ArXiv TLDR

FoReco and FoRecoML: A Unified Toolbox for Forecast Reconciliation in R

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2604.27696

Daniele Girolimetto, Jeroen Rombouts, Ines Wilms, Yangzhuoran Fin Yang

stat.COstat.APstat.ML

TLDR

FoReco and FoRecoML are new R packages providing a unified, comprehensive toolbox for classical and ML-based forecast reconciliation methods.

Key contributions

  • Introduces FoReco and FoRecoML R packages for unified forecast reconciliation.
  • Supports classical, regression-based, and machine learning reconciliation methods.
  • Covers cross-sectional, temporal, and cross-temporal reconciliation frameworks.
  • Offers user-friendly defaults for beginners and advanced customization for experts.

Why it matters

Forecast reconciliation is vital for accurate, coherent time series forecasts. These R packages fill a critical software gap, offering a comprehensive, flexible, and accessible solution for practitioners and researchers.

Original Abstract

Forecast reconciliation has become key to improving the accuracy and coherence of forecasts for linearly constrained multiple time series, such as hierarchical and grouped series. Yet, comprehensive software that jointly covers cross-sectional, temporal, and cross-temporal reconciliation has so far been lacking. The R packages FoReco and FoRecoML address this gap by offering a comprehensive and unified framework. The packages respectively implement classical and regression-based linear reconciliation approaches, and non-linear approaches based on machine learning for cross-sectional, temporal and cross-temporal frameworks. Designed for accessibility and flexibility, these packages provide sensible default options that allow new users to apply reconciliation methods with minimal effort, while still giving expert users full control to explore state-of-the-art extensions through customized settings. With this dual focus, FoReco and FoRecoML are versatile tools for practitioners and researchers working on forecast reconciliation.

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