投资者情绪:零售交易员活动方法

IF 3.6 Q1 BUSINESS, FINANCE
Dave Berger
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引用次数: 30

摘要

目的:本研究直接从零售交易者的活动中创建投资者情绪的度量,以识别错误估值,并检查情绪与随后回报之间的联系。本研究利用一家大型折扣经纪公司的投资者报告,其中包括净买入、净新账户和净新资产等活动指标,利用主成分创建了一个衡量散户投资者情绪的指标。本研究透过条件均值与回归分析,探讨情绪与回报的关系。研究发现:零售情绪活动与bbb趋势搜索数据一致,对零售情绪最敏感的公司往往是规模小、年轻且波动较大的公司。在零售情绪高涨的时期之前,随后的市场回报就很糟糕。横截面结果详细说明了难以估值或难以套利的公司对后续回报的最大影响。原创性/价值本研究将零售交易商活动的丰富衡量标准与随后的市场和横截面回报联系起来。这些结果加深了我们对噪音交易者风险和总体投资者情绪的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investor sentiment: a retail trader activity approach
Purpose This study creates a measure of investor sentiment directly from retail trader activity to identify misvaluation and to examine the link between sentiment and subsequent returns. Design/methodology/approach Using investor reports from a large discount brokerage that include measures of activity such as net buying, net new accounts and net new assets, this study creates a measure of retail trader sentiment using principal components. This study examines the relation between sentiment and returns through conditional mean and regression analyses. Findings Retail sentiment activity coincides with aggregate Google Trends search data and firms with the greatest sensitivity to retail sentiment tend to be small, young and volatile. Periods of high retail sentiment precede poor subsequent market returns. Cross-sectional results detail the strongest impact on subsequent returns within difficult to value or difficult to arbitrage firms. Originality/value This study links a rich measure of retail trader activity to subsequent market and cross-sectional returns. These results deepen our understanding of noise trader risk and aggregate investor sentiment.
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来源期刊
CiteScore
4.30
自引率
0.00%
发文量
18
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