Sufficient Forecasting Using Factor Models
Jianqing Fan, Lingzhou Xue, Jiawei Yao

TL;DR
This paper introduces a novel forecasting method called sufficient forecasting that leverages factor models and high-dimensional predictors to accurately estimate predictive indices, improving forecasting performance in complex, high-dimensional settings.
Contribution
It develops a new high-dimensional forecasting approach using factor models and sufficient dimension reduction, with theoretical guarantees and empirical validation.
Findings
Sufficient forecasting outperforms linear methods in simulations.
The method accurately estimates projection indices in nonparametric settings.
Empirical results show improved macroeconomic forecasting accuracy.
Abstract
We consider forecasting a single time series when there is a large number of predictors and a possible nonlinear effect. The dimensionality was first reduced via a high-dimensional (approximate) factor model implemented by the principal component analysis. Using the extracted factors, we develop a novel forecasting method called the sufficient forecasting, which provides a set of sufficient predictive indices, inferred from high-dimensional predictors, to deliver additional predictive power. The projected principal component analysis will be employed to enhance the accuracy of inferred factors when a semi-parametric (approximate) factor model is assumed. Our method is also applicable to cross-sectional sufficient regression using extracted factors. The connection between the sufficient forecasting and the deep learning architecture is explicitly stated. The sufficient forecasting…
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Taxonomy
TopicsForecasting Techniques and Applications · Monetary Policy and Economic Impact · Financial Risk and Volatility Modeling
