Stochastic networks are a plausible representation of the relational information among entities in dynamic systems such as living cells or social communities. While there is a rich literature in estimating a static or temporally invariant network from observation data, little has been done toward estimating time-varying networks from time series of entity attributes. In this paper we present two new machine learning methods for estimating time-varying networks, which both build on a temporally smoothed l(1)-regularized logistic regression formalism that can be cast as a standard convex-optimization problem and solved efficiently using generic solvers scalable to large networks. We report promising results on recovering simulated time-varying networks. For real data sets, we reverse engineer the latent sequence of temporally rewiring political networks between Senators from the US Senate voting records and the latent evolving regulatory networks underlying 588 genes across the life cycle of Drosophila melanogaster from the microarray time course.
机构:
Emory Univ, Dept Quantitat Theory & Methods, 36 Eagle Row, Atlanta, GA 30322 USA
Univ Ghent, Dept Data Anal, Ghent, BelgiumEmory Univ, Dept Quantitat Theory & Methods, 36 Eagle Row, Atlanta, GA 30322 USA
Loh, Wen Wei
Ren, Dongning
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机构:
Tilburg Univ, Dept Social Psychol, Tilburg, NetherlandsEmory Univ, Dept Quantitat Theory & Methods, 36 Eagle Row, Atlanta, GA 30322 USA
机构:
Univ Geneva, Dept Hist Econ & Soc, Geneva, Switzerland
Bard Coll, Levy Econ Inst, New York, NY USA
Univ Geneva, Uni Mail 4235,40 Bd Pont Arve, CH-1205 Geneva, SwitzerlandUniv Amer, Quito, Ecuador