论文标题

探索性研究来自收入电话的股票价格变动

An Exploratory Study of Stock Price Movements from Earnings Calls

论文作者

Medya, Sourav, Rasoolinejad, Mohammad, Yang, Yang, Uzzi, Brian

论文摘要

金融市场分析主要集中于从损益表或每股收益报告中报告的会计,股票价格和其他数值硬数据中提取信号。然而,众所周知,决策者通常使用基于软文本的文档来解释他们叙述的硬数据。分析非结构化和软文本数据的计算方法的最新进展为理解金融市场行为的可能性提供了可能改善投资和市场资产的可能性。软数据的关键且普遍存在的形式是收益调用。收入电话是定期的(通常是季度)的陈述,通常是由首席执行官发表的,他们试图影响投资者对公司过去和未来绩效的期望。在这里,我们研究了收入电话,公司销售,股票绩效和分析师建议之间的统计关系。我们的研究涵盖了十年的观察,从2010年1月至2019年12月,大约有6300家上市公司的收入电话记录记录。在这项研究中,我们报告了三个新颖的发现。首先,在收益之前提出的专业分析师的买卖建议与收益电话后的股票价格变动的相关性较低。其次,使用基于图形神经网络的方法来处理收入呼叫的语义特征,我们可以可靠,准确地预测经济五个主要领域的股票价格变动。第三,成绩单的语义特征比每股销售和收入(即在大多数情况下的传统硬数据)更可预测股票价格变动。

Financial market analysis has focused primarily on extracting signals from accounting, stock price, and other numerical hard data reported in P&L statements or earnings per share reports. Yet, it is well-known that the decision-makers routinely use soft text-based documents that interpret the hard data they narrate. Recent advances in computational methods for analyzing unstructured and soft text-based data at scale offer possibilities for understanding financial market behavior that could improve investments and market equity. A critical and ubiquitous form of soft data are earnings calls. Earnings calls are periodic (often quarterly) statements usually by CEOs who attempt to influence investors' expectations of a company's past and future performance. Here, we study the statistical relationship between earnings calls, company sales, stock performance, and analysts' recommendations. Our study covers a decade of observations with approximately 100,000 transcripts of earnings calls from 6,300 public companies from January 2010 to December 2019. In this study, we report three novel findings. First, the buy, sell and hold recommendations from professional analysts made prior to the earnings have low correlation with stock price movements after the earnings call. Second, using our graph neural network based method that processes the semantic features of earnings calls, we reliably and accurately predict stock price movements in five major areas of the economy. Third, the semantic features of transcripts are more predictive of stock price movements than sales and earnings per share, i.e., traditional hard data in most of the cases.

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