In this paper, the mathematical interpretation of correlation coefficient is reviewed to explain the conditions under which it operates. Using the work of Jones and Forrest (1995) on fitness distance correlation (FDC) as a measure of problem difficulty for genetic algorithms, a novel framework combing FDC with the Experimental Design perspective in statistics is proposed. It is shown that this method not only satisfies the mathematical condition of correlation coefficient, but alson that it is closely relevant to genetic operators such as crossover and mutation and can therefore be used to predict the performance of genetic algorithms more accurately. Different well-known problems such as epistasis interactions, isolation or needle-in-a-hay...
Abstract — This paper looks at the statistics used to compare variations to the genetic programming ...
The hash function is used as a one-way cryptography method for digital signature and message authent...
Representation is widely recognised as a key determinant of performance in evolutionary computation...
In this paper, the mathematical interpretation of correlation coefficient is reviewed to explain the...
International audienceThis paper revisits past works on fitness distance correlation (FDC) in relati...
Fitness distance correlation (FDC) has been offered as a summary statistic with apparent success in ...
Recent work stresses the limitations of fitness distance correlation (FDC) as an indicator of landsc...
This paper described edit distance which is so far unexploited by the GP community despite its suita...
The Timetabling Problem is a combinatorial optimization problem. The University Course Timetabling P...
The Timetabling Problem is a combinatorial optimization problem. Over the last decade variant of Met...
One of the main open problems within Genetic Programming (GP) is to meaningfully characterize the di...
pages 1218-1223International audienceThis paper deals with the way dual genetic algorithms (dga), an...
The main aim of landscape analysis has been to quantify the ‘hardness ’ of problems. Early steps hav...
An open question within Genetic Programming (GP) is how to characterize problem difficulty. The goal...
This paper surveys strategies applied to avoid premature convergence in Genetic Algorithms (GAs).Gen...
Abstract — This paper looks at the statistics used to compare variations to the genetic programming ...
The hash function is used as a one-way cryptography method for digital signature and message authent...
Representation is widely recognised as a key determinant of performance in evolutionary computation...
In this paper, the mathematical interpretation of correlation coefficient is reviewed to explain the...
International audienceThis paper revisits past works on fitness distance correlation (FDC) in relati...
Fitness distance correlation (FDC) has been offered as a summary statistic with apparent success in ...
Recent work stresses the limitations of fitness distance correlation (FDC) as an indicator of landsc...
This paper described edit distance which is so far unexploited by the GP community despite its suita...
The Timetabling Problem is a combinatorial optimization problem. The University Course Timetabling P...
The Timetabling Problem is a combinatorial optimization problem. Over the last decade variant of Met...
One of the main open problems within Genetic Programming (GP) is to meaningfully characterize the di...
pages 1218-1223International audienceThis paper deals with the way dual genetic algorithms (dga), an...
The main aim of landscape analysis has been to quantify the ‘hardness ’ of problems. Early steps hav...
An open question within Genetic Programming (GP) is how to characterize problem difficulty. The goal...
This paper surveys strategies applied to avoid premature convergence in Genetic Algorithms (GAs).Gen...
Abstract — This paper looks at the statistics used to compare variations to the genetic programming ...
The hash function is used as a one-way cryptography method for digital signature and message authent...
Representation is widely recognised as a key determinant of performance in evolutionary computation...