仔细倾听:衡量公司信息披露中的语气

IF 6.3 2区 管理学 Q1 BUSINESS, FINANCE
Jonas Ewertz, Charlotte Knickrehm, Martin Nienhaus, Doron Reichmann
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引用次数: 0

摘要

我们研究了机器学习方法在公司披露中测量声调的有用性。我们记录了这些方法背后广泛采用的基于演员的训练数据与公司披露中的语音之间的严重不匹配。我们发现现有的模型在其训练域内实现了近乎完美的声调分类。然而,当在电话会议中对实际的高管演讲进行测试时,他们的表现下降到了偶然的水平。因此,我们引入了FinVoc2Vec,这是一种深度学习模型,可以适应电话会议的录音,并比随机更准确地分类高管演讲的声调。FinVoc2Vec估计与未来公司业绩有关,可用于构建盈利的股票投资组合。在我们的分析中,以前的声调模型的估计在很大程度上与公司业绩无关。我们的研究结果强调了在会计和金融领域特定的语音分析方法的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Listen Closely: Measuring Vocal Tone in Corporate Disclosures
We examine the usefulness of machine learning approaches for measuring vocal tone in corporate disclosures. We document a substantial mismatch between the widely adopted actor‐based training data underlying these approaches and speech in corporate disclosures. We find that existing models achieve near‐perfect vocal tone classification within their training domain. However, when tested on actual executive speech during conference calls, their performance declines to chance levels. We thus introduce FinVoc2Vec, a deep learning model that adapts to audio recordings of conference calls and classifies the vocal tone of executive speech significantly more accurately than chance. FinVoc2Vec estimates are associated with future firm performance and can be used to construct profitable stock portfolios. Throughout our analyses, estimates from previous vocal tone models are largely unrelated to firm performance. Our findings emphasize the importance of a domain‐specific approach to voice analysis in accounting and finance.
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来源期刊
Journal of Accounting Research
Journal of Accounting Research BUSINESS, FINANCE-
CiteScore
7.80
自引率
6.80%
发文量
53
期刊介绍: The Journal of Accounting Research is a general-interest accounting journal. It publishes original research in all areas of accounting and related fields that utilizes tools from basic disciplines such as economics, statistics, psychology, and sociology. This research typically uses analytical, empirical archival, experimental, and field study methods and addresses economic questions, external and internal, in accounting, auditing, disclosure, financial reporting, taxation, and information as well as related fields such as corporate finance, investments, capital markets, law, contracting, and information economics.
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