The parsimony pressure method is perhaps the simplest and most frequently used method to control bloat in genetic programming (GP). In this chapter we first reconsider the size evolution equation for genetic programming developed in Poli andMcPhee (Evol Comput 11(2):169-206, 2003) and rewrite it in a form that shows its direct relationship to Price’s theorem. We then use this new formulation to derive theoretical results that show how to practically and optimally set the parsimony coefficient dynamically during a run so as to achieve complete control over the growth of the programs in a population. Experimental results confirm the effectiveness of the method, as we are able to tightly control the average program size under a variety of cond...
This paper presents a new proposal for reducing bloat in Genetic Programming. This proposal is base...
Abstract. Universal Consistency, the convergence to the minimum possible er-ror rate in learning thr...
One of the greater issues in Genetic Programming (GP) is the computational effort required to run th...
The parsimony pressure method is perhaps the simplest and most frequently used method to control blo...
This paper presents an approach to solve the parsimony, or a tree size growth, problem in Genetic Pr...
Genetic programming has highlighted the problem of bloat, the uncontrolled growth of the average siz...
Bloat is one of the most widely studied phenomena in Genetic Programming (GP), it is normally define...
Unnecessary growth in program size is known as bloat problem in Genetic Programming. There are a lar...
In tree-based genetic programming (GP) there is a tendency for the program trees to increase in size...
Introduction The rapid growth of programs produced by genetic programming (GP) is a well documented...
AbstractGenetic programming (GP), a widely used evolutionary computing technique, suffers from bloat...
In tree-based genetic programming (GP) there is a tendency for the program trees to increase in size...
Genetic Programming is an evolutionary computation technique which searches for those computer progr...
This paper derives a population sizing relationship for genetic programming (GP). Following the popu...
Unnecessary growth in program size is known as the bloat problem in Genetic Programming. Bloat not o...
This paper presents a new proposal for reducing bloat in Genetic Programming. This proposal is base...
Abstract. Universal Consistency, the convergence to the minimum possible er-ror rate in learning thr...
One of the greater issues in Genetic Programming (GP) is the computational effort required to run th...
The parsimony pressure method is perhaps the simplest and most frequently used method to control blo...
This paper presents an approach to solve the parsimony, or a tree size growth, problem in Genetic Pr...
Genetic programming has highlighted the problem of bloat, the uncontrolled growth of the average siz...
Bloat is one of the most widely studied phenomena in Genetic Programming (GP), it is normally define...
Unnecessary growth in program size is known as bloat problem in Genetic Programming. There are a lar...
In tree-based genetic programming (GP) there is a tendency for the program trees to increase in size...
Introduction The rapid growth of programs produced by genetic programming (GP) is a well documented...
AbstractGenetic programming (GP), a widely used evolutionary computing technique, suffers from bloat...
In tree-based genetic programming (GP) there is a tendency for the program trees to increase in size...
Genetic Programming is an evolutionary computation technique which searches for those computer progr...
This paper derives a population sizing relationship for genetic programming (GP). Following the popu...
Unnecessary growth in program size is known as the bloat problem in Genetic Programming. Bloat not o...
This paper presents a new proposal for reducing bloat in Genetic Programming. This proposal is base...
Abstract. Universal Consistency, the convergence to the minimum possible er-ror rate in learning thr...
One of the greater issues in Genetic Programming (GP) is the computational effort required to run th...