数据挖掘应用程序检测印尼上市公司的财务欺诈

Adila Afifah Rizki, I. Surjandari, Reggia Aldiana Wayasti
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引用次数: 17

摘要

注册舞弊审查员协会解释说,有三种类型的职业舞弊:财务报表舞弊、资产挪用和腐败。在这三者中,财务报表欺诈造成的损失最大,2014年损失达100万美元。财务报表具有重要的作用,作为一个公司成功的指标,也描绘了公司的整体状况,决定公司的股票价格,并决定公司是否可以获得贷款。鉴于其重要作用,许多欺诈案件发生了。进行审计活动是为了尽量减少损失,但是可用的审计员数量有限,而且传统审计所需的时间相当长。因此,需要一种有效的财务舞弊检测模型来帮助审计人员分析财务报表。本研究采用了支持向量机(SVM)和人工神经网络(ANN)等数据挖掘算法。本研究的结果为审计师提供了洞察,发现财务舞弊的重要指标是盈利能力和效率。Feature selection将SVM算法的准确率提高到88.37%。对于没有特征选择的数据,人工神经网络的准确率最高,为90.97%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data mining application to detect financial fraud in Indonesia's public companies
Association of Certified Fraud Examiners explains that there are 3 types of occupational fraud: financial statement fraud, asset misappropriation and corruption. Among these three, financial statement fraud caused the biggest losses, which amounted to $ 1,000,000 in 2014. Financial statement has important role as an indicator of the success of a company, also for depicting the overall condition of the company, deciding company's stock price, and determining whether the company could be granted a loan or not. Given its important role, many cases of fraud occur. Audit activities are conducted to minimize losses, but the number of available auditors is limited, and the time required for traditional audit is quite long. Therefore, an effective model of financial fraud detection is needed to help auditors in analyzing financial statements. Data mining algorithms, support vector machine (SVM) and artificial neural network (ANN), were applied in this study. The results of this study give insight to the auditor that significant indicators in detecting financial fraud are profitability and efficiency. Feature selection improves SVM algorithm accuracy to 88.37%. ANN produces the highest accuracy, 90.97%, for data without feature selection.
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