Is Positive Sentiment in Corporate Annual Reports Informative? Evidence from Deep Learning

M. Azimi, Anup Agrawal
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引用次数: 14

Abstract

We use a novel text classification approach from deep learning to more accurately measure sentiment in a large sample of 10-Ks. In contrast to most prior literature, we find that positive and negative sentiments predict abnormal returns and abnormal trading volume around the 10-K filing date and future firm fundamentals and policies. Our results suggest that the qualitative information contained in corporate annual reports is richer than previously found. Both positive and negative sentiments are informative when measured accurately, but they do not have symmetric implications, suggesting that a net sentiment measure advocated by prior studies would be less informative. (JEL C81, D83, G10, G14, G30, M41) Received February 12, 2020; editorial decision January 5, 2021 by Editor Hui Chen
企业年报中的积极情绪是否具有信息价值?来自深度学习的证据
我们使用一种来自深度学习的新颖文本分类方法来更准确地测量10- k大样本中的情绪。与大多数先前的文献相比,我们发现积极和消极的情绪预测了10-K申请日期前后的异常回报和异常交易量以及未来的公司基本面和政策。我们的研究结果表明,公司年报中包含的定性信息比以前发现的更丰富。当测量准确时,积极和消极的情绪都是有信息的,但它们没有对称的含义,这表明以前的研究提倡的净情绪测量的信息会更少。(JEL C81, D83, G10, G14, G30, M41)收稿日期:2020年2月12日;2021年1月5日编辑陈慧
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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