On Multivariate Singular Spectrum Analysis and Its Variants

Author:

Agarwal Anish1,Alomar Abdullah1,Shah Devavrat1

Affiliation:

1. MIT, Cambridge, MA, USA

Abstract

We introduce and analyze a simpler, practically useful variant of multivariate singular spectrum analysis (mSSA), a known time series method to impute (or de-noise) and forecast a multivariate time series. Towards this, we introduce a spatio-temporal factor model to analyze mSSA. This model includes the usual components used to model dynamics in time series analysis, such as trends (low order polynomials), seasonality (finite sum of harmonics), and linear time-invariant systems. We establish that given N time series and T observations per time series, the in-sample prediction error for both imputation and forecasting under mSSA scales as 1/√ min(N, T)T. This is an improvement over: (i) the 1/√T error scaling of SSA, which is the restriction of mSSA to univariate time series; (ii) the 1/min(N, T) error scaling for Temporal Regularized Matrix Factorized (TRMF), a matrix factorization based method for time series prediction. That is, mSSA exploits both the 'temporal' and 'spatial' structure in a multivariate time series. Our experimental results using various benchmark datasets confirm the characteristics of the spatio-temporal factor model and our theoretical findings---our variant of mSSA empirically performs as well or better compared to neural network based time series methods, LSTM and DeepAR.

Funder

NSF Foundations of Data Science Institute

MIT IBM Project on Time Series Anomaly Detection

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications,Hardware and Architecture,Software

Reference6 articles.

1. Model Agnostic Time Series Analysis via Matrix Estimation

2. Anish Agarwal , Devavrat Shah , Dennis Shen , and Dogyoon Song . 2021. On Robustness of Principal Component Regression. Accepted to appear in Journal of the American Statistical Association ( 2021 ). Anish Agarwal, Devavrat Shah, Dennis Shen, and Dogyoon Song. 2021. On Robustness of Principal Component Regression. Accepted to appear in Journal of the American Statistical Association (2021).

3. Nina Golyandina , Vladimir Nekrutkin , and Anatoly A Zhigljavsky . 2001. Analysis of time series structure: SSA and related techniques . Chapman and Hall/CRC. Nina Golyandina, Vladimir Nekrutkin, and Anatoly A Zhigljavsky. 2001. Analysis of time series structure: SSA and related techniques. Chapman and Hall/CRC.

4. Nikhil Rao , Hsiang-Fu Yu , Pradeep K Ravikumar , and Inderjit S Dhillon . 2015. Collaborative Filtering with Graph Information: Consistency and Scalable Methods . In Advances in Neural Information Processing Systems 28 , C. Cortes, N. D. Lawrence, D. D. Lee, M. Sugiyama, and R. Garnett (Eds.). Curran Associates, Inc. , 2107--2115. Nikhil Rao, Hsiang-Fu Yu, Pradeep K Ravikumar, and Inderjit S Dhillon. 2015. Collaborative Filtering with Graph Information: Consistency and Scalable Methods. In Advances in Neural Information Processing Systems 28, C. Cortes, N. D. Lawrence, D. D. Lee, M. Sugiyama, and R. Garnett (Eds.). Curran Associates, Inc., 2107--2115.

5. David Salinas Valentin Flunkert Jan Gasthaus and Tim Januschowski. 2019. DeepAR: Probabilistic forecasting with autoregressive recurrent networks. International Journal of Forecasting (2019). David Salinas Valentin Flunkert Jan Gasthaus and Tim Januschowski. 2019. DeepAR: Probabilistic forecasting with autoregressive recurrent networks. International Journal of Forecasting (2019).

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