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首页> 外文期刊>The review of financial studies >Predicting Excess Stock Returns Out of Sample: Can Anything Beat the Historical Average?
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Predicting Excess Stock Returns Out of Sample: Can Anything Beat the Historical Average?

机译:预测过剩的样本股票回报率:有什么能超过历史平均水平吗?

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Goyal and Welch (2007) argue that the historical average excess stock return forecasts future excess stock returns better than regressions of excess returns on predictor variables. In this article, we show that many predictive regressions beat the historical average return, once weak restrictions are imposed on the signs of coefficients and return forecasts. The out-of-sample explanatory power is small, but nonetheless is economically meaningful for mean-variance investors. Even better results can be obtained by imposing the restrictions of steady-state valuation models, thereby removing the need to estimate the average from a short sample of volatile stock returns.
机译:Goyal and Welch(2007)认为,历史平均超额股票收益率预测未来超额股票收益率要好于预测变量的超额收益率回归。在本文中,我们显示,一旦对系数和收益预测的符号施加了弱限制,许多预测回归将超过历史平均收益。样本外的解释力很小,但对均值方差投资者而言在经济上有意义。通过施加稳态估值模型的限制,甚至可以获得更好的结果,从而无需从短期的波动性股票收益率样本中估算平均值。

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