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A Generalized Earnings-Based Stock Valuation Model with Learning

机译:带有学习的基于通用收益的股票估值模型

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摘要

We present a stock valuation model in an incomplete-information environment in which the unobservable mean of earnings growth rate (MEGR) is learned and price is updated continuously. We calibrate our model to a market portfolio to empirically evaluate its performance. Of the 8.84% total risk premium we estimate, the earnings growth premium is 4.57%, the short-rate risk contributes 3.38%, and the learning-induced risk premium on the unknown MEGR is 0.89% (a nontrivial 10% of the total risk premium). This result highlights the significant learning effect on valuation, implying an additional risk premium in an incomplete-information environment.
机译:我们提出了一种在不完整信息环境中的股票估值模型,在该模型中,学习了无法观察到的收益增长率(MEGR)平均值,并且不断更新价格。我们将模型校准为市场组合,以凭经验评估其绩效。在我们估计的8.84%的总风险溢价中,收入增长溢价为4.57%,短期利率占3.38%,未知MEGR的学习引起的风险溢价为0.89%(占总风险的10%)溢价)。该结果强调了学习对估值的显着影响,这意味着在信息不完整的环境中存在额外的风险溢价。

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