Balance sheet outlier detection using a graph similarity algorithm

Steve Y. Yang, R. Cogill
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引用次数: 5

Abstract

Graph similarity measurement has been used in many applications, such as computational biology, text mining, pattern recognition, and computer vision. In this paper, we apply similarity measurement on graphs to measure structural differences in financial statements. Unconventional financial statement structures may potentially reveal deceptive intention of hiding certain information while making technically “correct” financial statements. Furthermore, unconventional financial statements may also lead to investment opportunities if legitimacy is not questioned. We construct an algorithm based on the metric of string edit distance as an approximation of graph similarity, and apply the Levenshtein algorithm with modified string edit costs to measure string edit distance. We demonstrate the effectiveness of this algorithm in capturing the sensitive changes of balance sheet structures by applying the algorithm in two experiments. The first experiment shows the algorithm is sensitive to all three basic edits (namely deletion, insertion and substitution) on a particular balance sheet, and the second experiment shows more than 90% clustering accuracy on real balance sheets.
资产负债表异常检测使用图相似算法
图相似度测量已经在许多应用中使用,例如计算生物学、文本挖掘、模式识别和计算机视觉。在本文中,我们运用相似性度量图来度量财务报表的结构差异。非常规的财务报表结构可能会在制作技术上“正确”的财务报表时潜在地揭示隐藏某些信息的欺骗性意图。此外,如果合法性不受质疑,非常规财务报表也可能带来投资机会。我们构造了一个基于字符串编辑距离度量作为图相似度近似值的算法,并应用带有修改字符串编辑代价的Levenshtein算法来度量字符串编辑距离。通过在两个实验中应用该算法,我们证明了该算法在捕捉资产负债表结构敏感变化方面的有效性。第一个实验表明,该算法对特定资产负债表上的所有三种基本编辑(即删除、插入和替换)都很敏感,第二个实验显示,在真实资产负债表上的聚类准确率超过90%。
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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