Racing algorithms are often used for offline model selection, where models are compared in terms of their average performance over a collection of problems. In this paper, we present a new racing algorithm variant, Max-Race, which makes decisions based on the maximum performance of models. It is an online algorithm, whose goal is to optimally allocate computational resources in a portfolio of evolutionary algorithms, while solving a particular problem instance. It employs a hypothesis test based on extreme value theory in order to decide, which component algorithms to retire, while avoiding unnecessary computations. Experimental results confirm that Max-Race is able to identify the best individual with high precision and low computational o...
We propose a generic approach to evolutionary optimization that is suitable for problems in which ca...
a b s t r a c t Evolutionary algorithms (EAs) excel in optimizing systems with a large number of var...
Over the past ten years, online algorithms have re-ceived considerable research interest. Online pro...
Racing algorithms are often used for offline model selection, where models are compared in terms of ...
Model Selection (MS) is an important aspect of machine learning, as necessitated by the No Free Lunc...
o Consider an ensemble of models and stick with the best Brute Force Approach o Validate the ensemb...
Given a set of models and some training data, we would like to find the model which best describes t...
This thesis presents methods for minimizing the computational effort of problem solving. Rather than...
In empirical studies of Evolutionary Algorithms, it is usually desirable to evaluate and compare alg...
Model selection is a core aspect in machine learning and is, occasionally, multi-objective in nature...
International audienceModern optimization strategies such as evolutionary algorithms, ant colony alg...
Finding a racing line that allows to achieve a competitive lap-time is a key problem in real-world c...
Abstract Our work investigates the problem of retrieving the maximum item from a set in crowdsourcin...
Algorithm selection can be performed using a model of runtime distribution, learned during a prelimi...
In this paper a reinforcement learning methodology for automatic online algorithm selection is intro...
We propose a generic approach to evolutionary optimization that is suitable for problems in which ca...
a b s t r a c t Evolutionary algorithms (EAs) excel in optimizing systems with a large number of var...
Over the past ten years, online algorithms have re-ceived considerable research interest. Online pro...
Racing algorithms are often used for offline model selection, where models are compared in terms of ...
Model Selection (MS) is an important aspect of machine learning, as necessitated by the No Free Lunc...
o Consider an ensemble of models and stick with the best Brute Force Approach o Validate the ensemb...
Given a set of models and some training data, we would like to find the model which best describes t...
This thesis presents methods for minimizing the computational effort of problem solving. Rather than...
In empirical studies of Evolutionary Algorithms, it is usually desirable to evaluate and compare alg...
Model selection is a core aspect in machine learning and is, occasionally, multi-objective in nature...
International audienceModern optimization strategies such as evolutionary algorithms, ant colony alg...
Finding a racing line that allows to achieve a competitive lap-time is a key problem in real-world c...
Abstract Our work investigates the problem of retrieving the maximum item from a set in crowdsourcin...
Algorithm selection can be performed using a model of runtime distribution, learned during a prelimi...
In this paper a reinforcement learning methodology for automatic online algorithm selection is intro...
We propose a generic approach to evolutionary optimization that is suitable for problems in which ca...
a b s t r a c t Evolutionary algorithms (EAs) excel in optimizing systems with a large number of var...
Over the past ten years, online algorithms have re-ceived considerable research interest. Online pro...