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Instrumental variable and variable addition based inference in predictive regressions

机译:预测回归中基于工具变量和变量加法的推理

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Valid inference in predictive regressions depends in a crucial manner on the degree of persistence of the predictor variables. The paper studies test procedures that are robust in the sense that their asymptotic null distributions are invariant to the persistence of the predictor, that is, the limiting distribution is the same irrespective of whether the regressors are stationary or (nearly) integrated. Existing procedures are often conservative (e.g. tests based on Bonferroni bounds), are based on highly restrictive assumptions (such as homoskedasticity or assuming an AR(1) process for the regressor) or fail to have power against alternatives in a 1/T neighborhood of the null hypothesis. We first propose a refinement of the variable addition method with improved asymptotic power approaching the optimal rate. Second, inference based on instrumental variables may further improve the (local) power of the test and even achieve local power under the optimal 1/T rate. We give high-level conditions under which the suggested variable addition and instrumental variable procedures are valid no matter whether the predictor is stationary, near-integrated or integrated, or exhibits time-varying volatility. All test statistics possess a standard limiting distribution. Monte Carlo experiments suggest that tests based on simple combinations of instruments perform most promising relative to existing tests. An application to quarterly US stock returns illustrates the need for robust inference. (C) 2015 Elsevier B.V. All rights reserved.
机译:预测回归中的有效推论至关重要地取决于预测变量的持续程度。本文研究的测试程序很健壮,因为它们的渐近零值分布对于预测变量的持久性是不变的,也就是说,无论回归变量是平稳的还是(几乎)积分的,极限分布都是相同的。现有的程序通常是保守的(例如,基于Bonferroni边界的测试),基于高度严格的假设(例如,同方差或假设回归器的AR(1)过程)或无法在1 / T邻域中拥有针对替代项的能力原假设。我们首先提出一种变量加法的改进方案,其渐近能力接近最佳速率。其次,基于工具变量的推断可以进一步提高测试的(局部)功效,甚至可以在最佳的1 / T速率下获得局部功效。我们给出了高级条件,在此条件下,无论预测变量是平稳的,接近积分的还是积分的,或表现出随时间变化的波动性,建议的变量加法和工具变量程序均有效。所有测试统计信息都具有标准的极限分布。蒙特卡洛实验表明,相对于现有测试,基于简单仪器组合的测试最有前途。季度美国股票收益的应用说明了需要有力的推断。 (C)2015 Elsevier B.V.保留所有权利。

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