This paper characterizes the impact of covariate serial dependence on the non-asymptotic estimation error bound of penalized regressions (PRs). Focusing on the direct relationship between the degree of cross-correlation between covariates and the estimation error bound of PRs, we show that orthogonal or weakly cross-correlated stationary AR processes can exhibit high spurious correlations caused by serial dependence. We provide analytical results on the distribution of the sample cross-correlation in the case of two orthogonal Gaussian AR(1) processes, and extend and validate them through an extensive simulation study. Furthermore, we introduce a new procedure to mitigate spurious correlations in a time series setting, applying PRs to pre-whitened (ARMA filtered) time series. We show that under mild assumptions our procedure allows both to reduce the estimation error and to develop an effective forecasting strategy. The estimation accuracy of our proposal is validated through additional simulations, as well as an empirical application to a large set of monthly macroeconomic time series relative to the Euro Area.
翻译:本文描述共变序列依赖受处罚回归(PRs)约束的非补救性估计错误的影响。我们注重于共变和PR约束的估计错误之间的交叉关系程度之间的直接关系,我们表明,正反或微弱的交叉静止AR进程可显示出由序列依赖引起的高度虚假的关联。我们提供了两个正方位的Gaussian AR(1)进程样本交叉关系的分布分析结果,并通过广泛的模拟研究加以扩展和验证。此外,我们引入了一种新的程序,在时间序列设置中减少虚假的关联,将PRs应用于预白(ARMA过滤过的)时间序列。我们表明,在温和假设下,我们的程序既可以减少估算错误,也可以制定有效的预测战略。我们提案的估算准确性通过额外的模拟得到验证,并被经验应用于与欧洲地区相对的大批月度宏观经济时间序列。