Mixed-Integer Linear Programming (MILP) plays an important role across a range of scientific disciplines and within areas of strategic importance to society. The MILP problems, however, suffer from combinatorial complexity. Because of integer decision variables, as the problem size increases, the number of possible solutions increases super-linearly thereby leading to a drastic increase in the computational effort. To efficiently solve MILP problems, a "price-based" decomposition and coordination approach is developed to exploit 1. the super-linear reduction of complexity upon the decomposition and 2. the geometric convergence potential inherent to Polyak's step-sizing formula for the fastest coordination possible to obtain near-optimal sol...
The relaxation complexity rc(X) of the set of integer points X contained in a polyhedron is the mini...
We investigate theory and application of decentralized optimization for mixed integer programming (M...
All rights reserved. Lagrangian duality in mixed integer optimization is a useful framework for prob...
Operations in areas of importance to society are frequently modeled as Mixed-Integer Linear Programm...
For many important mixed-integer programming (MIP) problems, the goal is to obtain near-optimal solu...
In this study, we develop a surrogate relaxation-based procedure to reduce mixed-integer linear prog...
Large scale mixed-integer linear programming MILP models may easily prove extraordinarily difficult ...
Solving (mixed) integer (linear) programs, (M)I(L)Ps for short, is a fundamental optimisation task w...
Mixed-integer programs (MIPs) involving logical implications modeled through big-M coefficients are ...
Mixed Integer Linear Programming (MILP) problems are widely used in many real-world situations, but ...
AbstractThis paper examines algorithmic strategies relating to the formulation of Lagrangian duals, ...
This paper presents a novel technique to compute Lagrangian bounds for nonconvex mixed-integer quadr...
In this work we focus on various cutting-plane methods for Mixed-integer Linear Programming (MILP) p...
The integration of discrete choice models in Mixed Integer Linear Programming (MILP) models provides...
International audienceRecent experiments by Fischetti and Lodi show that the first Chvátal closure o...
The relaxation complexity rc(X) of the set of integer points X contained in a polyhedron is the mini...
We investigate theory and application of decentralized optimization for mixed integer programming (M...
All rights reserved. Lagrangian duality in mixed integer optimization is a useful framework for prob...
Operations in areas of importance to society are frequently modeled as Mixed-Integer Linear Programm...
For many important mixed-integer programming (MIP) problems, the goal is to obtain near-optimal solu...
In this study, we develop a surrogate relaxation-based procedure to reduce mixed-integer linear prog...
Large scale mixed-integer linear programming MILP models may easily prove extraordinarily difficult ...
Solving (mixed) integer (linear) programs, (M)I(L)Ps for short, is a fundamental optimisation task w...
Mixed-integer programs (MIPs) involving logical implications modeled through big-M coefficients are ...
Mixed Integer Linear Programming (MILP) problems are widely used in many real-world situations, but ...
AbstractThis paper examines algorithmic strategies relating to the formulation of Lagrangian duals, ...
This paper presents a novel technique to compute Lagrangian bounds for nonconvex mixed-integer quadr...
In this work we focus on various cutting-plane methods for Mixed-integer Linear Programming (MILP) p...
The integration of discrete choice models in Mixed Integer Linear Programming (MILP) models provides...
International audienceRecent experiments by Fischetti and Lodi show that the first Chvátal closure o...
The relaxation complexity rc(X) of the set of integer points X contained in a polyhedron is the mini...
We investigate theory and application of decentralized optimization for mixed integer programming (M...
All rights reserved. Lagrangian duality in mixed integer optimization is a useful framework for prob...