Asymmetric Attention and Stock Returns

P. Cziraki, J. Mondria, Thomas Wu
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引用次数: 41

Abstract

This paper constructs a new measure of attention allocation by local investors relative to nonlocals using aggregate search volume from Google. We first present a conceptual framework in which local investors optimally choose to focus their attention on local stocks when they receive private news, leading to an asymmetric allocation of attention between local and nonlocal investors. Consistent with the main prediction of this framework, we find that firms attracting abnormally high asymmetric attention from local relative to nonlocal investors earn higher returns. A portfolio that goes long in stocks with high asymmetric attention and short in stocks with low asymmetric attention has an alpha of 32 basis points per month. The results are stronger for stocks with a greater degree of information friction. The new measure of asymmetric attention allows one to infer the arrival of unobservable private information by observing investors’ attention allocation behavior. This paper was accepted by Karl Diether, finance.
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注意力不对称与股票收益
本文利用谷歌的总搜索量构建了一种新的本地投资者相对于非本地投资者的注意力分配度量。我们首先提出了一个概念框架,在这个框架中,本地投资者在收到私人新闻时最优地选择将注意力集中在本地股票上,从而导致本地和非本地投资者之间的注意力分配不对称。与该框架的主要预测一致,我们发现,相对于外地投资者,吸引本地投资者异常高的不对称关注的公司获得了更高的回报。如果一个投资组合做多关注度高度不对称的股票,做空关注度较低的股票,那么这个投资组合的alpha值为每月32个基点。对于信息摩擦程度较高的股票,结果更为明显。不对称注意力的新度量允许人们通过观察投资者的注意力分配行为来推断不可观察的私人信息的到来。这篇论文被金融学的卡尔·迪瑟接受了。
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