Estimation of High-dimensional Nonlinear Vector Autoregressive Models
By: Yuefeng Han, Likai Chen, Wei Biao Wu
Potential Business Impact:
Finds hidden patterns in complex data.
High-dimensional vector autoregressive (VAR) models have numerous applications in fields such as econometrics, biology, climatology, among others. While prior research has mainly focused on linear VAR models, these approaches can be restrictive in practice. To address this, we introduce a high-dimensional non-parametric sparse additive model, providing a more flexible framework. Our method employs basis expansions to construct high-dimensional nonlinear VAR models. We derive convergence rates and model selection consistency for least squared estimators, considering dependence measures of the processes, error moment conditions, sparsity, and basis expansions. Our theory significantly extends prior linear VAR models by incorporating both non-Gaussianity and non-linearity. As a key contribution, we derive sharp Bernstein-type inequalities for tail probabilities in both non-sub-Gaussian linear and nonlinear VAR processes, which match the classical Bernstein inequality for independent random variables. Additionally, we present numerical experiments that support our theoretical findings and demonstrate the advantages of the nonlinear VAR model for a gene expression time series dataset.
Similar Papers
A Nonparametric Approach to Augmenting a Bayesian VAR with Nonlinear Factors
Econometrics
Predicts future by seeing patterns.
Bayesian Shrinkage in High-Dimensional VAR Models: A Comparative Study
Methodology
Helps computers understand complex data better.
On Statistical Inference for High-Dimensional Binary Time Series
Methodology
Helps computers understand patterns in yes/no data.