This paper establishes a link between the challenge of solving highly ambitious problems in machine learning and the goal of reproducing the dynamics of open-ended evolution in artificial life. A major problem with the objective function in machine learning is that through deception it may actually prevent the objective from being reached. In a similar way, selection in evolution may sometimes act to discourage increasing complexity. This paper proposes a single idea that both overcomes the obstacle of deception and suggests a simple new approach to open-ended evolution: Instead of either explicitly seeking an objective or modeling a domain to capture the open-endedness of natural evolution, the idea is to simply search for novelty. Even in...
A challenge for current evolutionary algorithms is to yield highly evolvable representations like th...
Novelty search is a state-of-the-art evolutionary approach that promotes behavioural novelty instead...
ABSTRACT Novelty Search, a new type of Evolutionary Algorithm, has shown much promise in the last fe...
This paper establishes a link between the challenge of solving highly ambitious problems in machine ...
In evolutionary computation, the fitness function normally measures progress toward an objective in ...
A major goal for researchers in neuroevolution is to evolve artificial neural networks (ANNs) that c...
I present a new approach to evolutionary search called novelty search, wherein only behavioral novel...
A significant challenge in genetic programming is premature convergence to local optima, which often...
Though based on abstractions of nature, current evolutionary algorithms and artificial life models l...
Biological brains can adapt and learn from past experience. Yet neuroevolution, that is, automatical...
<div><p>Natural animals are renowned for their ability to acquire a diverse and general skill set ov...
Natural animals are renowned for their ability to acquire a diverse and general skill set over the c...
Biological brains can adapt and learn from past experience. Yet neuroevolution, that is, automatical...
Recent work on novelty and behavioral diversity in evolutionary computation has highlighted the pote...
Recent work on novelty and behavioral diversity in evolutionary computation has highlighted the pote...
A challenge for current evolutionary algorithms is to yield highly evolvable representations like th...
Novelty search is a state-of-the-art evolutionary approach that promotes behavioural novelty instead...
ABSTRACT Novelty Search, a new type of Evolutionary Algorithm, has shown much promise in the last fe...
This paper establishes a link between the challenge of solving highly ambitious problems in machine ...
In evolutionary computation, the fitness function normally measures progress toward an objective in ...
A major goal for researchers in neuroevolution is to evolve artificial neural networks (ANNs) that c...
I present a new approach to evolutionary search called novelty search, wherein only behavioral novel...
A significant challenge in genetic programming is premature convergence to local optima, which often...
Though based on abstractions of nature, current evolutionary algorithms and artificial life models l...
Biological brains can adapt and learn from past experience. Yet neuroevolution, that is, automatical...
<div><p>Natural animals are renowned for their ability to acquire a diverse and general skill set ov...
Natural animals are renowned for their ability to acquire a diverse and general skill set over the c...
Biological brains can adapt and learn from past experience. Yet neuroevolution, that is, automatical...
Recent work on novelty and behavioral diversity in evolutionary computation has highlighted the pote...
Recent work on novelty and behavioral diversity in evolutionary computation has highlighted the pote...
A challenge for current evolutionary algorithms is to yield highly evolvable representations like th...
Novelty search is a state-of-the-art evolutionary approach that promotes behavioural novelty instead...
ABSTRACT Novelty Search, a new type of Evolutionary Algorithm, has shown much promise in the last fe...