Combinatorial optimization is a well-established area in operations research and computer science. Until recently, its methods have focused on solving problem instances in isolation, ignoring that they often stem from related data distributions in practice. However, recent years have seen a surge of interest in using machine learning, especially graph neural networks (GNNs), as a key building block for combinatorial tasks, either directly as solvers or by enhancing exact solvers. The inductive bias of GNNs effectively encodes combinatorial and relational input due to their invariance to permutations and awareness of input sparsity. This paper presents a conceptual review of recent key advancements in this emerging field, aiming at optimizat...
Mixed-integer programming (MIP) technology offers a generic way of formulating and solving combinato...
A general introduction to the use of feed-back artificial neural networks (ANN) for obtaining good a...
Given the complexity and range of combinatorial optimization problems, solving them can be computati...
Neural Combinatorial Optimization attempts to learn good heuristics for solving a set of problems us...
Existing approaches to solving combinatorial optimization problems on graphs suffer from the need to...
Machine learning has recently emerged as a prospective area of investigation for OR in general and s...
Traditional solvers for tackling combinatorial optimization (CO) problems are usually designed by hu...
End-to-end training of neural network solvers for graph combinatorial optimization problems such as ...
: combinatorial optimization is an active field of research in Neural Networks. Since the first atte...
This thesis discusses combinatorial optimization problems, its characteristics and solving methods. ...
After more than a decade of research, there now exist several neural-network techniques for solving ...
Solving combinatorial optimization (CO) on graphs is among the fundamental tasks for upper-stream ap...
Real-world problems are becoming highly complex and therefore have to be solved with combinatorial o...
Branch-and-bound is a typical way to solve combinatorial optimization problems. This paper proposes ...
Graph Neural Networks (GNNs) have exploded onto the machine learning scene in recent years owing to ...
Mixed-integer programming (MIP) technology offers a generic way of formulating and solving combinato...
A general introduction to the use of feed-back artificial neural networks (ANN) for obtaining good a...
Given the complexity and range of combinatorial optimization problems, solving them can be computati...
Neural Combinatorial Optimization attempts to learn good heuristics for solving a set of problems us...
Existing approaches to solving combinatorial optimization problems on graphs suffer from the need to...
Machine learning has recently emerged as a prospective area of investigation for OR in general and s...
Traditional solvers for tackling combinatorial optimization (CO) problems are usually designed by hu...
End-to-end training of neural network solvers for graph combinatorial optimization problems such as ...
: combinatorial optimization is an active field of research in Neural Networks. Since the first atte...
This thesis discusses combinatorial optimization problems, its characteristics and solving methods. ...
After more than a decade of research, there now exist several neural-network techniques for solving ...
Solving combinatorial optimization (CO) on graphs is among the fundamental tasks for upper-stream ap...
Real-world problems are becoming highly complex and therefore have to be solved with combinatorial o...
Branch-and-bound is a typical way to solve combinatorial optimization problems. This paper proposes ...
Graph Neural Networks (GNNs) have exploded onto the machine learning scene in recent years owing to ...
Mixed-integer programming (MIP) technology offers a generic way of formulating and solving combinato...
A general introduction to the use of feed-back artificial neural networks (ANN) for obtaining good a...
Given the complexity and range of combinatorial optimization problems, solving them can be computati...