Factor-augmented tree ensembles
Machine Learning
2023-06-14 v6 Machine Learning
Econometrics
Abstract
This manuscript proposes to extend the information set of time-series regression trees with latent stationary factors extracted via state-space methods. In doing so, this approach generalises time-series regression trees on two dimensions. First, it allows to handle predictors that exhibit measurement error, non-stationary trends, seasonality and/or irregularities such as missing observations. Second, it gives a transparent way for using domain-specific theory to inform time-series regression trees. Empirically, ensembles of these factor-augmented trees provide a reliable approach for macro-finance problems. This article highlights it focussing on the lead-lag effect between equity volatility and the business cycle in the United States.
Cite
@article{arxiv.2111.14000,
title = {Factor-augmented tree ensembles},
author = {Filippo Pellegrino},
journal= {arXiv preprint arXiv:2111.14000},
year = {2023}
}