We consider the nonconvex set Sn={(x,X,z):X=xxT,x(1-z)=0,x≥0,z∈{0,1}n}, which is closely related to the feasible region of several difficult nonconvex optimization problems such as the best subset selection and constrained portfolio optimization. Utilizing ideas from convex analysis and disjunctive programming, we obtain an explicit description for the closure of the convex hull of S2 in the space of original variables. In order to generate valid inequalities corresponding to supporting hyperplanes of the convex hull of S2, we present a simple separation algorithm that can be incorporated in branch-and-cut based solvers to enhance the quality of existing relaxations.
Explicit convex hull description of bivariate quadratic sets with indicator variables
De Rosa, Antonio;
2024
Abstract
We consider the nonconvex set Sn={(x,X,z):X=xxT,x(1-z)=0,x≥0,z∈{0,1}n}, which is closely related to the feasible region of several difficult nonconvex optimization problems such as the best subset selection and constrained portfolio optimization. Utilizing ideas from convex analysis and disjunctive programming, we obtain an explicit description for the closure of the convex hull of S2 in the space of original variables. In order to generate valid inequalities corresponding to supporting hyperplanes of the convex hull of S2, we present a simple separation algorithm that can be incorporated in branch-and-cut based solvers to enhance the quality of existing relaxations.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.