On LASSO for high dimensional predictive regression

IF 9.9 3区 经济学 Q1 ECONOMICS
Ziwei Mei, Zhentao Shi
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引用次数: 0

Abstract

This paper examines LASSO, a widely-used L1-penalized regression method, in high dimensional linear predictive regressions, particularly when the number of potential predictors exceeds the sample size and numerous unit root regressors are present. The consistency of LASSO is contingent upon two key components: the deviation bound of the cross product of the regressors and the error term, and the restricted eigenvalue of the Gram matrix. We present new probabilistic bounds for these components, suggesting that LASSO’s rates of convergence are different from those typically observed in cross-sectional cases. When applied to a mixture of stationary, nonstationary, and cointegrated predictors, LASSO maintains its asymptotic guarantee if predictors are scale-standardized. Leveraging machine learning and macroeconomic domain expertise, LASSO demonstrates strong performance in forecasting the unemployment rate, as evidenced by its application to the FRED-MD database.

关于高维预测回归的 LASSO
本文研究了在高维线性预测回归中广泛使用的 L1 惩罚回归方法 LASSO,尤其是当潜在预测因子的数量超过样本量且存在大量单位根回归因子时。LASSO 的一致性取决于两个关键要素:回归项和误差项的交叉积的偏差边界,以及格拉姆矩阵的限制特征值。我们为这些部分提出了新的概率边界,表明 LASSO 的收敛速率不同于通常在横截面情况下观察到的收敛速率。当应用于静态、非静态和协整预测因子的混合物时,如果对预测因子进行规模标准化,LASSO 将保持其渐近保证。利用机器学习和宏观经济领域的专业知识,LASSO 在预测失业率方面表现出色,其在 FRED-MD 数据库中的应用就证明了这一点。
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来源期刊
Journal of Econometrics
Journal of Econometrics 社会科学-数学跨学科应用
CiteScore
8.60
自引率
1.60%
发文量
220
审稿时长
3-8 weeks
期刊介绍: The Journal of Econometrics serves as an outlet for important, high quality, new research in both theoretical and applied econometrics. The scope of the Journal includes papers dealing with identification, estimation, testing, decision, and prediction issues encountered in economic research. Classical Bayesian statistics, and machine learning methods, are decidedly within the range of the Journal''s interests. The Annals of Econometrics is a supplement to the Journal of Econometrics.
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