Multi-Attribute Graph Estimation with Sparse-Group Non-Convex Penalties
Journal:
arXiv
Published Date:
May 17, 2025
Abstract
We consider the problem of inferring the conditional independence graph (CIG)
of high-dimensional Gaussian vectors from multi-attribute data. Most existing
methods for graph estimation are based on single-attribute models where one
associates a scalar random variable with each node. In multi-attribute
graphical models, each node represents a random vector. In this paper we
provide a unified theoretical analysis of multi-attribute graph learning using
a penalized log-likelihood objective function. We consider both convex
(sparse-group lasso) and sparse-group non-convex (log-sum and smoothly clipped
absolute deviation (SCAD) penalties) penalty/regularization functions. An
alternating direction method of multipliers (ADMM) approach coupled with local
linear approximation to non-convex penalties is presented for optimization of
the objective function. For non-convex penalties, theoretical analysis
establishing local consistency in support recovery, local convexity and
precision matrix estimation in high-dimensional settings is provided under two
sets of sufficient conditions: with and without some irrepresentability
conditions. We illustrate our approaches using both synthetic and real-data
numerical examples. In the synthetic data examples the sparse-group log-sum
penalized objective function significantly outperformed the lasso penalized as
well as SCAD penalized objective functions with $F_1$-score and Hamming
distance as performance metrics.