Literature DB >> 28580192

Fast Component Pursuit for Large-Scale Inverse Covariance Estimation.

Lei Han1, Yu Zhang2, Tong Zhang1,3.   

Abstract

The maximum likelihood estimation (MLE) for the Gaussian graphical model, which is also known as the inverse covariance estimation problem, has gained increasing interest recently. Most existing works assume that inverse covariance estimators contain sparse structure and then construct models with the ℓ1 regularization. In this paper, different from existing works, we study the inverse covariance estimation problem from another perspective by efficiently modeling the low-rank structure in the inverse covariance, which is assumed to be a combination of a low-rank part and a diagonal matrix. One motivation for this assumption is that the low-rank structure is common in many applications including the climate and financial analysis, and another one is that such assumption can reduce the computational complexity when computing its inverse. Specifically, we propose an efficient COmponent Pursuit (COP) method to obtain the low-rank part, where each component can be sparse. For optimization, the COP method greedily learns a rank-one component in each iteration by maximizing the log-likelihood. Moreover, the COP algorithm enjoys several appealing properties including the existence of an efficient solution in each iteration and the theoretical guarantee on the convergence of this greedy approach. Experiments on large-scale synthetic and real-world datasets including thousands of millions variables show that the COP method is faster than the state-of-the-art techniques for the inverse covariance estimation problem when achieving comparable log-likelihood on test data.

Entities:  

Keywords:  Component Pursuit; Greedy Algorithm; Inverse Covariance Estimation; Large-Scale Data

Year:  2016        PMID: 28580192      PMCID: PMC5455800          DOI: 10.1145/2939672.2939851

Source DB:  PubMed          Journal:  KDD        ISSN: 2154-817X


  6 in total

1.  HIGH DIMENSIONAL COVARIANCE MATRIX ESTIMATION IN APPROXIMATE FACTOR MODELS.

Authors:  Jianqing Fan; Yuan Liao; Martina Mincheva
Journal:  Ann Stat       Date:  2011-01-01       Impact factor: 4.028

2.  Exact Covariance Thresholding into Connected Components for Large-Scale Graphical Lasso.

Authors:  Rahul Mazumder; Trevor Hastie
Journal:  J Mach Learn Res       Date:  2012-03-01       Impact factor: 3.654

3.  Sparse inverse covariance estimation with the graphical lasso.

Authors:  Jerome Friedman; Trevor Hastie; Robert Tibshirani
Journal:  Biostatistics       Date:  2007-12-12       Impact factor: 5.899

4.  Alternating direction methods for latent variable gaussian graphical model selection.

Authors:  Shiqian Ma; Lingzhou Xue; Hui Zou
Journal:  Neural Comput       Date:  2013-04-22       Impact factor: 2.026

5.  Large Covariance Estimation by Thresholding Principal Orthogonal Complements.

Authors:  Jianqing Fan; Yuan Liao; Martina Mincheva
Journal:  J R Stat Soc Series B Stat Methodol       Date:  2013-09-01       Impact factor: 4.488

6.  A General Iterative Shrinkage and Thresholding Algorithm for Non-convex Regularized Optimization Problems.

Authors:  Pinghua Gong; Changshui Zhang; Zhaosong Lu; Jianhua Z Huang; Jieping Ye
Journal:  JMLR Workshop Conf Proc       Date:  2013
  6 in total

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