Title
Regularized Estimation and Testing for High-Dimensional Multi-Block Vector-Autoregressive Models.
Abstract
Dynamical systems comprising of multiple components that can be partitioned into distinct blocks originate in many scientific areas. A pertinent example is the interactions between financial assets and selected macroeconomic indicators, which has been studied at aggregate level-e.g. a stock index and an employment index-extensively in the macroeconomics literature. A key shortcoming of this approach is that it ignores potential influences from other related components (e.g. Gross Domestic Product) that may impact the system's dynamics and structure and thus produces incorrect results. To mitigate this issue, we consider a multi-block linear dynamical system with Granger-causal ordering between blocks, wherein the blocks' temporal dynamics are described by vector autoregressive processes and are influenced by blocks higher in the system hierarchy. We derive the maximum likelihood estimator for the posited model for Gaussian data in the high-dimensional setting based on appropriate regularization schemes for the parameters of the block components. To optimize the underlying non-convex likelihood function, we develop an iterative algorithm with convergence guarantees. We establish theoretical properties of the maximum likelihood estimates, leveraging the decomposability of the regularizers and a careful analysis of the iterates. Finally, we develop testing procedures for the null hypothesis of whether a block "Granger-causes" another block of variables. The performance of the model and the testing procedures are evaluated on synthetic data, and illustrated on a data set involving log-returns of the US S&P100 component stocks and key macroeconomic variables for the 2001-16 period.
Year
Venue
Keywords
2017
JOURNAL OF MACHINE LEARNING RESEARCH
Vector-autoregression,Stability,Block-coordinate descent,Consistency,Global testing
Field
DocType
Volume
Convergence (routing),Econometrics,Autoregressive model,Linear dynamical system,Mathematical optimization,Likelihood function,Iterative method,Optimal estimation,Synthetic data,Dynamical systems theory,Mathematics
Journal
18
Issue
ISSN
Citations 
1
1532-4435
1
PageRank 
References 
Authors
0.42
7
2
Name
Order
Citations
PageRank
Jiahe Lin110.76
George Michailidis230335.19