Probabilistic Hierarchical Forecasting with Deep Poisson Mixtures
- URL: http://arxiv.org/abs/2110.13179v8
- Date: Tue, 11 Apr 2023 16:24:41 GMT
- Title: Probabilistic Hierarchical Forecasting with Deep Poisson Mixtures
- Authors: Kin G. Olivares and O. Nganba Meetei and Ruijun Ma and Rohan Reddy and
Mengfei Cao and Lee Dicker
- Abstract summary: We present a novel method capable of accurate and coherent probabilistic forecasts for time series when reliable hierarchical information is present.
We call it Deep Poisson Mixture Network (DPMN)
It relies on the combination of neural networks and a statistical model for the joint distribution of the hierarchical time series structure.
- Score: 2.1670528702668648
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: Hierarchical forecasting problems arise when time series have a natural group
structure, and predictions at multiple levels of aggregation and disaggregation
across the groups are needed. In such problems, it is often desired to satisfy
the aggregation constraints in a given hierarchy, referred to as hierarchical
coherence in the literature. Maintaining coherence while producing accurate
forecasts can be a challenging problem, especially in the case of probabilistic
forecasting. We present a novel method capable of accurate and coherent
probabilistic forecasts for time series when reliable hierarchical information
is present. We call it Deep Poisson Mixture Network (DPMN). It relies on the
combination of neural networks and a statistical model for the joint
distribution of the hierarchical multivariate time series structure. By
construction, the model guarantees hierarchical coherence and provides simple
rules for aggregation and disaggregation of the predictive distributions. We
perform an extensive empirical evaluation comparing the DPMN to other
state-of-the-art methods which produce hierarchically coherent probabilistic
forecasts on multiple public datasets. Comparing to existing coherent
probabilistic models, we obtain a relative improvement in the overall
Continuous Ranked Probability Score (CRPS) of 11.8% on Australian domestic
tourism data, and 8.1% on the Favorita grocery sales dataset, where time series
are grouped with geographical hierarchies or travel intent hierarchies. For San
Francisco Bay Area highway traffic, where the series' hierarchical structure is
randomly assigned, and their correlations are less informative, our method does
not show significant performance differences over statistical baselines.
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