English

Regularized Ensemble Forecasting for Learning Weights from Historical and Current Forecasts

Applications 2026-02-13 v1 General Economics Economics Methodology

Abstract

Combining forecasts from multiple experts often yields more accurate results than relying on a single expert. In this paper, we introduce a novel regularized ensemble method that extends the traditional linear opinion pool by leveraging both current forecasts and historical performances to set the weights. Unlike existing approaches that rely only on either the current forecasts or past accuracy, our method accounts for both sources simultaneously. It learns weights by minimizing the variance of the combined forecast (or its transformed version) while incorporating a regularization term informed by historical performances. We also show that this approach has a Bayesian interpretation. Different distributional assumptions within this Bayesian framework yield different functional forms for the variance component and the regularization term, adapting the method to various scenarios. In empirical studies on Walmart sales and macroeconomic forecasting, our ensemble outperforms leading benchmark models both when experts' full forecasting histories are available and when experts enter and exit over time, resulting in incomplete historical records. Throughout, we provide illustrative examples that show how the optimal weights are determined and, based on the empirical results, we discuss where the framework's strengths lie and when experts' past versus current forecasts are more informative.

Keywords

Cite

@article{arxiv.2602.11379,
  title  = {Regularized Ensemble Forecasting for Learning Weights from Historical and Current Forecasts},
  author = {Han Su and Xiaojia Guo and Xiaoke Zhang},
  journal= {arXiv preprint arXiv:2602.11379},
  year   = {2026}
}
R2 v1 2026-07-01T10:32:43.381Z