2020
DOI: 10.1142/s1793351x20300022
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Graph Computing for Financial Crime and Fraud Detection: Trends, Challenges and Outlook

Abstract: The rise of digital payments has caused consequential changes in the financial crime landscape. As a result, traditional fraud detection approaches such as rule-based systems have largely become ineffective. Artificial intelligence (AI) and machine learning solutions using graph computing principles have gained significant interest in recent years. Graph-based techniques provide unique solution opportunities for financial crime detection. However, implementing such solutions at industrial-scale in real-time fi… Show more

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Cited by 30 publications
(12 citation statements)
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References 55 publications
(58 reference statements)
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“…In this research, a hybrid feature selection model is used, which combines both filter and wrapper techniques. As shown in figure [2], some group features showed high correlation results.…”
Section: Literature Surveymentioning
confidence: 88%
See 2 more Smart Citations
“…In this research, a hybrid feature selection model is used, which combines both filter and wrapper techniques. As shown in figure [2], some group features showed high correlation results.…”
Section: Literature Surveymentioning
confidence: 88%
“…According to the No Free Lunch Theorem, no single model or algorithm can handle all classification problems. Furthermore, each different algorithm has its advantages and disadvantages as illustrated in Table [2]. Consequently, the combination of several algorithms exploits the weaknesses of one, such as overfitting.…”
Section: Model Developmentmentioning
confidence: 99%
See 1 more Smart Citation
“…Chen et al (2018) aimed to provide a survey of methods that applied machine‐learning algorithms to detect suspicious transactions. Kurshan and Shen (2020) reviewed the literature on graphical methods for detecting financial fraud, which mapped existing procedures and described that the combination of graphical methods with algorithms provides better fraud detection. Kurshan et al (2020) explored fraud detection methods based on graphical applications (based on machine learning and artificial intelligence concepts), addressing fraud in general and combining existing techniques with graphical analysis.…”
Section: Anti‐money Laundering and Financial Fraud Detectionmentioning
confidence: 99%
“…Including payment fraud, identity theft, financial scam and insurance fraud, financial fraud has a variety of types and has an increasing trend (Kurshan and Shen, 2020). Observing that fraudsters tend to have abnormal connectivity with other users, there is a trend to present users' relations in a graph and thus, the fraud detection task could be formulated as a node classification task.…”
Section: Fraud Detectionmentioning
confidence: 99%