基于机器学习和遗传算法的财务报表舞弊检测混合模型

Akbar Javadian Kootanaee, Abbas Ali Poor Aghajan, M. H. Shirvani
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引用次数: 15

摘要

财务报表舞弊已日益成为企业、政府和投资者面临的严重问题。事实上,这威胁到资本市场、企业负责人甚至审计行业的可靠性。审计人员尤其面临着明显无法发现大规模欺诈的问题,有多种方法可以识别这一问题。为了识别这个问题,大多数提出的方法都是基于现有算法的,并且只试图识别人工或简单的数据挖掘方法,这些方法开销高,成本也很高。迄今为止提出的数据挖掘方法具有较高的计算开销或较低的准确性。本研究的目的是提出一个模型,其中使用带有支持向量机的改进ID3决策树作为混合方法,并应用遗传算法和多层感知器神经网络来提高性能和准确性。已经使用了更有效的特征选择来减少计算开销。在所提出的方法中提出的树具有尽可能低的深度,因此具有高速度和低计算开销。为此,对德黑兰证券交易所151家上市公司2014-2015年的财务报表进行了调查,并使用ANOVA检验提取了125个财务比率,选择了23个欺诈相关比率作为模型输入数据。与类似模型相比,所提出的模型具有约80%的预测精度的高精度。
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A hybrid model based on machine learning and genetic algorithm for detecting fraud in financial statements
Financial statement fraud has increasingly become a serious problem for business, government, and investors. In fact, this threatens the reliability of capital markets, corporate heads, and even the audit profession. Auditors in particular face their apparent inability to detect large-scale fraud, and there are various ways to identify this problem. In order to identify this problem, the majority of the proposed methods are based on existing algorithms and have only attempted to identify human or simple data mining methods that have high overhead and are also costly. The data mining methods presented so far have had high computational overhead or low accuracy. The purpose of this study is to present a model in which an improved ID3 decision tree with a support vector machine is used as a hybrid approach and also to improve the performance and accuracy, genetic algorithm and multilayer perceptron neural networks are applied. More efficient feature selection has been used to reduce computational overhead. The tree proposed in the proposed method has the lowest depth possible and therefore has high velocity and low computational overhead. For this purpose, the financial statements of 151 listed companies in Tehran Stock Exchange during 2014-2015 were surveyed and 125 financial ratios were extracted using ANOVA test, 23 fraud related ratios were selected as model input data. The proposed model has a high accuracy of about 80% of prediction accuracy compared to similar models.
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来源期刊
Journal of Optimization in Industrial Engineering
Journal of Optimization in Industrial Engineering Engineering-Industrial and Manufacturing Engineering
CiteScore
2.90
自引率
0.00%
发文量
0
审稿时长
32 weeks
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