可公开获得的预期收益的价值令人惊讶

Samuel J. Frame , Robin Tu , Jessica M. Martin , Justin M. Berding
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引用次数: 0

摘要

本文演示了如何收集和管理公共领域中可用的免费预测盈余意外。我们收集的预测收益意外值预计比相应的共识估计和其他预测收益更准确,但直到最近才在学术文献中进行研究。我们发现,数据来源和预期收益本身存在许多意想不到的、有问题的特质。这些数据很难处理,可能是故意的,并且包含大大小小的极值,这些极值在它们的起源中是意想不到的。目前尚不清楚这些观察结果是如何选择公开发布的。在管理和合并预测收益意外与其他自由获取的公共信息(特别是股票代码和回报数据)的数据科学练习之后,我们检查预测收益意外,并调查预测收益意外如何影响短期股票价格。我们发现了预测收益意外与随后的短期回报之间存在线性关联的证据,尽管其重要性是由极端异常值驱动的。最重要的是,我们利用预测的意外收益来形成短期交易策略。利用预期收益惊喜获利最多的交易策略是反向交易策略。
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The value of publicly available predicted earnings surprises

This paper demonstrates how to collect and manage free predicted earnings surprises available in the public domain. The predicted earnings surprises we collect are expected to be more accurate than the corresponding consensus estimates and other predicted earnings, but have not been studied in the academic literature until very recently. We find a number of unexpected and problematic idiosyncrasies with the source of the data and the predicted earnings surprises themselves. The data are hard to work with, perhaps by design, and contain both big and small extreme values that are unexpected given their origin. It is unclear how these observations are selected for public release. After the data science exercise of managing and merging the predicted earnings surprises with other freely available public information (specifically ticker symbols and return data), we examine the predicted earnings surprises and investigate how the predicted earnings surprises affect short-term stock prices. We find evidence of a linear association between the predicted earnings surprises and subsequent short-term returns, although the significance is driven by extreme outliers. Most importantly, we use the predicted earnings surprises to form short-term trading strategies. The most profitable trading strategy that exploits the predicted earnings surprises is a contrarian trading strategy.

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来源期刊
Journal of Finance and Data Science
Journal of Finance and Data Science Mathematics-Statistics and Probability
CiteScore
3.90
自引率
0.00%
发文量
15
审稿时长
30 days
期刊最新文献
Unsupervised generation of tradable topic indices through textual analysis Optimal rebalancing strategies reduce market variability Symbolic Modeling for financial asset pricing Interpretable machine learning model for predicting activist investment targets Technical patterns and news sentiment in stock markets
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