Dynamic Bayesian Predictive Synthesis in Time Series Forecasting
Methodology
2022-06-07 v6
Abstract
We discuss model and forecast combination in time series forecasting. A foundational Bayesian perspective based on agent opinion analysis theory defines a new framework for density forecast combination, and encompasses several existing forecast pooling methods. We develop a novel class of dynamic latent factor models for time series forecast synthesis; simulation-based computation enables implementation. These models can dynamically adapt to time-varying biases, miscalibration and inter-dependencies among multiple models or forecasters. A macroeconomic forecasting study highlights the dynamic relationships among synthesized forecast densities, as well as the potential for improved forecast accuracy at multiple horizons.
Cite
@article{arxiv.1601.07463,
title = {Dynamic Bayesian Predictive Synthesis in Time Series Forecasting},
author = {Kenichiro McAlinn and Mike West},
journal= {arXiv preprint arXiv:1601.07463},
year = {2022}
}