使用图形计算的金融犯罪和欺诈检测:应用考虑与展望

Eren Kurshan, Honda Shen, Haojie Yu
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引用次数: 13

摘要

近年来,数字支付的空前增长推动了欺诈和金融犯罪的重大变化。在这种新的情况下,传统的欺诈检测方法,如基于规则的引擎,在很大程度上已经变得无效。使用图计算原理的人工智能和机器学习解决方案获得了极大的兴趣。图神经网络和新兴的自适应解决方案为未来的欺诈和金融犯罪检测提供了令人信服的机会。然而,在金融事务处理系统中实现基于图的解决方案带来了许多障碍和应用方面的考虑。在本文中,我们概述了金融犯罪领域的最新趋势,并讨论了当前和新兴图形解决方案面临的实施困难。我们认为,应用程序需求和实现挑战为开发有效的解决方案提供了关键的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Financial Crime & Fraud Detection Using Graph Computing: Application Considerations & Outlook
In recent years, the unprecedented growth in digital payments fueled consequential changes in fraud and financial crimes. In this new landscape, traditional fraud detection approaches such as rule-based engines have largely become ineffective. AI and machine learning solutions using graph computing principles have gained significant interest. Graph neural networks and emerging adaptive solutions provide compelling opportunities for the future of fraud and financial crime detection. However, implementing the graph-based solutions in financial transaction processing systems has brought numerous obstacles and application considerations to light. In this paper, we overview the latest trends in the financial crimes landscape and discuss the implementation difficulties current and emerging graph solutions face. We argue that the application demands and implementation challenges provide key insights in developing effective solutions.
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