Crowdsourced Forecasts and the Market Reaction to Earnings Announcement News

Sandra G. Schafhäutle, David Veenman
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Abstract

ABSTRACT This study examines whether crowdsourced forecasts of earnings and revenues help investors unravel bias in earnings announcement news, which is commonly derived from analyst forecasts. Our results suggest that investors, on average, understand and price the predictive signals reflected in crowdsourced forecasts about the bias in analyst-based earnings and revenue surprises. Using the staggered addition of firms to the Estimize platform, we find that crowdsourced coverage is associated with reductions in the mispricing of forecast bias and declines in earnings announcement premia. We further find some evidence that managers use income-increasing accruals to meet the crowdsourced forecast benchmark and that they respond to crowdsourced coverage through increased downward earnings and revenue guidance. Overall, we conclude that user-generated content on crowdsourced financial information platforms helps investors discount biases in traditional equity research and thereby better process the news in earnings announcements. JEL Classifications: G14; G20; M41.
众包预测和市场对收益公告新闻的反应
摘要本研究探讨了收益和收入的众包预测是否有助于投资者消除收益公告新闻中的偏见,这种偏见通常来源于分析师的预测。我们的研究结果表明,平均而言,投资者理解并定价了众包预测中反映的预测信号,这些预测信号反映了基于分析师的收益和收入意外的偏见。通过将公司错开加入Estimize平台,我们发现众包覆盖与预测偏差错误定价的减少和收益公告溢价的下降有关。我们进一步发现一些证据表明,管理者使用收入增加的应计项目来满足众包预测基准,他们通过增加向下的收益和收入指导来应对众包覆盖。总体而言,我们得出结论,众包金融信息平台上的用户生成内容有助于投资者消除传统股票研究中的偏见,从而更好地处理收益公告中的新闻。JEL分类:G14;20国集团(G20);M41。
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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