%0 Journal Article %T High-Dimensional Multivariate Time Series With Additional Structure %A Michael Schweinberger %A Sergii Babkin %A Katherine Ensor %J Statistics %D 2015 %I arXiv %X High-dimensional multivariate time series are challenging due to the dependent and high-dimensional nature of the data, but in many applications there is additional structure that can be exploited to reduce statistical error along with computing time. We consider high-dimensional vector autoregressive processes with spatial structure, a simple and common form of additional structure. We propose novel high-dimensional methods that take advantage of such structure without making assumptions about how distance affects dependence. We provide non-asymptotic bounds on the statistical error of parameter estimators in high-dimensional settings and show that the proposed approach reduces the statistical error. An application to air pollution in the U.S.A. demonstrates that the estimation approach reduces both prediction error and computing time and gives rise to results that are meaningful from a scientific point of view, in contrast to high-dimensional methods that ignore spatial structure. %U http://arxiv.org/abs/1510.02159v2