English

Reservoir Computing for Macroeconomic Forecasting with Mixed Frequency Data

Econometrics 2024-01-30 v3

Abstract

Macroeconomic forecasting has recently started embracing techniques that can deal with large-scale datasets and series with unequal release periods. MIxed-DAta Sampling (MIDAS) and Dynamic Factor Models (DFM) are the two main state-of-the-art approaches that allow modeling series with non-homogeneous frequencies. We introduce a new framework called the Multi-Frequency Echo State Network (MFESN) based on a relatively novel machine learning paradigm called reservoir computing. Echo State Networks (ESN) are recurrent neural networks formulated as nonlinear state-space systems with random state coefficients where only the observation map is subject to estimation. MFESNs are considerably more efficient than DFMs and allow for incorporating many series, as opposed to MIDAS models, which are prone to the curse of dimensionality. All methods are compared in extensive multistep forecasting exercises targeting US GDP growth. We find that our MFESN models achieve superior or comparable performance over MIDAS and DFMs at a much lower computational cost.

Keywords

Cite

@article{arxiv.2211.00363,
  title  = {Reservoir Computing for Macroeconomic Forecasting with Mixed Frequency Data},
  author = {Giovanni Ballarin and Petros Dellaportas and Lyudmila Grigoryeva and Marcel Hirt and Sophie van Huellen and Juan-Pablo Ortega},
  journal= {arXiv preprint arXiv:2211.00363},
  year   = {2024}
}

Comments

76 pages, 28 figures, appendices included

R2 v1 2026-06-28T04:55:02.396Z