In a high dimensional linear predictive regression where the number of potential predictors can be larger than the sample size, we consider using LASSO, a popular L1-penalized regression method, to estimate the sparse coefficients when many unit root regressors are present. Consistency of LASSO relies on two building blocks: the deviation bound of the cross product of the regressors and the error term, and the restricted eigenvalue of the Gram matrix of the regressors. In our setting where unit root regressors are driven by temporal dependent non-Gaussian innovations, we establish original probabilistic bounds for these two building blocks. The bounds imply that the rates of convergence of LASSO are different from those in the familiar cross sectional case. In practical applications given a mixture of stationary and nonstationary predictors, asymptotic guarantee of LASSO is preserved if all predictors are scale-standardized. In an empirical example of forecasting the unemployment rate with many macroeconomic time series, strong performance is delivered by LASSO when the initial specification is guided by macroeconomic domain expertise.
翻译:在高维线性预测回归中,潜在预测器的数量可能大于样本大小,我们考虑使用LASSO这一流行的L1-预防性回归法来估计许多单位根回归器存在时的稀释系数。LASSO的一致性依赖于两个构件:递进器的交叉产品和误差术语的偏差约束,以及递进器Gram矩阵的有限偏差值。在单位根回归器由时间依存的非Gausian创新驱动的情况下,我们考虑使用LASSO为这两个构件建立了原始的概率界限。这些界限意味着LASSO的趋同率不同于熟悉的跨区级案例。在实际应用中,如果所有预测器都达到规模标准,则根据固定和非静止预测器的混合,LASSSO的无症状保证会得到保留。在以许多宏观经济时间序列预测失业率的经验性例子中,在宏观经济领域专长指导初始规格时,LASSSOS公司将交付强有力的业绩。