<p>This paper presents a first step of our research on designing an effective and efficient GP-based method for symbolic regression. First, we propose three extensions of the standard Single Node GP, namely (1) a selection strategy for choosing nodes to be mutated based on depth and performance of the nodes, (2) operators for placing a compact version of the best-performing graph to the beginning and to the end of the population, respectively, and (3) a local search strategy with multiple mutations applied in each iteration. All the proposed modifications have been experimentally evaluated on five symbolic regression benchmarks and compared with standard GP and SNGP. The achieved results are promising showing the potential of the proposed m...
Abstract- In this paper, we show some experimental results of tree-adjunct grammar guided genetic pr...
Genetic programming (GP) approaches have been widely studied for symbolic regression problems and ha...
When learning from high-dimensional data for symbolic regression (SR), genetic programming (GP) typi...
This paper presents a first step of our research on designing an effective and efficient GP-based me...
This paper presents a first step of our research on designing an effective and efficient GP-based me...
Abstract- This paper reports an improvement to genetic programming (GP) search for the symbolic regr...
Symbolic regression (SR) is a function identification process, the task of which is to identify and ...
Symbolic regression (SR) is a function identification process, the task of which is to identify and ...
Abstract- In this paper, we show some experimental results of tree-adjunct grammar guided genetic pr...
Genetic programming (GP) is a commonly used approach to solve symbolic regression (SR) problems. Com...
Abstract- In this paper, we show some experimental results of tree-adjunct grammar guided genetic pr...
This paper focuses on the use of the Bison Seeker Algorithm (BSA) in a hybrid genetic programming ap...
This chapter describes the Sequential Symbolic Regression (SSR) method, a new strategy for function ...
This paper focuses on the use of hybrid genetic programming for the supervised machine learning meth...
Evolutionary algorithms are constantly developing and progressive part of informatics. These algorit...
Abstract- In this paper, we show some experimental results of tree-adjunct grammar guided genetic pr...
Genetic programming (GP) approaches have been widely studied for symbolic regression problems and ha...
When learning from high-dimensional data for symbolic regression (SR), genetic programming (GP) typi...
This paper presents a first step of our research on designing an effective and efficient GP-based me...
This paper presents a first step of our research on designing an effective and efficient GP-based me...
Abstract- This paper reports an improvement to genetic programming (GP) search for the symbolic regr...
Symbolic regression (SR) is a function identification process, the task of which is to identify and ...
Symbolic regression (SR) is a function identification process, the task of which is to identify and ...
Abstract- In this paper, we show some experimental results of tree-adjunct grammar guided genetic pr...
Genetic programming (GP) is a commonly used approach to solve symbolic regression (SR) problems. Com...
Abstract- In this paper, we show some experimental results of tree-adjunct grammar guided genetic pr...
This paper focuses on the use of the Bison Seeker Algorithm (BSA) in a hybrid genetic programming ap...
This chapter describes the Sequential Symbolic Regression (SSR) method, a new strategy for function ...
This paper focuses on the use of hybrid genetic programming for the supervised machine learning meth...
Evolutionary algorithms are constantly developing and progressive part of informatics. These algorit...
Abstract- In this paper, we show some experimental results of tree-adjunct grammar guided genetic pr...
Genetic programming (GP) approaches have been widely studied for symbolic regression problems and ha...
When learning from high-dimensional data for symbolic regression (SR), genetic programming (GP) typi...