CoRe: Coherency Regularization for Hierarchical Time Series
Rares Cristian, Pavithra Harhsa, Georgia Perakis, Brian Quanz

TL;DR
This paper introduces CoRe, a neural network regularization technique for hierarchical time series forecasting that promotes forecast coherency without strict constraints, improving robustness and accuracy especially with noisy data.
Contribution
It proposes a novel coherency regularization method for neural networks that guarantees forecast coherency and robustness in hierarchical time series forecasting.
Findings
Improves forecast accuracy in noisy data scenarios
Ensures out-of-sample forecast coherency
Compatible with existing neural network architectures
Abstract
Hierarchical time series forecasting presents unique challenges, particularly when dealing with noisy data that may not perfectly adhere to aggregation constraints. This paper introduces a novel approach to soft coherency in hierarchical time series forecasting using neural networks. We present a network coherency regularization method, which we denote as CoRe (Coherency Regularization), a technique that trains neural networks to produce forecasts that are inherently coherent across hierarchies, without strictly enforcing aggregation constraints. Our method offers several key advantages. (1) It provides theoretical guarantees on the coherency of forecasts, even for out-of-sample data. (2) It is adaptable to scenarios where data may contain errors or missing values, making it more robust than strict coherency methods. (3) It can be easily integrated into existing neural network…
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Taxonomy
TopicsTime Series Analysis and Forecasting
