detailed review of various data sciences approaches that are popular among practitioners. The book discusses each topic through real-life experiences. It also leverages the experience of Chief Compliance Officers of some large organizations to showcase real challenges that heads of large organizations face while dealing with this sensitive topic. It thus delivers a hands-on guide for setting up, managing, and transforming into a best-in-class financial crimes management unit. It is thus an invaluable resource for researchers, students, corporates, and industry watchers alike.
012 1853665428
081 Artificial Intelligence Applications in Banking and Financial Services
100 Springer E-Book
125aElektronischer Volltext - Campuslizenz
655e$uhttps://doi.org/10.1007/978-981-99-2571-1
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