Classifying Forecasts

Michael S. Drake, James R. Moon, James D. Warren
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引用次数: 0

Abstract

We employ a novel machine learning technique to classify analysts’ forecast revisions into five types based on how the revision weighs publicly available signals. We label these forecast types as quant, sundry, contrarian, herder, and independent forecasts. Our tests reveal that a greater diversity of forecast types within the consensus is associated with increased consensus dispersion and improved consensus accuracy. Additionally, consensus diversity is associated with an improved information environment for firms, as reflected in reduced earnings announcement information asymmetry and volatility, higher earnings response coefficients, and faster price formation. Our study sheds light on how analysts revise their forecasts and documents capital market benefits associated with different analyst forecasting approaches.
预测分类
我们采用一种新颖的机器学习技术,根据预测修正对公开信号的权衡,将分析师的预测修正分为五种类型。我们将这些预测类型标记为量化预测、杂项预测、逆向预测、牧羊人预测和独立预测。我们的测试表明,共识中预测类型的多样性与共识分散性的增加和共识准确性的提高相关。此外,共识多样性还与公司信息环境的改善有关,这体现在收益公告信息不对称和波动性的降低、收益反应系数的提高以及价格形成的加快。我们的研究揭示了分析师如何修正其预测,并记录了与不同分析师预测方法相关的资本市场利益。
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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