Joint Structural Break Detection and Parameter Estimation in High-Dimensional Non-Stationary VAR Models

J Am Stat Assoc. 2022;117(537):251-264. doi: 10.1080/01621459.2020.1770097. Epub 2020 Jul 7.

Abstract

Assuming stationarity is unrealistic in many time series applications. A more realistic alternative is to assume piecewise stationarity, where the model can change at potentially many change points. We propose a three-stage procedure for simultaneous estimation of change points and parameters of high-dimensional piecewise vector autoregressive (VAR) models. In the first step, we reformulate the change point detection problem as a high-dimensional variable selection one, and solve it using a penalized least square estimator with a total variation penalty. We show that the penalized estimation method over-estimates the number of change points, and propose a selection criterion to identify the change points. In the last step of our procedure, we estimate the VAR parameters in each of the segments. We prove that the proposed procedure consistently detects the number and location of change points, and provides consistent estimates of VAR parameters. The performance of the method is illustrated through several simulated and real data examples.

Keywords: High-dimensional time series; Piecewise stationarity; Structural breaks; Total variation penalty.