Supervised Dynamic PCA: Linear Dynamic Forecasting with Many Predictors
Zhaoxing Gao, Ruey S. Tsay

TL;DR
This paper introduces a supervised dynamic PCA method that improves forecasting accuracy with many predictors by re-scaling, combining, and selecting predictors, outperforming traditional PCA and other methods in simulations and real data.
Contribution
It develops a novel supervised PCA approach with re-scaling and penalized factor selection for dynamic forecasting with high-dimensional predictors.
Findings
The method outperforms traditional PCA in simulations.
It provides better forecasts for U.S. macroeconomic variables.
The estimators are shown to be consistent under mild conditions.
Abstract
This paper proposes a novel dynamic forecasting method using a new supervised Principal Component Analysis (PCA) when a large number of predictors are available. The new supervised PCA provides an effective way to bridge the gap between predictors and the target variable of interest by scaling and combining the predictors and their lagged values, resulting in an effective dynamic forecasting. Unlike the traditional diffusion-index approach, which does not learn the relationships between the predictors and the target variable before conducting PCA, we first re-scale each predictor according to their significance in forecasting the targeted variable in a dynamic fashion, and a PCA is then applied to a re-scaled and additive panel, which establishes a connection between the predictability of the PCA factors and the target variable. Furthermore, we also propose to use penalized methods such…
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Taxonomy
TopicsGrey System Theory Applications · Forecasting Techniques and Applications · Complex Systems and Time Series Analysis
MethodsPrincipal Components Analysis
