TitleCompressive Network Analysis
AuthorsJiang, Xiaoye
Yao, Yuan
Liu, Han
Guibas, Leonidas
AffiliationStanford Univ, Stanford, CA 94305 USA.
Peking Univ, Beijing 100871, Peoples R China.
Princeton Univ, Princeton, NJ 08540 USA.
KeywordsClique detection
compressive sensing
network data analysis
Radon basis pursuit
restricted isometry property
COMMUNITY STRUCTURE
CLIQUE DETECTION
GRAPHS
BLOCKMODELS
SELECTION
MODELS
LASSO
Issue Date2014
Publisherieee自动控制会刊
CitationIEEE TRANSACTIONS ON AUTOMATIC CONTROL.2014,59,(11,SI),2946-2961.
AbstractModern data acquisition routinely produces massive amounts of network data. Though many methods and models have been proposed to analyze such data, the research of network data is largely disconnected with the classical theory of statistical learning and signal processing. In this paper, we present a new framework for modeling network data, which connects two seemingly different areas: network data analysis and compressed sensing. From a nonparametric perspective, we model an observed network using a large dictionary. In particular, we consider the network clique detection problem and show connections between our formulation with a new algebraic tool, namely Randon basis pursuit in homogeneous spaces. Such a connection allows us to identify rigorous recovery conditions for clique detection problems. Though this paper is mainly conceptual, we also develop practical approximation algorithms for solving empirical problems and demonstrate their usefulness on real-world datasets.
URIhttp://hdl.handle.net/20.500.11897/188387
ISSN0018-9286
DOI10.1109/TAC.2014.2351712
IndexedSCI(E)
EI
PubMed
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