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The cross section of expected holding period returns and their dynamics: A present value approach

机译:预期持有期收益的横截面及其动态:现值法

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We provide a tractable model of firm-level expected holding period returns using two firm fundamentals-book-to-market ratio and return on equity-and study the cross-sectional properties of the model-implied expected returns. We find that firm-level expected returns and expected profitability are time-varying but highly persistent and that forecasts of holding period returns strongly predict the cross section of future returns up to three years ahead. We show a highly significant predictive pooled regression slope for future quarterly returns of 0.86. The popular factor-based expected return models have either an insignificant or a significantly negative association with future returns. In supplemental analyses, we show that these forecasts are also informative of the time series variation in aggregate conditions. For a representative firm, the slope of the conditional expected return curve is more positive in good times, when expected short-run returns are relatively low, and the model-implied forecaster of aggregate returns exhibits modest predictive ability. Collectively, we provide a simple, theoretically motivated, and practically useful approach to estimating multi-period-ahead expected returns. (C) 2015 Elsevier B.V. All rights reserved.
机译:我们使用两个公司基本面(账面市值比和股本收益率)提供了一个可预测的公司层级预期持有期收益率模型,并研究了模型隐含的预期收益率的横截面特性。我们发现公司一级的预期收益和预期获利能力会随时间变化,但高度持久,并且对持有期收益的预测强烈地预测了未来三年内未来收益的横截面。对于未来的季度回报为0.86,我们显示出非常重要的预测合并回归斜率。流行的基于因子的预期收益模型与未来收益之间的关联不明显或显着负相关。在补充分析中,我们表明这些预测也可提供总体条件下时间序列变化的信息。对于一家有代表性的公司,当预期短期收益相对较低时,条件良好的预期收益曲线的斜率在良好时期更为正,并且模型暗示的总收益预测器显示出适度的预测能力。总的来说,我们提供了一种简单的,理论上有动机的,并且实用的方法来估算多个时期的预期收益。 (C)2015 Elsevier B.V.保留所有权利。

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