English

High-dimensional macroeconomic forecasting using message passing algorithms

Methodology 2020-04-27 v1 Econometrics Statistical Finance Machine Learning

Abstract

This paper proposes two distinct contributions to econometric analysis of large information sets and structural instabilities. First, it treats a regression model with time-varying coefficients, stochastic volatility and exogenous predictors, as an equivalent high-dimensional static regression problem with thousands of covariates. Inference in this specification proceeds using Bayesian hierarchical priors that shrink the high-dimensional vector of coefficients either towards zero or time-invariance. Second, it introduces the frameworks of factor graphs and message passing as a means of designing efficient Bayesian estimation algorithms. In particular, a Generalized Approximate Message Passing (GAMP) algorithm is derived that has low algorithmic complexity and is trivially parallelizable. The result is a comprehensive methodology that can be used to estimate time-varying parameter regressions with arbitrarily large number of exogenous predictors. In a forecasting exercise for U.S. price inflation this methodology is shown to work very well.

Keywords

Cite

@article{arxiv.2004.11485,
  title  = {High-dimensional macroeconomic forecasting using message passing algorithms},
  author = {Dimitris Korobilis},
  journal= {arXiv preprint arXiv:2004.11485},
  year   = {2020}
}

Comments

89 pages; to appear in Journal of Business and Economic Statistics