Hierarchical forecast reconciliation with machine learning
Evangelos Spiliotis, Mahdi Abolghasemi, Rob J Hyndman, Fotios, Petropoulos, Vassilios Assimakopoulos

TL;DR
This paper introduces a machine learning-based hierarchical forecasting method that non-linearly combines forecasts to improve accuracy and coherence across different aggregation levels, outperforming traditional linear methods.
Contribution
The paper presents a novel non-linear machine learning approach for hierarchical forecast reconciliation that enhances accuracy and coherence without requiring complete information for each series.
Findings
Outperforms existing methods in accuracy and bias
Effective in diverse series with different patterns
Demonstrated on tourism and retail data sets
Abstract
Hierarchical forecasting methods have been widely used to support aligned decision-making by providing coherent forecasts at different aggregation levels. Traditional hierarchical forecasting approaches, such as the bottom-up and top-down methods, focus on a particular aggregation level to anchor the forecasts. During the past decades, these have been replaced by a variety of linear combination approaches that exploit information from the complete hierarchy to produce more accurate forecasts. However, the performance of these combination methods depends on the particularities of the examined series and their relationships. This paper proposes a novel hierarchical forecasting approach based on machine learning that deals with these limitations in three important ways. First, the proposed method allows for a non-linear combination of the base forecasts, thus being more general than the…
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