This is the result of the study "Automated Configuration of Genetic Algorithms by Tuning for Anytime Performance." We compare grid search with three automated algorithm configuration methods, iterated racing (Irace), mixed-integer parallel efficient global optimization (MIP-EGO), and mixed-integer evolutionary strategies (MIES). The genetic algorithm (GA) is tuned for better the expected running time (ERT) and the area under the empirical cumulative distribution function curve (AUC). The result is tested on 25 pseudo-boolean problems. This Data set consists of 3 parts: 1. data and configurations: The performance of the configured GAs obtained by the configurators on 25 pseudo-Boolean problems defined in IOHprofiler (https://iohprofiler.g...
Modern optimization strategies such as evolutionary algorithms, ant colony algorithms, Bayesian opti...
AbstractMany adaptive systems require optimization in real time. Whether it is a robot that must mai...
The paper is devoted to upper bounds on run-time of Non-Elitist Genetic Algorithms until some target...
This is the result of the study "Automated Configuration of Genetic Algorithms by Tuning for Anytime...
Abstract. The use of locking caches has been recently proposed to ease the analysis of the performan...
Choosing the best parameter setting is a well-known important and challenging task in Evolutionary A...
This is the result of the study "Leveraging Benchmarking Data for Informed One-Shot Dynamic Algorith...
The objective of this dissertation is to develop a multi-resolution optimization strategy based on t...
Abstract- Choosing the best parameter setting is a wellknown important and challenging task in Evolu...
Genetic Algorithms (GAs) have been successfully applied to a wide range of engineering optimization ...
Data and code/scripts for the work Multiobjective Evolutionary Component Effect on Algorithm behavi...
This paper presents a practical methodology of improving the efficiency of Genetic Algorithms throug...
153 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1999.Parallel implementations of g...
Evolutionary algorithms (EAs) are modern techniques for searching complex spaces for on optimum [11]...
Genetic Algorithms (GAs) following a parallel master-slave architecture can be effectively used to r...
Modern optimization strategies such as evolutionary algorithms, ant colony algorithms, Bayesian opti...
AbstractMany adaptive systems require optimization in real time. Whether it is a robot that must mai...
The paper is devoted to upper bounds on run-time of Non-Elitist Genetic Algorithms until some target...
This is the result of the study "Automated Configuration of Genetic Algorithms by Tuning for Anytime...
Abstract. The use of locking caches has been recently proposed to ease the analysis of the performan...
Choosing the best parameter setting is a well-known important and challenging task in Evolutionary A...
This is the result of the study "Leveraging Benchmarking Data for Informed One-Shot Dynamic Algorith...
The objective of this dissertation is to develop a multi-resolution optimization strategy based on t...
Abstract- Choosing the best parameter setting is a wellknown important and challenging task in Evolu...
Genetic Algorithms (GAs) have been successfully applied to a wide range of engineering optimization ...
Data and code/scripts for the work Multiobjective Evolutionary Component Effect on Algorithm behavi...
This paper presents a practical methodology of improving the efficiency of Genetic Algorithms throug...
153 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1999.Parallel implementations of g...
Evolutionary algorithms (EAs) are modern techniques for searching complex spaces for on optimum [11]...
Genetic Algorithms (GAs) following a parallel master-slave architecture can be effectively used to r...
Modern optimization strategies such as evolutionary algorithms, ant colony algorithms, Bayesian opti...
AbstractMany adaptive systems require optimization in real time. Whether it is a robot that must mai...
The paper is devoted to upper bounds on run-time of Non-Elitist Genetic Algorithms until some target...