Mixed Integer Programming (MIP) is one of the most widely used modeling techniques for combinatorial optimization problems. In many applications, a similar MIP model is solved on a regular basis, maintaining remarkable similarities in model structures and solution appearances but differing in formulation coefficients. This offers the opportunity for machine learning methods to explore the correlations between model structures and the resulting solution values. To address this issue, we propose to represent a MIP instance using a tripartite graph, based on which a Graph Convolutional Network (GCN) is constructed to predict solution values for binary variables. The predicted solutions are used to generate a local branching type cut which can ...
Branch-and-bound is a typical way to solve combinatorial optimization problems. This paper proposes ...
This thesis introduces two novel search methods for automated design and discovery of heuristic bran...
Thesis: Ph. D., Massachusetts Institute of Technology, Sloan School of Management, Operations Resear...
Mixed-integer programming (MIP) technology offers a generic way of formulating and solving combinato...
Combinatorial optimization problems are typically tackled by the branch-and-bound paradigm. We propo...
We present in this paper a new approach that uses supervised machine learning techniques to improve ...
In line with the growing trend of using machine learning to improve solving of combinatorial optimis...
Recent work has shown potential in using Mixed Integer Programming (MIP) solvers to optimize certain...
The design of strategies for branching in Mixed Integer Programming (MIP) is guided by cycles of par...
The availability of effective exact or heuristic solution methods for general Mixed-Integer Programs...
Modern Mixed-Integer Programming (MIP) solvers exploit a rich arsenal of tools to attack hard proble...
Recently, ReLU neural networks have been modelled as constraints in mixed integer linear programming...
Mixed integer programming provides a unifying framework for solving a medley of hard combinatorial o...
Branch-and-bound is a widely used method in combinatorial optimization, in-cluding mixed integer pro...
In line with the growing trend of using machine learning to help solve combinatorial optimisation pr...
Branch-and-bound is a typical way to solve combinatorial optimization problems. This paper proposes ...
This thesis introduces two novel search methods for automated design and discovery of heuristic bran...
Thesis: Ph. D., Massachusetts Institute of Technology, Sloan School of Management, Operations Resear...
Mixed-integer programming (MIP) technology offers a generic way of formulating and solving combinato...
Combinatorial optimization problems are typically tackled by the branch-and-bound paradigm. We propo...
We present in this paper a new approach that uses supervised machine learning techniques to improve ...
In line with the growing trend of using machine learning to improve solving of combinatorial optimis...
Recent work has shown potential in using Mixed Integer Programming (MIP) solvers to optimize certain...
The design of strategies for branching in Mixed Integer Programming (MIP) is guided by cycles of par...
The availability of effective exact or heuristic solution methods for general Mixed-Integer Programs...
Modern Mixed-Integer Programming (MIP) solvers exploit a rich arsenal of tools to attack hard proble...
Recently, ReLU neural networks have been modelled as constraints in mixed integer linear programming...
Mixed integer programming provides a unifying framework for solving a medley of hard combinatorial o...
Branch-and-bound is a widely used method in combinatorial optimization, in-cluding mixed integer pro...
In line with the growing trend of using machine learning to help solve combinatorial optimisation pr...
Branch-and-bound is a typical way to solve combinatorial optimization problems. This paper proposes ...
This thesis introduces two novel search methods for automated design and discovery of heuristic bran...
Thesis: Ph. D., Massachusetts Institute of Technology, Sloan School of Management, Operations Resear...