High-Dimensional Low-Rank Tensor Autoregressive Time Series Modeling

01/12/2021
by   Di Wang, et al.
0

Modern technological advances have enabled an unprecedented amount of structured data with complex temporal dependence, urging the need for new methods to efficiently model and forecast high-dimensional tensor-valued time series. This paper provides the first practical tool to accomplish this task via autoregression (AR). By considering a low-rank Tucker decomposition for the transition tensor, the proposed tensor autoregression can flexibly capture the underlying low-dimensional tensor dynamics, providing both substantial dimension reduction and meaningful dynamic factor interpretation. For this model, we introduce both low-dimensional rank-constrained estimator and high-dimensional regularized estimators, and derive their asymptotic and non-asymptotic properties. In particular, by leveraging the special balanced structure of the AR transition tensor, a novel convex regularization approach, based on the sum of nuclear norms of square matricizations, is proposed to efficiently encourage low-rankness of the coefficient tensor. A truncation method is further introduced to consistently select the Tucker ranks. Simulation experiments and real data analysis demonstrate the advantages of the proposed approach over various competing ones.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/14/2019

High-dimensional vector autoregressive time series modeling via tensor decomposition

The classical vector autoregressive model is a fundamental tool for mult...
research
12/01/2021

AR-sieve Bootstrap for High-dimensional Time Series

This paper proposes a new AR-sieve bootstrap approach on high-dimensiona...
research
10/29/2021

CP Factor Model for Dynamic Tensors

Observations in various applications are frequently represented as a tim...
research
08/12/2019

Tensor-based EDMD for the Koopman analysis of high-dimensional systems

Recent years have seen rapid advances in the data-driven analysis of dyn...
research
12/09/2018

Low Rank and Structured Modeling of High-dimensional Vector Autoregressions

Network modeling of high-dimensional time series data is a key learning ...
research
07/01/2019

Learning Representations from Imperfect Time Series Data via Tensor Rank Regularization

There has been an increased interest in multimodal language processing i...
research
10/03/2021

Multi-linear Tensor Autoregressive Models

Contemporary time series analysis has seen more and more tensor type dat...

Please sign up or login with your details

Forgot password? Click here to reset