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New Methods for Inference in Long-Horizon Regressions

机译:长期回归的新推理方法

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I develop new results for long-horizon predictive regressions with overlapping observations. I show that rather than using autocorrelation robust standard errors, the standard t-statistic can simply be divided by the square root of the forecasting horizon to correct for the effects of the overlap in the data. Further, when the regressors are persistent and endogenous, the long-run ordinary least squares (OLS) estimator suffers from the same problems as the short-run OLS estimator, and it is shown how similar corrections and test procedures as those proposed for the short-run case can also be implemented in the long run. An empirical application to stock return predictability shows that, contrary to many popular beliefs, evidence of predictability does not typically become stronger at longer forecasting horizons.
机译:我为具有重叠观测值的长期预测性回归开发了新的结果。我表明,与其使用自相关鲁棒性标准误差,不如将标准t统计量简单地除以预测范围的平方根即可校正数据重叠的影响。此外,当回归变量是持久性且内生的时,长期普通最小二乘(OLS)估计器将遇到与短期OLS估计器相同的问题,并且显示出与短期建议的校正和测试过程有何相似之处从长远来看,-run case也可以实现。对股票收益可预测性的经验应用表明,与许多普遍看法相反,可预测性的证据通常不会在更长的预测范围内变得更强。

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