Local information advantage and stock returns: Evidence from social media

IF 3.2 3区 管理学 Q1 BUSINESS, FINANCE
Yuqin Huang, Feng Li, Tong Li, Tse-Chun Lin
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引用次数: 0

Abstract

We examine the information asymmetry between local and nonlocal investors with a large dataset of stock message board postings. We document that abnormal relative postings of a firm, that is, unusual changes in the volume of postings from local versus nonlocal investors, capture locals' information advantage. This measure positively predicts firms' short-term stock returns as well as those of peer firms in the same city. Sentiment analysis shows that posting activities primarily reflect good news, potentially due to social transmission bias and short-sales constraints. We identify the information driving return predictability through content-based analysis. Abnormal relative postings also lead analysts' forecast revisions. Overall, investors' interactions on social media contain valuable geography-based private information.

地方信息优势与股票回报:来自社交媒体的证据†
我们利用股票留言板发帖的大型数据集研究了本地和非本地投资者之间的信息不对称问题。我们发现,公司的异常相对发帖量(即本地投资者与非本地投资者发帖量的异常变化)能反映本地投资者的信息优势。这一指标可以积极预测公司的短期股票回报以及同城同行公司的股票回报。情绪分析表明,发帖活动主要反映的是好消息,这可能是由于社会传播偏差和卖空限制造成的。我们通过基于内容的分析确定了驱动回报可预测性的信息。异常的相对发帖也会导致分析师的预测修正。总体而言,投资者在社交媒体上的互动包含有价值的基于地理位置的私人信息。
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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来源期刊
CiteScore
6.20
自引率
11.10%
发文量
97
期刊介绍: Contemporary Accounting Research (CAR) is the premiere research journal of the Canadian Academic Accounting Association, which publishes leading- edge research that contributes to our understanding of all aspects of accounting"s role within organizations, markets or society. Canadian based, increasingly global in scope, CAR seeks to reflect the geographical and intellectual diversity in accounting research. To accomplish this, CAR will continue to publish in its traditional areas of excellence, while seeking to more fully represent other research streams in its pages, so as to continue and expand its tradition of excellence.
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