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Predicting Corporate Credit Ratings Using Content Analysis of Annual Reports - A Naive Bayesian Network Approach

机译:使用年报内容分析预测公司信用等级-一种朴素贝叶斯网络方法

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Corporate credit ratings are based on a variety of information, including financial statements, annual reports, management interviews, etc. Financial indicators are critical to evaluate corporate creditworthiness. However, little is known about how qualitative information hidden in firm-related documents manifests in credit rating process. To address this issue, this study aims to develop a methodology for extracting topical content from firm-related documents using latent semantic analysis. This information is integrated with traditional financial indicators into a multi-class corporate credit rating prediction model. Informative indicators are obtained using a correlation-based filter in the process of feature selection. We demonstrate that Naive Bayesian networks perform statistically equivalent to other machine learning methods in terms of classification performance. We further show that the "red flag" values obtained using Naive Bayesian networks may indicate a low credit quality (non-investment rating classes) of firms. These findings can be particularly important for investors, banks and market regulators.
机译:公司信用评级基于各种信息,包括财务报表,年度报告,管理层访谈等。财务指标对于评估公司的信誉至关重要。但是,关于信用评级过程中如何显示企业相关文档中隐藏的定性信息知之甚少。为了解决这个问题,本研究旨在开发一种使用潜在语义分析从公司相关文档中提取主题内容的方法。此信息与传统的财务指标集成到一个多类别的公司信用评级预测模型中。在特征选择过程中,使用基于相关性的过滤器可获得信息性指标。我们证明,朴素贝叶斯网络在分类性能方面在统计上等同于其他机器学习方法。我们进一步表明,使用朴素贝叶斯网络获得的“危险信号”值可能表明企业的信用质量较低(非投资评级类别)。这些发现对于投资者,银行和市场监管者而言尤其重要。

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