Inverse Moment Methods for Sufficient Forecasting Using High-Dimensional Predictors

Wei Luo, Lingzhou Xue, Jiawei Yao
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引用次数: 8

Abstract

We consider forecasting a single time series using a large number of predictors in the presence of a possible nonlinear forecast function. Assuming that the predictors affect the response through the latent factors, we propose to first conduct factor analysis and then apply sufficient dimension reduction on the estimated factors, to derive the reduced data for subsequent forecasting. Using directional regression and the inverse third-moment method in the stage of sufficient dimension reduction, the proposed methods can capture the non-monotone effect of factors on the response. We also allow a diverging number of factors and only impose general regularity conditions on the distribution of factors, avoiding the undesired time reversibility of the factors by the latter. These make the proposed methods fundamentally more applicable than the sufficient forecasting method in Fan et al. (2017). The proposed methods are demonstrated in both simulation studies and an empirical study of forecasting monthly macroeconomic data from 1959 to 2016. Also, our theory contributes to the literature of sufficient dimension reduction, as it includes an invariance result, a path to perform sufficient dimension reduction under the high-dimensional setting without assuming sparsity, and the corresponding order-determination procedure.
利用高维预测器进行充分预测的逆矩方法
我们考虑在可能存在非线性预测函数的情况下使用大量预测因子预测单个时间序列。假设预测因子通过潜在因素影响响应,我们建议先进行因子分析,然后对估计的因素进行充分的降维,得到降维后的数据,用于后续的预测。该方法在充分降维阶段采用方向回归和逆三矩法,能够捕捉到各因素对响应的非单调影响。我们还允许因子数量的分散,并且只对因子的分布施加一般的规则性条件,避免了后者对因子的不期望的时间可逆性。这使得所提出的方法从根本上比Fan等人(2017)的充分预测方法更适用。本文提出的方法在模拟研究和1959 - 2016年月度宏观经济数据预测的实证研究中得到了验证。此外,我们的理论有助于充分降维的文献,因为它包括一个不变性结果,在高维设置下不假设稀疏性进行充分降维的路径,以及相应的顺序确定过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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