Genetic programming is an often-used technique for symbolic regression: finding symbolic expressions that match data from an unknown function. To make the symbolic regression more efficient, one can also use dimensionally-aware genetic programming that constrains the physical units of the equation. Nevertheless, there is no formal analysis of how much dimensionality awareness helps in the regression process. In this paper, we conduct a fitness landscape analysis of dimensionally-aware genetic programming search spaces on a subset of equations from Richard Feynman’s well-known lectures. We define an initialisation procedure and an accompanying set of neighbourhood operators for conducting the local search within the physical unit constraints...
The search landscape is a common metaphor to describe the structure of computational search spaces. ...
The main aim of landscape analysis has been to quantify the ‘hardness ’ of problems. Early steps hav...
4siIn a recent contribution we have introduced a new implementation of geometric semantic operators ...
Genetic programming is an often-used technique for symbolic regression: finding symbolic expressions...
Genetic programming approaches are moving from analysing the syntax of individual solutions to look ...
Abstract- This paper reports an improvement to genetic programming (GP) search for the symbolic regr...
When learning from high-dimensional data for symbolic regression (SR), genetic programming (GP) typi...
Although genetic programming has often successfully been applied to non-parametric modeling, it is f...
Genetic programming (GP) coarsely models natural evolution to evolve computer programs. Unlike in na...
Symbolic regression (SR) is a function identification process, the task of which is to identify and ...
Geometric Semantic Genetic Programming (GSGP) is a recently introduced form of Genetic Programming (...
Dimensionality reduction (DR) is an important technique for data exploration and knowledge discovery...
The objective function is the core element in most search algorithms that are used to solve engineer...
Abstract. Universal Consistency, the convergence to the minimum possible er-ror rate in learning thr...
The search landscape is a common metaphor to describe the structure of computational search spaces. ...
The main aim of landscape analysis has been to quantify the ‘hardness ’ of problems. Early steps hav...
4siIn a recent contribution we have introduced a new implementation of geometric semantic operators ...
Genetic programming is an often-used technique for symbolic regression: finding symbolic expressions...
Genetic programming approaches are moving from analysing the syntax of individual solutions to look ...
Abstract- This paper reports an improvement to genetic programming (GP) search for the symbolic regr...
When learning from high-dimensional data for symbolic regression (SR), genetic programming (GP) typi...
Although genetic programming has often successfully been applied to non-parametric modeling, it is f...
Genetic programming (GP) coarsely models natural evolution to evolve computer programs. Unlike in na...
Symbolic regression (SR) is a function identification process, the task of which is to identify and ...
Geometric Semantic Genetic Programming (GSGP) is a recently introduced form of Genetic Programming (...
Dimensionality reduction (DR) is an important technique for data exploration and knowledge discovery...
The objective function is the core element in most search algorithms that are used to solve engineer...
Abstract. Universal Consistency, the convergence to the minimum possible er-ror rate in learning thr...
The search landscape is a common metaphor to describe the structure of computational search spaces. ...
The main aim of landscape analysis has been to quantify the ‘hardness ’ of problems. Early steps hav...
4siIn a recent contribution we have introduced a new implementation of geometric semantic operators ...