Model identification for ARMA time series through convolutional neural networks

作者:

摘要

We use convolutional neural networks for model identification in ARMA time series models, where our networks are trained on synthetic data with known ground truths. Comparing the performance of these networks with traditional likelihood-based methods, in particular the Akaike and Bayesian Information Criteria, we are able to show that when it comes to statistical inference on ARMA orders, neural networks can significantly outperform likelihood-based methods in terms of accuracy and, by orders of magnitude, in terms of speed. We also observe improvements in terms of time series forecasting. Our approach shows the feasibility of using artificial neural networks for statistical inference in situations where classical likelihood-based methods are difficult or costly to implement.

论文关键词:Autoregressive moving average time series (ARMA),Model selection,Convolutional neural networks,AIC,BIC

论文评审过程:Received 19 July 2020, Revised 8 March 2021, Accepted 8 March 2021, Available online 13 March 2021, Version of Record 15 May 2021.

论文官网地址:https://doi.org/10.1016/j.dss.2021.113544