Sparsistency and rates of convergence in large covariance matrix estimation

Type: Article

Publication Date: 2009-10-23

Citations: 417

DOI: https://doi.org/10.1214/09-aos720

Abstract

This paper studies the sparsistency and rates of convergence for estimating sparse covariance and precision matrices based on penalized likelihood with nonconvex penalty functions. Here, sparsistency refers to the property that all parameters that are zero are actually estimated as zero with probability tending to one. Depending on the case of applications, sparsity priori may occur on the covariance matrix, its inverse or its Cholesky decomposition. We study these three sparsity exploration problems under a unified framework with a general penalty function. We show that the rates of convergence for these problems under the Frobenius norm are of order (sn log pn/n)1/2, where sn is the number of nonzero elements, pn is the size of the covariance matrix and n is the sample size. This explicitly spells out the contribution of high-dimensionality is merely of a logarithmic factor. The conditions on the rate with which the tuning parameter λn goes to 0 have been made explicit and compared under different penalties. As a result, for the L1-penalty, to guarantee the sparsistency and optimal rate of convergence, the number of nonzero elements should be small: sn'=O(pn) at most, among O(pn2) parameters, for estimating sparse covariance or correlation matrix, sparse precision or inverse correlation matrix or sparse Cholesky factor, where sn' is the number of the nonzero elements on the off-diagonal entries. On the other hand, using the SCAD or hard-thresholding penalty functions, there is no such a restriction.

Locations

  • The Annals of Statistics - View - PDF
  • PubMed Central - View
  • arXiv (Cornell University) - View - PDF
  • CiteSeer X (The Pennsylvania State University) - View - PDF
  • Europe PMC (PubMed Central) - View - PDF
  • London School of Economics and Political Science Research Online (London School of Economics and Political Science) - View - PDF
  • PubMed - View
  • DataCite API - View

Similar Works

Action Title Year Authors
+ Sparsistency and rates of convergence in large covariance matrix estimation 2009 Clifford Lam
Jianqing Fan
+ Sparsistency and rates of convergence in large covariance matrix estimation 2009 Clifford Lam
Jianqing Fan
+ PDF Chat <formula formulatype="inline"><tex Notation="TeX">$l_{0}$</tex></formula> Sparse Inverse Covariance Estimation 2015 Goran Marjanovic
Alfred O. Hero
+ Confidence intervals for sparse precision matrix estimation via Lasso penalized D-trace loss 2017 Xudong Huang
Mengmeng Li
+ Estimation of sparse covariance matrix via non-convex regularization 2024 Xin Wang
Lingchen Kong
Liqun Wang
+ Estimation of covariance matrix via the sparse Cholesky factor with lasso 2010 Changgee Chang
Ruey S. Tsay
+ Estimation of Large Precision Matrices Through Block Penalization 2008 Clifford Lam
+ L0 Sparse Inverse Covariance Estimation 2014 Goran Marjanovic
Alfred O. Hero
+ Estimation of large precision matrices through block penalization 2008 Clifford Lam
+ L0 Sparse Inverse Covariance Estimation 2014 Goran Marjanović
Alfred O. Hero
+ Estimating structured high-dimensional covariance and precision matrices: Optimal rates and adaptive estimation 2016 Tommaso Cai
Zhao Ren
Harrison H. Zhou
+ Large-Scale Sparse Inverse Covariance Estimation via Thresholding and Max-Det Matrix Completion 2018 Richard Y. Zhang
Salar Fattahi
Somayeh Sojoudi
+ Large-Scale Sparse Inverse Covariance Estimation via Thresholding and Max-Det Matrix Completion 2018 Richard Y. Zhang
Salar Fattahi
Somayeh Sojoudi
+ PDF Chat The Bayesian covariance lasso 2013 Haitao Chu
Joseph G. Ibrahim
Zakaria Khondker
Weili Lin
Hongtu Zhu
+ PDF Chat Positive-Definite ℓ<sub>1</sub>-Penalized Estimation of Large Covariance Matrices 2012 Lingzhou Xue
Shiqian Ma
Hui Zou
+ A convex framework for high-dimensional sparse Cholesky based covariance estimation 2016 Kshitij Khare
Sang Min Oh
Syed M Rahman
Bala Rajaratnam
+ A convex framework for high-dimensional sparse Cholesky based covariance estimation 2016 Kshitij Khare
S. H. Oh
Syed M Rahman
Bala Rajaratnam
+ PDF Chat A scalable sparse Cholesky based approach for learning high-dimensional covariance matrices in ordered data 2019 Kshitij Khare
Sang‐Yun Oh
Syed M Rahman
Bala Rajaratnam
+ Positive Definite $\ell_1$ Penalized Estimation of Large Covariance Matrices 2012 Lingzhou Xue
Shiqian Ma
Hui Zou
+ Large-Scale Sparse Inverse Covariance Estimation via Thresholding and Max-Det Matrix Completion 2018 Richard Y. Zhang
Salar Fattahi
Somayeh Sojoudi