使用自然语言处理来评估文本对读者的有用性:电话会议和收益预测的案例

Richard Frankel, Jared N. Jennings, Joshua A. Lee
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引用次数: 12

摘要

我们研究了支持向量回归(SVR)、监督LDA (sLDA)、随机森林回归树(RF)和“语气”是否从电话会议中提取出与人类读者能够识别的有用信息相关的叙述性内容。我们发现,每个叙述内容指标(以及一个综合指标)解释了第一季度电话会议后发布的第一季度分析师预测修正的一部分。当综合指标适应背景(正/负回报;高方差/低方差)并忽略稀疏词。这种相关性与财务信号(现金流变化、盈利意外和管理层预测)的相关性是可比较和递增的,这表明读者提取的电话会议的叙述内容具有经济意义。我们的研究结果表明,叙事内容模式具有合理的构念效度,并有可能通过进一步思考文本的独特性来提高这种效度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Natural Language Processing to Assess Text Usefulness to Readers: The Case of Conference Calls and Earnings Prediction
We examine whether support vector regressions (SVR), supervised LDA (sLDA), random forest regression trees (RF), and ‘tone’ extract narrative content from conference calls that correlates with useful information that a human reader would identify. We find that each narrative-content measure (along with a composite measure) explains a portion of analyst-forecast revisions for quarter q 1 issued after the conference call in quarter q. Correlation with analyst-forecast revisions improves when the composite measure adapts to context (positive/negative returns; high variance/low variance) and ignores sparse words. The correlation is comparable and incremental to that of financial signals (cash-flow changes, earnings surprises, and management forecasts), which suggests that the narrative content of conference calls as extracted by readers is economically significant. Our results suggest that models of narrative content have reasonable construct validity and that this validity is likely to be improved by further thought on the unique characteristics of text.
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