This dissertation investigates algorithm performance predictions in the context of combinatorial optimisation problems. The project is inspired by existing studies on running time predictions for complete search methods solving classical decision and optimisation problems. It considers more general performance criteria in the context of incomplete methods. One of the core concepts in this thesis is the notion of empirical hardness, denoting the apparent complexity of an instance as it is observed by a particular solver. We start by proposing a general strategy allowing for the construction of prediction models for the empirical hardness of practical problem instances. This strategy is formulated at a high level, allowing it to be applied in...
For decades, optimisation research has investigated methods to find optimal solutions to many proble...
The Algorithm Selection Problem is to select the most appropriate way for solving a problem given a ...
In practical applications, some important classes of problems are NP-complete. Although no worst-cas...
We investigate the applicability of an existing framework for algorithm runtime prediction to the fi...
We investigate the applicability of an existing framework for algorithm runtime prediction to the fi...
This dissertation is concerned with configuring stochastic local search for combinatorial optimizati...
The article describes the proposition and implementation of a demonstration, learning and decision s...
In this talk, we will present the results of an experimental study towards building an automatic alg...
The present thesis describes the use of reinforcement learning to enhance heuristic search for solvi...
Optimization problems have been immuned to any attempt of combination with machine learning until a ...
The development of algorithms solving computationally hard optimisation problems has a long history....
Today, combinatorial optimization is one of the youngest and most active areas of discrete mathemati...
In many real-life circumstances decision problems arise. Optimisation problems can be for- mulated a...
The main topic of this thesis is the combination of metaheuristics and other methods for solving com...
Solving large combinatorial optimization problems is a ubiquitous task across multiple disciplines. ...
For decades, optimisation research has investigated methods to find optimal solutions to many proble...
The Algorithm Selection Problem is to select the most appropriate way for solving a problem given a ...
In practical applications, some important classes of problems are NP-complete. Although no worst-cas...
We investigate the applicability of an existing framework for algorithm runtime prediction to the fi...
We investigate the applicability of an existing framework for algorithm runtime prediction to the fi...
This dissertation is concerned with configuring stochastic local search for combinatorial optimizati...
The article describes the proposition and implementation of a demonstration, learning and decision s...
In this talk, we will present the results of an experimental study towards building an automatic alg...
The present thesis describes the use of reinforcement learning to enhance heuristic search for solvi...
Optimization problems have been immuned to any attempt of combination with machine learning until a ...
The development of algorithms solving computationally hard optimisation problems has a long history....
Today, combinatorial optimization is one of the youngest and most active areas of discrete mathemati...
In many real-life circumstances decision problems arise. Optimisation problems can be for- mulated a...
The main topic of this thesis is the combination of metaheuristics and other methods for solving com...
Solving large combinatorial optimization problems is a ubiquitous task across multiple disciplines. ...
For decades, optimisation research has investigated methods to find optimal solutions to many proble...
The Algorithm Selection Problem is to select the most appropriate way for solving a problem given a ...
In practical applications, some important classes of problems are NP-complete. Although no worst-cas...