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Fast computation of reconciled forecasts for hierarchical and grouped time series

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journal contribution
posted on 2022-11-09, 00:30 authored by Rob J Hyndman, Alan Lee, Earo Wang
We describe some fast algorithms for reconciling large collections of time series forecasts with aggregation constraints. The constraints arise due to the need for forecasts of collections of time series with hierarchical or grouped structures to add up in the same manner as the observed time series. We show that the least squares approach to reconciling hierarchical forecasts can be extended to more general non-hierarchical groups of time series, and that the computations can be handled efficiently by exploiting the structure of the associated design matrix. Our algorithms will reconcile hierarchical forecasts with hierarchies of unlimited size, making forecast reconciliation feasible in business applications involving very large numbers of time series.

History

Classification-JEL

C32, C53, C55, C63

Creation date

2014-06-01

Working Paper Series Number

17/14

Length

26

File-Format

application/pdf

Handle

RePEc:msh:ebswps:2014-17

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