A Unified Approach to Fraudulent Detection

Anurag Dutta, M. Choudhury, A. K. De
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引用次数: 7

Abstract

With the increase in demands and price of goods and services, fraudulency has caught a great height. But, it can’t be prohibited completely in the first stage. The detection of fraud has attracted continuous attention from academia, industry and regulatory agencies, and it is a challenging task for the researchers to develop a fraud detection framework. Starting from the late 1900s, ‘Benford’s law’ has served this purpose well. Abruptly, within a decade of its application lots and lots of fraudulency started getting seized. Later on, this law was used for detecting fairness of the elections, forensics, finances, etc. This article proposes a formula specifically derived from Zipf’s law that can detect fairness and fallacies in datasets involving forensics, finances, elections, and similar socio-economic issues. Unlike Benford’s law, our proposed formula is not dependent on any sort of observations, rather it is backboned by rigorous proof. Finally, we have done a comparison analysis between Benford’s law and our proposed formula graphically. All the data sets used by us have been rigorously studied, and many fitting tests have been applied to them.
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欺诈检测的统一方法
随着商品和服务的需求和价格的增加,欺诈行为已经达到了一个很高的高度。但是,在第一阶段是不可能完全禁止的。欺诈检测一直受到学术界、工业界和监管机构的关注,开发欺诈检测框架是一项具有挑战性的任务。从20世纪后期开始,“本福德定律”就很好地发挥了这一作用。突然间,在其应用的十年内,大量的欺诈行为开始被查获。后来,该法律被用于检测选举、司法、财政等方面的公平性。本文提出了一个特别从Zipf定律衍生出来的公式,可以检测涉及法医学、金融、选举和类似社会经济问题的数据集的公平性和谬误。与本福德定律不同,我们提出的公式不依赖于任何形式的观察,而是由严格的证明支撑的。最后,用图形对本福德定律和我们提出的公式进行了对比分析。我们使用的所有数据集都经过了严格的研究,并对它们进行了许多拟合检验。
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