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Inferring large graphs using $$\ell _1$$-penalized likelihood
Authors:Magali Champion  Victor Picheny  Matthieu Vignes
Institution:1.Laboratoire MAP5,Université Paris Descartes,Paris Cedex 06,France;2.MIAT, Université de Toulouse, INRA,Castanet-Tolosan,France;3.Institute of Fundamental Sciences,Massey University,Palmerston North,New Zealand
Abstract:We address the issue of recovering the structure of large sparse directed acyclic graphs from noisy observations of the system. We propose a novel procedure based on a specific formulation of the \(\ell _1\)-norm regularized maximum likelihood, which decomposes the graph estimation into two optimization sub-problems: topological structure and node order learning. We provide convergence inequalities for the graph estimator, as well as an algorithm to solve the induced optimization problem, in the form of a convex program embedded in a genetic algorithm. We apply our method to various data sets (including data from the DREAM4 challenge) and show that it compares favorably to state-of-the-art methods. This algorithm is available on CRAN as the R package GADAG.
Keywords:
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