故意破产及其侦查方法

Gintarė Juškaitė
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引用次数: 0

摘要

破产可能发生在任何公司,但很难识别为个人利益而进行的故意破产。目前,没有精确的方法来识别故意破产,所以这个过程取决于调查员的技能和资格。本研究的目的是提供一种方法,在检查财务报表中的欺诈行为及其对破产概率的影响后,识别故意破产。本文明确了欺诈破产侦查的主要方法,并指出法医学是欺诈破产侦查的主要方法。本文以其他作者的研究为模型进行研究,检验破产预测方法的有效性和财务指标在发现欺诈方面的有效性。本研究评估了Altman Z'-Score模型的趋势,以及二元逻辑回归分析在有意和无意破产样本中的应用。回归分析提供了确定故意破产的模型,并确定了以下指标:净利润/资产、负债/资产、负债/权益和Altman Z'-Score。还进行了独立t检验,以显示故意破产和非故意破产之间财务比率手段的差异。t检验的结果表明,重要的是计算和评估以下附加指标:流动资产/资产,应收账款/收入。研究结果可能有助于确定有意公司破产的可能性,从而促进迄今为止使用的复杂方法。
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Intentional bankruptcies and methods of detection
Bankruptcy can happen to any company, but it is very difficult to identify intentional bankruptcies that are carried out for personal gain. Currently, there is no precise methodology for identifying intentional bankruptcies, so the process depends on the skills and qualifications of the investigator. The purpose of this research is to provide a method for identifying intentional bankruptcies after examining fraud in the financial statements and their impact on the probability of bankruptcy. The paper identifies the main methods of fraud bankruptcy detection, distinguishing forensic science as the main method for doing so. The paper conducts research, which was modeled on research conducted by other authors to test the effectiveness of bankruptcy prediction methods and the effectiveness of financial indicators in detecting fraud. The research evaluated the trends of the Altman Z'-Score model and the application of binary logistic regression analysis to a sample of intentional and unintentional bankruptcies. The regression analysis provided a model for determining intentional bankruptcies and identified the following indicators: net profit/assets, liabilities/assets, liabilities/equity, and Altman Z'-Score. An independent t-test was also performed to show the differences in the means of financial ratios between intentional and unintentional bankruptcies. The results of the T-test indicated that it is important to calculate and evaluate the following additional indicators: current assets/assets, receivables/income. The results of the research may help to identify the likelihood of intentional corporate bankruptcies and thus facilitate the sophisticated methods used to date.
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审稿时长
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