When Rigidity Hurts: Soft Consistency Regularization for Probabilistic
Hierarchical Time Series Forecasting
- URL: http://arxiv.org/abs/2206.07940v4
- Date: Thu, 19 Oct 2023 04:01:49 GMT
- Title: When Rigidity Hurts: Soft Consistency Regularization for Probabilistic
Hierarchical Time Series Forecasting
- Authors: Harshavardhan Kamarthi, Lingkai Kong, Alexander Rodr\'iguez, Chao
Zhang and B. Aditya Prakash
- Abstract summary: Probabilistic hierarchical time-series forecasting is an important variant of time-series forecasting.
Most methods focus on point predictions and do not provide well-calibrated probabilistic forecasts distributions.
We propose PROFHiT, a fully probabilistic hierarchical forecasting model that jointly models forecast distribution of entire hierarchy.
- Score: 69.30930115236228
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Probabilistic hierarchical time-series forecasting is an important variant of
time-series forecasting, where the goal is to model and forecast multivariate
time-series that have underlying hierarchical relations. Most methods focus on
point predictions and do not provide well-calibrated probabilistic forecasts
distributions. Recent state-of-art probabilistic forecasting methods also
impose hierarchical relations on point predictions and samples of distribution
which does not account for coherency of forecast distributions. Previous works
also silently assume that datasets are always consistent with given
hierarchical relations and do not adapt to real-world datasets that show
deviation from this assumption. We close both these gap and propose PROFHiT,
which is a fully probabilistic hierarchical forecasting model that jointly
models forecast distribution of entire hierarchy. PROFHiT uses a flexible
probabilistic Bayesian approach and introduces a novel Distributional Coherency
regularization to learn from hierarchical relations for entire forecast
distribution that enables robust and calibrated forecasts as well as adapt to
datasets of varying hierarchical consistency. On evaluating PROFHiT over wide
range of datasets, we observed 41-88% better performance in accuracy and
significantly better calibration. Due to modeling the coherency over full
distribution, we observed that PROFHiT can robustly provide reliable forecasts
even if up to 10% of input time-series data is missing where other methods'
performance severely degrade by over 70%.
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