Hierarchically Regularized Deep Forecasting
- URL: http://arxiv.org/abs/2106.07630v1
- Date: Mon, 14 Jun 2021 17:38:16 GMT
- Title: Hierarchically Regularized Deep Forecasting
- Authors: Biswajit Paria, Rajat Sen, Amr Ahmed, Abhimanyu Das
- Abstract summary: We propose a new approach for hierarchical forecasting based on decomposing the time series along a global set of basis time series.
Unlike past methods, our approach is scalable at inference-time while preserving coherence among the time series forecasts.
- Score: 18.539846932184012
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Hierarchical forecasting is a key problem in many practical multivariate
forecasting applications - the goal is to simultaneously predict a large number
of correlated time series that are arranged in a pre-specified aggregation
hierarchy. The challenge is to exploit the hierarchical correlations to
simultaneously obtain good prediction accuracy for time series at different
levels of the hierarchy. In this paper, we propose a new approach for
hierarchical forecasting based on decomposing the time series along a global
set of basis time series and modeling hierarchical constraints using the
coefficients of the basis decomposition for each time series. Unlike past
methods, our approach is scalable at inference-time (forecasting for a specific
time series only needs access to its own data) while (approximately) preserving
coherence among the time series forecasts. We experiment on several publicly
available datasets and demonstrate significantly improved overall performance
on forecasts at different levels of the hierarchy, compared to existing
state-of-the-art hierarchical reconciliation methods.
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