UNIVERSITY OF IDAHO

DEPARTMENT OF MATHEMATICS

COLLOQUIUM

 


Fall 2017

Thursday,  December 07, 3:30-4:20 pm, room TLC 022

Refreshments in Brink 305 at 3:00 pm


Structural Properties for Affine Sparsity Constraints
 

Hongbo Dong



Department of Mathematics

Washington State University



We introduce a new constraint system for sparse variable selection in statistical learning. Such a system
arises when there are logical conditions on the sparsity of certain unknown model parameters that need to
be incorporated into their selection process. Formally, extending a cardinality constraint, an affine sparsity
constraint (ASC) is defined by a linear inequality with two sets of variables: one set of continuous variables
and the other set represented by their nonzero patterns. This paper aims to study an ASC system consisting
of finitely many affine sparsity constraints. We investigate a number of fundamental structural properties of
the solution set of such a non-standard system of inequalities, including its closedness and the description of its
closure, continuous approximations and their set convergence, and characterizations of its tangent cones for use
in optimization. Based on the obtained structural properties of an ASC system, we investigate the convergence of B(ouligand) stationary solutions when the ASC is approximated by surrogates of the step L0-function commonly employed in sparsity representation. Our study lays a solid mathematical foundation for solving optimization problems involving these affine sparsity constraints through their continuous approximations.

This is a joint work with Miju Ahn and Jong-Shi Pang (University of Southern California)