Abstract—The objective function is the core element in most search algorithms that are used to solve engineering and scientific problems, referred to as the fitness function in evolutionary computation. Some researchers have attempted to bridge this difference by reducing the need for an explicit fitness function. A noteworthy example is the novelty search (NS) algorithm, that substitutes fitness with a measure of uniqueness, or novelty, that each individual introduces into the search. NS employs the concept of behavioral space, where each individual is described by a domain-specific descriptor that captures the main features of an individual’s performance. However, defining a behavioral descriptor is not trivial, and most works with NS hav...
This paper presents a first step of our research on designing an effective and efficient GP-based me...
When learning from high-dimensional data for symbolic regression (SR), genetic programming (GP) typi...
This paper establishes a link between the challenge of solving highly ambitious problems in machine ...
The objective function is the core element in most search algorithms that are used to solve engineer...
Novelty Search (NS) is a unique approach towards search and optimization,where an explicit objective...
Novelty Search (NS) is a unique approach towards search and optimization, where an explicit objectiv...
Abstract- This paper reports an improvement to genetic programming (GP) search for the symbolic regr...
A significant challenge in genetic programming is premature convergence to local optima, which often...
Novelty search is a state-of-the-art evolutionary approach that promotes behavioural novelty instead...
Abstract: Novelty search is an evolutionary approach in which the population is driven towards behav...
Novelty search is a state-of-the-art evolutionary approach that promotes behavioural novelty instea...
This chapter describes the Sequential Symbolic Regression (SSR) method, a new strategy for function ...
Genetic programming is an often-used technique for symbolic regression: finding symbolic expressions...
Genetic programming (GP) coarsely models natural evolution to evolve computer programs. Unlike in na...
In evolutionary computation, the fitness of a candidate solu-tion conveys sparse feedback. Yet in ma...
This paper presents a first step of our research on designing an effective and efficient GP-based me...
When learning from high-dimensional data for symbolic regression (SR), genetic programming (GP) typi...
This paper establishes a link between the challenge of solving highly ambitious problems in machine ...
The objective function is the core element in most search algorithms that are used to solve engineer...
Novelty Search (NS) is a unique approach towards search and optimization,where an explicit objective...
Novelty Search (NS) is a unique approach towards search and optimization, where an explicit objectiv...
Abstract- This paper reports an improvement to genetic programming (GP) search for the symbolic regr...
A significant challenge in genetic programming is premature convergence to local optima, which often...
Novelty search is a state-of-the-art evolutionary approach that promotes behavioural novelty instead...
Abstract: Novelty search is an evolutionary approach in which the population is driven towards behav...
Novelty search is a state-of-the-art evolutionary approach that promotes behavioural novelty instea...
This chapter describes the Sequential Symbolic Regression (SSR) method, a new strategy for function ...
Genetic programming is an often-used technique for symbolic regression: finding symbolic expressions...
Genetic programming (GP) coarsely models natural evolution to evolve computer programs. Unlike in na...
In evolutionary computation, the fitness of a candidate solu-tion conveys sparse feedback. Yet in ma...
This paper presents a first step of our research on designing an effective and efficient GP-based me...
When learning from high-dimensional data for symbolic regression (SR), genetic programming (GP) typi...
This paper establishes a link between the challenge of solving highly ambitious problems in machine ...