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Efficient Prediction of Excess Returns

机译:超额收益的有效预测

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摘要

It is well known that augmenting a standard linear regression model with variables that are correlated with the error term but uncorrelated with the original regressors will increase asymptotic efficiency of the original coefficients. We argue that in the context of predicting excess returns, valid augmenting variables exist and are likely to yield substantial gains in estimation efficiency and, hence, predictive accuracy. The proposed augmenting variables are ex post measures of an unforecastable component of excess returns: ex post errors from macroeconomic survey forecasts and the surprise components of asset price movements around macroeconomic news announcements. These "surprises" cannot be used directly in forecasting-they are not observed at the time that the forecast is made-but can nonetheless improve forecasting accuracy by reducing parameter estimation uncertainty. We derive formal results about the benefits and limits of this approach and apply it to standard examples of forecasting excess bond and equity returns. We find substantial improvements in out-of-sample forecast accuracy for standard excess bond return regressions; gains for forecasting excess stock returns are much smaller.
机译:众所周知,用与误差项相关但与原始回归变量不相关的变量增强标准线性回归模型将增加原始系数的渐近效率。我们认为,在预测超额收益的背景下,存在有效的增加变量,并且可能会在估计效率和预测准确性方面产生可观的收益。拟议的增加变量是超额收益的不可预测部分的事后衡量:事后来自宏观经济调查预测的错误以及宏观经济新闻公告周围资产价格变动的意外因素。这些“惊喜”不能直接用于预测-在进行预测时不会被观察到-但是可以通过减少参数估计的不确定性来提高预测准确性。我们得出有关此方法的好处和局限性的正式结果,并将其应用于预测超额债券和股票收益的标准示例。对于标准的超额债券收益率回归,我们发现样本外预测准确性得到了显着提高。预测超额股票收益的收益要小得多。

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