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Neural forecasting at scale

Authors :
Chatigny, Philippe
Wang, Shengrui
Patenaude, Jean-Marc
Oreshkin, Boris N.
Publication Year :
2021

Abstract

We study the problem of efficiently scaling ensemble-based deep neural networks for multi-step time series (TS) forecasting on a large set of time series. Current state-of-the-art deep ensemble models have high memory and computational requirements, hampering their use to forecast millions of TS in practical scenarios. We propose N-BEATS(P), a global parallel variant of the N-BEATS model designed to allow simultaneous training of multiple univariate TS forecasting models. Our model addresses the practical limitations of related models, reducing the training time by half and memory requirement by a factor of 5, while keeping the same level of accuracy in all TS forecasting settings. We have performed multiple experiments detailing the various ways to train our model and have obtained results that demonstrate its capacity to generalize in various forecasting conditions and setups.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2109.09705
Document Type :
Working Paper