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Detecting Patterns of Fraudulent Behavior in Forensic Accounting

机译:法务会计中欺诈行为的检测模式

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摘要

Often evidence from a single case does not reveal any suspicious patterns to aid investigations in forensic accounting and other forensic fields. In contrast, correlation of sets of evidence from several cases with suitable background knowledge may reveal suspicious patterns. Link Discovery (LD) has recently emerged as a promising new area for such tasks. Currently LD mostly relies on deterministic graphical techniques. Other relevant techniques are Bayesian probabilistic and causal networks. These techniques need further development to handle rare events. This paper combines first-order logic (FOL) and probabilistic semantic inference (PSI) to address this challenge. Previous research has shown this approach is computationally efficient and complete for statistically significant patterns. This paper shows that a modified method can be successful for discovering rare patterns. The method is illustrated with an example of discovery of suspicious patterns.
机译:通常,来自单个案件的证据不会揭示任何可疑模式,以协助法医会计和其他法医领域的调查。相反,来自若干案件的证据集与适当的背景知识之间的相关性可能会揭示出可疑的模式。 Link Discovery(LD)最近已成为此类任务的有希望的新领域。当前,LD主要依靠确定性图形技术。其他相关技术是贝叶斯概率网络和因果网络。这些技术需要进一步发展以处理罕见事件。本文结合了一阶逻辑(FOL)和概率语义推理(PSI)来解决这一挑战。先前的研究表明,这种方法对于统计上重要的模式而言,在计算上是有效的,并且是完整的。本文表明,一种改进的方法可以成功地发现稀有模式。举例说明发现可疑模式的方法。

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