In modern litigation, fraud investigators often face an overwhelming number of documents that must be reviewed throughout a matter. In the majority of legal cases, fraud investigators do not know beforehand, exactly what they are looking for, nor where to find it. In addition, fraudsters may use deception to hide their behaviour and intentions by using code words. Effectively, this means fraud investigators are looking for a needle in the haystack without knowing what the needle looks like. As part of a larger research program, we use a framework to expedite the investigation process applying text-mining and machine learning techniques. We structure this framework using three well-known methods in fraud investigations: (i) the fraud triangle (ii) the golden ("W") investigation questions, and (iii) the analysis of competing hypotheses. With this framework, it is possible to automatically organize investigative data, so it is easier for investigators to find answers to typical investigative questions. In this research, we focus on one of the components of this framework: the identification of the usage of code words by fraudsters. Here for, a novel (annotated) synthetic data set is created containing such code words, hidden in normal email communication. Subsequently, a range of machine learning techniques are employed to detect such code words. We show that the state-of-the-art BERT model significantly outperforms other methods on this task. With this result, we demonstrate that deep neural language models can reliably (F1 score of 0.9) be applied in fraud investigations for the detection of code words.
翻译:在现代诉讼中,欺诈调查员往往面临大量必须在整个事项中审查的文件。在大多数法律案件中,欺诈调查员并不事先知道,确切地说他们正在寻找什么,或在哪里找到它。此外,欺诈调查员可能利用欺骗手段,用代码词隐藏其行为和意图。实际上,这意味着欺诈调查员在干草堆中寻找针头,而不知道针头长什么样。作为更大的研究方案的一部分,我们使用一个框架来加快调查过程,采用文字挖掘和机器学习技术。我们在欺诈调查中使用三种众所周知的方法来构建这一框架:(一) 欺诈三角(二) 金色(W)调查问题,以及(三)对相互竞争的假冒进行分析。在这个框架内,可以自动组织调查数据,这样调查员更容易找到典型调查问题的答案。在这项研究中,我们集中研究这个框架的一个组成部分:识别欺诈者使用的代码1 。在这里,我们用一种新式(附加说明的)合成数据集,包含这种代码的字型,隐藏在正常的电子邮件通信中。我们随后用一种常规的代码来测量。我们用这种机器的系列来测量。我们用这样的标准,在这样的系统里,我们用一种非常的代码来测量。