Title
On reduced semidefinite programs for second order moment bounds with applications.
Abstract
We show that the complexity of computing the second order moment bound on the expected optimal value of a mixed integer linear program with a random objective coefficient vector is closely related to the complexity of characterizing the convex hull of the points $$\\{{1 \\atopwithdelims (){\\varvec{x}}}{1 \\atopwithdelims (){\\varvec{x}}}' \\ | \\ {\\varvec{x}} \\in {\\mathcal {X}}\\}$${1x1xź|xźX} where $${\\mathcal {X}}$$X is the feasible region. In fact, we can replace the completely positive programming formulation for the moment bound on $${\\mathcal {X}}$$X, with an associated semidefinite program, provided we have a linear or a semidefinite representation of this convex hull. As an application of the result, we identify a new polynomial time solvable semidefinite relaxation of the distributionally robust multi-item newsvendor problem by exploiting results from the Boolean quadric polytope. For $${\\mathcal {X}}$$X described explicitly by a finite set of points, our formulation leads to a reduction in the size of the semidefinite program. We illustrate the usefulness of the reduced semidefinite programming bounds in estimating the expected range of random variables with two applications arising in random walks and best---worst choice models.
Year
DOI
Venue
2017
10.1007/s10107-016-1019-1
Math. Program.
Keywords
Field
DocType
Moment bounds, Newsvendor, Random walk, Choice model
Integer,Discrete mathematics,Random variable,Combinatorics,Mathematical optimization,Finite set,Random walk,Convex hull,Feasible region,Polytope,Mathematics,Semidefinite programming
Journal
Volume
Issue
ISSN
161
1-2
1436-4646
Citations 
PageRank 
References 
6
0.44
17
Authors
2
Name
Order
Citations
PageRank
Karthik Natarajan140731.52
Chung-Piaw Teo260.77