检测上市公司管理层欺诈

Detecting Management Fraud in Public Companies

Management Science · 2010
被引 343 · 同刊同年前 3%
人大 A+FT50UTD24ABS 4*

中文导读

提出一种基于支持向量机和金融核方法的管理层欺诈检测方法,利用公开财务数据在测试集上正确识别80%的欺诈案例和90.6%的非欺诈案例,且优于其他领先研究。

Abstract

This paper provides a methodology for detecting management fraud using basic financial data. The methodology is based on support vector machines. An important aspect therein is a kernel that increases the power of the learning machine by allowing an implicit and generally nonlinear mapping of points, usually into a higher dimensional feature space. A kernel specific to the domain of finance is developed. This financial kernel constructs features shown in prior research to be helpful in detecting management fraud. A large empirical data set was collected, which included quantitative financial attributes for fraudulent and nonfraudulent public companies. Support vector machines using the financial kernel correctly labeled 80% of the fraudulent cases and 90.6% of the nonfraudulent cases on a holdout set. Furthermore, we replicate other leading fraud research studies using our data and find that our method has the highest accuracy on fraudulent cases and competitive accuracy on nonfraudulent cases. The results validate the financial kernel together with support vector machines as a useful method for discriminating between fraudulent and nonfraudulent companies using only publicly available quantitative financial attributes. The results also show that the methodology has predictive value because, using only historical data, it was able to distinguish fraudulent from nonfraudulent companies in subsequent years.

管理舞弊检测支持向量机金融核函数财务数据