使用新闻和财务比率的信用评级变化模型

Hsin-Min Lu, Feng-Tse Tsai, Hsinchun Chen, Mao-Wei Hung, Shu-Hsing Li
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引用次数: 21

摘要

信用评级将信用风险信息传递给金融市场的参与者,包括投资者、发行人、中介机构和监管机构。准确的信用评级信息在支持健全的财务决策过程中起着至关重要的作用。以往对信用评级模型的研究大多是基于会计和市场信息。文本数据在很大程度上被忽略了,尽管它可以传达有关公司前景的及时信息。为了利用新闻全文中的附加信息进行信用评级预测,我们设计并实现了一个新闻全文分析系统,该系统提供了公司层面的覆盖范围、主题和情绪变量。由于新闻报道的不均匀,新的特定主题情绪变量包含了很大一部分缺失值。缺失值问题对信用评级预测方法提出了新的挑战。我们通过开发一个缺失容忍多项式概率(MT-MNP)模型来解决这个问题,该模型基于贝叶斯理论框架来估算缺失值。我们使用七年半的真实信用评级和新闻全文数据进行的实验表明:(1)整体新闻报道可以解释未来的信用评级变化,而聚合的新闻情绪不能;(2)特定话题的新闻报道和情绪对未来信用评级变化有统计学显著影响;(3)特定主题的负面情绪比特定主题的积极情绪对未来信用评级变化的影响更显著;(4)与支持向量机(SVM)相比,MT-MNP在预测未来信用评级变化方面表现更好。用宏观平均F-measure测量的性能差距很小,但一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Credit Rating Change Modeling Using News and Financial Ratios
Credit ratings convey credit risk information to participants in financial markets, including investors, issuers, intermediaries, and regulators. Accurate credit rating information plays a crucial role in supporting sound financial decision-making processes. Most previous studies on credit rating modeling are based on accounting and market information. Text data are largely ignored despite the potential benefit of conveying timely information regarding a firm’s outlook. To leverage the additional information in news full-text for credit rating prediction, we designed and implemented a news full-text analysis system that provides firm-level coverage, topic, and sentiment variables. The novel topic-specific sentiment variables contain a large fraction of missing values because of uneven news coverage. The missing value problem creates a new challenge for credit rating prediction approaches. We address this issue by developing a missing-tolerant multinomial probit (MT-MNP) model, which imputes missing values based on the Bayesian theoretical framework. Our experiments using seven and a half years of real-world credit ratings and news full-text data show that (1) the overall news coverage can explain future credit rating changes while the aggregated news sentiment cannot; (2) topic-specific news coverage and sentiment have statistically significant impact on future credit rating changes; (3) topic-specific negative sentiment has a more salient impact on future credit rating changes compared to topic-specific positive sentiment; (4) MT-MNP performs better in predicting future credit rating changes compared to support vector machines (SVM). The performance gap as measured by macroaveraging F-measure is small but consistent.
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