DocumentCode
50558
Title
Joint Association Graph Screening and Decomposition for Large-Scale Linear Dynamical Systems
Author
Yiyuan She ; Yuejia He ; Shijie Li ; Dapeng Wu
Author_Institution
Dept. of Stat., Florida State Univ., Tallahassee, FL, USA
Volume
63
Issue
2
fYear
2015
fDate
Jan.15, 2015
Firstpage
389
Lastpage
401
Abstract
This paper studies large-scale dynamical networks where the current state of the system is a linear transformation of the previous state, contaminated by a multivariate Gaussian noise. Examples include stock markets, human brains, and gene regulatory networks. We introduce a transition matrix to describe the evolution, which can be translated to a directed Granger transition graph, and use the concentration matrix of the Gaussian noise to capture the second-order relations between nodes, which can be translated to an undirected conditional dependence graph. We propose regularizing the two graphs jointly in topology identification and dynamics estimation. Based on the notion of joint association graph (JAG), we develop a joint graphical screening and estimation (JGSE) framework for efficient network learning in big data. In particular, our method can predetermine and remove unnecessary edges based on the joint graphical structure, referred to as JAG screening, and can decompose a large network into smaller subnetworks in a robust manner, referred to as JAG decomposition. JAG screening and decomposition can reduce the problem size and search space for fine estimation at a later stage. Experiments on both synthetic data and real-world applications show the effectiveness of the proposed framework in large-scale network topology identification and dynamics estimation.
Keywords
Big Data; Gaussian noise; directed graphs; learning (artificial intelligence); Big Data; JAG; JGSE framework; directed Granger transition graph; gene regulatory networks; human brains; joint association graph decomposition; joint association graph screening; large-scale linear dynamical systems; linear transformation; multivariate Gaussian noise; network learning; stock markets; undirected conditional dependence graph; Correlation; Estimation; Joints; Network topology; Robustness; Sparse matrices; Topology; Graph learning; large-scale linear dynamical systems; shrinkage estimation; variable selection;
fLanguage
English
Journal_Title
Signal Processing, IEEE Transactions on
Publisher
ieee
ISSN
1053-587X
Type
jour
DOI
10.1109/TSP.2014.2373315
Filename
6963432
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