Motivated by resource allocation problems (RAPs) in power management applications, we investigate solutions to optimization problems that simultaneously minimize an entire class of objective functions. It is straightforward to show empirically that such solutions do not exist for most optimization problems. However, little is known on why this is the case and whether a characterization exists of problems that do have such solutions. In this article, we answer these questions by linking the existence of solutions that simultaneously optimize the class of Schur-convex functions, called least majorized elements, to (bi)submodular functions and the corresponding polyhedra. For this, we introduce a generalization of majorization and least majori...
Presented at the Georgia Tech Algorithms & Randomness Center workshop: Modern Aspects of Submodular...
In this paper we investigate k-submodular functions. This natural family of discrete functions inclu...
In this paper, we study the structure of optimal solutions to the submodular function minimization p...
For multi-criteria problems and problems with poorly characterized objective, it is often desirable ...
During the last few years submodularity has intensively been investigated in combinatorial optimizat...
AbstractThe submodular function minimization problem (SFM) is a fundamental problem in combinatorial...
The submodular function minimization problem (SFM) is a fundamental problem in combinatorial optimiz...
The submodular function minimization problem (SFM) is a fundamental problem in combinatorial optimiz...
Various kinds of optimization problems involve nonlinear functions of binary variables that exhibit ...
Submodular functions are powerful tools to model and solve either to optimality or approximately man...
This work presents a systematic study of the preservation of supermodularity under parametric optimi...
Thesis (Ph.D.)--University of Washington, 2015In this dissertation, we explore a class of unifying a...
A greedy algorithm solves a dual pair of linear programs where the primal variables are associated t...
Submodular functions are powerful tools to model and solve either to optimality or approximately man...
Abstract: "Many set functions F in combinatorial optimization satisfy the diminishing returns proper...
Presented at the Georgia Tech Algorithms & Randomness Center workshop: Modern Aspects of Submodular...
In this paper we investigate k-submodular functions. This natural family of discrete functions inclu...
In this paper, we study the structure of optimal solutions to the submodular function minimization p...
For multi-criteria problems and problems with poorly characterized objective, it is often desirable ...
During the last few years submodularity has intensively been investigated in combinatorial optimizat...
AbstractThe submodular function minimization problem (SFM) is a fundamental problem in combinatorial...
The submodular function minimization problem (SFM) is a fundamental problem in combinatorial optimiz...
The submodular function minimization problem (SFM) is a fundamental problem in combinatorial optimiz...
Various kinds of optimization problems involve nonlinear functions of binary variables that exhibit ...
Submodular functions are powerful tools to model and solve either to optimality or approximately man...
This work presents a systematic study of the preservation of supermodularity under parametric optimi...
Thesis (Ph.D.)--University of Washington, 2015In this dissertation, we explore a class of unifying a...
A greedy algorithm solves a dual pair of linear programs where the primal variables are associated t...
Submodular functions are powerful tools to model and solve either to optimality or approximately man...
Abstract: "Many set functions F in combinatorial optimization satisfy the diminishing returns proper...
Presented at the Georgia Tech Algorithms & Randomness Center workshop: Modern Aspects of Submodular...
In this paper we investigate k-submodular functions. This natural family of discrete functions inclu...
In this paper, we study the structure of optimal solutions to the submodular function minimization p...