In a seminal paper, Valiant (2006) introduced a computational model for evolution to ad-dress the question of complexity that can arise through Darwinian mechanisms. Valiant views evolution as a restricted form of computational learning, where the goal is to evolve a hypothesis that is close to the ideal function. Feldman (2008) showed that (correlational) statistical query learning algorithms could be framed as evolutionary mechanisms in Valiant’s model. P. Valiant (2012) considered evolvability of real-valued functions and also showed that weak-optimization algorithms that use weak-evaluation oracles could be converted to evolutionary mechanisms. In this work, we focus on the complexity of representations of evolutionary mechanisms. In ge...
Evolutionary computation is known to require long computation time for large problems. This chapter ...
Inspired by organism evolution, evolutionary algorithms have attracted research interests for severa...
One serious problem of standard Genetic Programming (GP) is that evolved structures appear to drift ...
Darwin’s theory of evolution through natural selection has been a cornerstone of biology for over a ...
Evolutionary learning techniques are comparable in accuracy with other learning methods such as Baye...
Evolutionary Computation (EC) approaches are inspired by nature and solve optimization problems in a...
One serious problem of standard Genetic Programming (GP) is that evolved expressions appear to drift...
Living organisms function in accordance with complex mechanisms that operate in different ways depen...
Abstract. Darwin’s theory of evolution is considered to be one of the greatest scientific gems in mo...
Most machine learning algorithms ultimately focus on optimizing solutions to a single target functio...
Statistical query (SQ) learning model of Kearns is a natural restriction of the PAC learning model i...
Evolutionary algorithms are bio-inspired algorithms based on Darwin’s theory of evolution. They are ...
This paper establishes theoretical bonafides for implicit concurrent multivariate effect evalu-ation...
In this participation, we are continuing to show mutual intersection of two completely different are...
Abstract—Evolutionary algorithms (EAs), a large class of gen-eral purpose optimization algorithms in...
Evolutionary computation is known to require long computation time for large problems. This chapter ...
Inspired by organism evolution, evolutionary algorithms have attracted research interests for severa...
One serious problem of standard Genetic Programming (GP) is that evolved structures appear to drift ...
Darwin’s theory of evolution through natural selection has been a cornerstone of biology for over a ...
Evolutionary learning techniques are comparable in accuracy with other learning methods such as Baye...
Evolutionary Computation (EC) approaches are inspired by nature and solve optimization problems in a...
One serious problem of standard Genetic Programming (GP) is that evolved expressions appear to drift...
Living organisms function in accordance with complex mechanisms that operate in different ways depen...
Abstract. Darwin’s theory of evolution is considered to be one of the greatest scientific gems in mo...
Most machine learning algorithms ultimately focus on optimizing solutions to a single target functio...
Statistical query (SQ) learning model of Kearns is a natural restriction of the PAC learning model i...
Evolutionary algorithms are bio-inspired algorithms based on Darwin’s theory of evolution. They are ...
This paper establishes theoretical bonafides for implicit concurrent multivariate effect evalu-ation...
In this participation, we are continuing to show mutual intersection of two completely different are...
Abstract—Evolutionary algorithms (EAs), a large class of gen-eral purpose optimization algorithms in...
Evolutionary computation is known to require long computation time for large problems. This chapter ...
Inspired by organism evolution, evolutionary algorithms have attracted research interests for severa...
One serious problem of standard Genetic Programming (GP) is that evolved structures appear to drift ...