A Trainable Reconciliation Method for Hierarchical Time-Series
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In numerous applications, it is required to produce forecasts for multiple time-series at different hierarchy levels. An obvious example is given by the supply chain in which demand forecasting may be needed at a store, city, or country level. The independent forecasts typically do not add up properly because of the hierarchical constraints, so a reconciliation step is needed. In this paper, we propose a new general, flexible, and easy-to-implement reconciliation strategy based on an encoder-decoder neural network. By testing our method on four real-world datasets, we show that it can consistently reach or surpass the performance of existing methods in the reconciliation setting.
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Cited by 1 Pith paper
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Hierarchical Forecast Reconciliation for Urban Rail Transit Demand Prediction under Operational Disruptions
A neural reconcilier produces coherent station and OD demand forecasts for urban rail transit and reduces OD error by up to 17.45 percent under multi-step disruption scenarios.
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