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Self-supervised learning for fast and scalable time series hyper-parameter tuning

Authors :
Zhang, Peiyi
Jiang, Xiaodong
Holt, Ginger M
Laptev, Nikolay Pavlovich
Komurlu, Caner
Gao, Peng
Yu, Yang
Publication Year :
2021

Abstract

Hyper-parameters of time series models play an important role in time series analysis. Slight differences in hyper-parameters might lead to very different forecast results for a given model, and therefore, selecting good hyper-parameter values is indispensable. Most of the existing generic hyper-parameter tuning methods, such as Grid Search, Random Search, Bayesian Optimal Search, are based on one key component - search, and thus they are computationally expensive and cannot be applied to fast and scalable time-series hyper-parameter tuning (HPT). We propose a self-supervised learning framework for HPT (SSL-HPT), which uses time series features as inputs and produces optimal hyper-parameters. SSL-HPT algorithm is 6-20x faster at getting hyper-parameters compared to other search based algorithms while producing comparable accurate forecasting results in various applications.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2102.05740
Document Type :
Working Paper