In empirical studies of Evolutionary Algorithms, it is usually desirable to evaluate and compare algorithms using as many different parameter settings and test problems as possible, in border to have a clear and detailed picture of their performance. Unfortunately, the total number of experiments required may be very large, which often makes such research work computationally prohibitive. In this paper, the application of a statistical method called racing is proposed as a general-purpose tool to reduce the computational requirements of large-scale experimental studies in evolutionary algorithms. Experimental results are presented that show that racing typically requires only a small fraction of the cost of an exhaustive experimental study
Evolutionary optimization is widely used in many applications, like the aerospace industry, manufact...
This chapter presents a novel framework for tuning the parameters of Evolutionary Algorithms. A hybr...
Evolutionary algorithm (EA) is an umbrella term used to describe population-based stochastic direct ...
Despite the continuous advancement of Evolutionary Algorithms (EAs) and their numerous successful ap...
This article presents statistical techniques for the design and analysis of evolution strategies. Th...
International audienceThis paper describes a statistical method that helps to find good parameter se...
Choosing the best parameter setting is a well-known important and challenging task in Evolutionary A...
We propose a generic approach to evolutionary optimization that is suitable for problems in which ca...
Abstract- Choosing the best parameter setting is a wellknown important and challenging task in Evolu...
Proceeding of: EvoWorkshops 2006: EvoBIO, EvoCOMNET, EvoHOT, EvoIASP, EvoINTERACTION, EvoMUSART, and...
Selection methods in Evolutionary Algorithms, including Genetic Algorithms, Evolution Strategies (ES...
A brief discussion of the genesis of evolutionary computation methods, their relationship to artific...
This paper proposes a statistical methodology for comparing the performance of evolutionary computat...
Evolutionary computing has been used for many years in the form of evolutionary algorithms (EA)---of...
Racing algorithms are often used for offline model selection, where models are compared in terms of ...
Evolutionary optimization is widely used in many applications, like the aerospace industry, manufact...
This chapter presents a novel framework for tuning the parameters of Evolutionary Algorithms. A hybr...
Evolutionary algorithm (EA) is an umbrella term used to describe population-based stochastic direct ...
Despite the continuous advancement of Evolutionary Algorithms (EAs) and their numerous successful ap...
This article presents statistical techniques for the design and analysis of evolution strategies. Th...
International audienceThis paper describes a statistical method that helps to find good parameter se...
Choosing the best parameter setting is a well-known important and challenging task in Evolutionary A...
We propose a generic approach to evolutionary optimization that is suitable for problems in which ca...
Abstract- Choosing the best parameter setting is a wellknown important and challenging task in Evolu...
Proceeding of: EvoWorkshops 2006: EvoBIO, EvoCOMNET, EvoHOT, EvoIASP, EvoINTERACTION, EvoMUSART, and...
Selection methods in Evolutionary Algorithms, including Genetic Algorithms, Evolution Strategies (ES...
A brief discussion of the genesis of evolutionary computation methods, their relationship to artific...
This paper proposes a statistical methodology for comparing the performance of evolutionary computat...
Evolutionary computing has been used for many years in the form of evolutionary algorithms (EA)---of...
Racing algorithms are often used for offline model selection, where models are compared in terms of ...
Evolutionary optimization is widely used in many applications, like the aerospace industry, manufact...
This chapter presents a novel framework for tuning the parameters of Evolutionary Algorithms. A hybr...
Evolutionary algorithm (EA) is an umbrella term used to describe population-based stochastic direct ...