Benford’s Law and Artificial Intelligence Applied to COVID-19

G. C. Souza, R. Moreno, T. Pimenta
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Abstract

Newcomb-Benford Law or Benford Law (BL) is a simple and powerful tool to identifying potencial anomalies in supposedly natural phenomena. BL works by comparing the frequency of the first digits acquired from an event with a pattern empirically established by Benford. The behavior described by Benford is typical in many natural processes and, therefore, several studies use the technique to try to identify anomalies that might suggest fraud in some data sets. Another trend is the use of tools that use artificial intelligence to support auditing. Considering that a COVID-19 pandemic is a natural event, it is possible to establish criteria for comparing the numbers released by governments and their relationship with BL. This research models Support Vector Machines (SVM) according to BL and makes a reliability analysis of the numbers of new cases and deaths, considering the pandemic scenario in 11 countries. Then, the work makes a statistical analysis according to BL and compares it to the results predicted by the algorithm. The results show that the network was able to make predictions that reinforce the BL results. Only two countries (Germany and Japan) presented results fully adherent to BL, either by statistical treatment or SVM prediction in all scenarios. The article used the data provided by Johns Hopkins University.
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本福德定律与人工智能在COVID-19中的应用
纽科姆-本福德定律或本福德定律(BL)是一种简单而强大的工具,用于识别所谓的自然现象中的潜在异常。BL的工作原理是将从事件中获得的第一个数字的频率与本福德根据经验建立的模式进行比较。Benford描述的行为在许多自然过程中是典型的,因此,一些研究使用该技术试图识别可能表明某些数据集中存在欺诈的异常情况。另一个趋势是使用使用人工智能的工具来支持审计。考虑到COVID-19大流行是一个自然事件,可以建立比较各国政府发布的数字及其与BL的关系的标准。本研究根据BL对支持向量机(SVM)进行建模,并考虑11个国家的大流行情景,对新增病例数和死亡人数进行可靠性分析。然后,根据BL进行统计分析,并与算法预测结果进行比较。结果表明,该网络能够做出强化BL结果的预测。只有两个国家(德国和日本)在所有场景下通过统计处理或SVM预测的结果完全符合BL。这篇文章使用了约翰霍普金斯大学提供的数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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