Volume 13, Issue 4
RESEARCH ARTICLE

GRATIS: GeneRAting TIme Series with diverse and controllable characteristics

Yanfei Kang

School of Economics and Management, Beihang University, Beijing, China

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Rob J. Hyndman

Department of Econometrics and Business Statistics, Monash University, Melbourne, Victoria, Australia

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Feng Li

Corresponding Author

E-mail address: feng.li@cufe.edu.cn

School of Statistics and Mathematics, Central University of Finance and Economics, Beijing, China

Correspondence

Feng Li, School of Statistics and Mathematics, Central University of Finance and Economics, Beijing 100081, China.

Email: feng.li@cufe.edu.cn

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First published: 26 May 2020
Citations: 1

Funding information: Australian Centre of Excellence in Mathematical and Statistical Frontiers, National Natural Science Foundation of China, 11501587; 11701022; Beijing Universities Advanced Disciplines Initiative, GJJ2019163; National Key Research and Development Program, 2019YFB1404600

Abstract

The explosion of time series data in recent years has brought a flourish of new time series analysis methods, for forecasting, clustering, classification and other tasks. The evaluation of these new methods requires either collecting or simulating a diverse set of time series benchmarking data to enable reliable comparisons against alternative approaches. We propose GeneRAting TIme Series with diverse and controllable characteristics, named GRATIS, with the use of mixture autoregressive (MAR) models. We simulate sets of time series using MAR models and investigate the diversity and coverage of the generated time series in a time series feature space. By tuning the parameters of the MAR models, GRATIS is also able to efficiently generate new time series with controllable features. In general, as a costless surrogate to the traditional data collection approach, GRATIS can be used as an evaluation tool for tasks such as time series forecasting and classification. We illustrate the usefulness of our time series generation process through a time series forecasting application.

Number of times cited according to CrossRef: 1

  • Forecasting with time series imaging, Expert Systems with Applications, 10.1016/j.eswa.2020.113680, (113680), (2020).

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