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Forecasting corporate financial performance using sentiment in annual reports for stakeholders' decision-making

机译:使用年度报告中的情绪预测利益相关方的决策,以预测公司的财务绩效

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摘要

This paper is aimed at examining the role of annual reports' sentiment in forecasting financial performance. The sentiment (tone, opinion) is assessed using several categorization schemes in order to explore various aspects of language used in the annual reports of U.S. companies. Further, we employ machine learning methods and neural networks to predict financial performance expressed in terms of the Z-score bankruptcy model. Eleven categories of sentiment (ranging from negative and positive to active and common) are used as the inputs of the prediction models. Support vector machines provide the highest forecasting accuracy. This evidence suggests that there exist non-linear relationships between the sentiment and financial performance. The results indicate that the sentiment information is an important forecasting determinant of financial performance and, thus, can be used to support decision-making process of corporate stakeholders.
机译:本文旨在研究年度报告情绪在预测财务绩效中的作用。为了探讨美国公司年度报告中使用的语言的各个方面,使用几种分类方案对情感(语调,观点)进行了评估。此外,我们采用机器学习方法和神经网络来预测以Z评分破产模型表示的财务绩效。十一类情感(从消极和积极到活跃和普遍)被用作预测模型的输入。支持向量机提供最高的预测准确性。该证据表明,情绪与财务绩效之间存在非线性关系。结果表明,情绪信息是财务绩效的重要预测指标,因此可用于支持企业利益相关者的决策过程。

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