TL;DR
This paper explores ensembling techniques to improve local adaptation in global forecasting models for time series, demonstrating significant accuracy gains across multiple datasets.
Contribution
It introduces a new clustered ensemble methodology combining various clustering techniques with different GFM types, enhancing local specificity in forecasts.
Findings
Clustered ensembles outperform baseline GFMs and univariate models.
Varied clustering techniques improve model localization.
Significant accuracy improvements on eight datasets.
Abstract
With large quantities of data typically available nowadays, forecasting models that are trained across sets of time series, known as Global Forecasting Models (GFM), are regularly outperforming traditional univariate forecasting models that work on isolated series. As GFMs usually share the same set of parameters across all time series, they often have the problem of not being localised enough to a particular series, especially in situations where datasets are heterogeneous. We study how ensembling techniques can be used with generic GFMs and univariate models to solve this issue. Our work systematises and compares relevant current approaches, namely clustering series and training separate submodels per cluster, the so-called ensemble of specialists approach, and building heterogeneous ensembles of global and local models. We fill some gaps in the existing GFM localisation approaches,…
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