Quality-Diversity algorithms, such as MAP-Elites, are a branch of Evolutionary Computation generating collections of diverse and high-performing solutions, that have been successfully applied to a variety of domains and particularly in evolutionary robotics. However, MAP-Elites performs a divergent search based on random mutations originating from Genetic Algorithms, and thus, is limited to evolving populations of low-dimensional solutions. PGA-MAP-Elites overcomes this limitation by integrating a gradient-based variation operator inspired by Deep Reinforcement Learning which enables the evolution of large neural networks. Although high-performing in many environments, PGA-MAP-Elites fails on several tasks where the convergent search of the...
This thesis proposes a new approach to evolving a diversity of high-quality solutions for problems h...
One of the core functions in most Evolutionary Algorithms is mutation. In complex search spaces, whi...
We present a Quality-Diversity benchmark suite for Deep Neuroevolution in Reinforcement Learning dom...
Quality-Diversity algorithms, such as MAP-Elites, are a branch of Evolutionary Computation generatin...
Quality-Diversity optimisation algorithms enable the evolutionof collections of both high-performing...
A fascinating aspect of nature lies in its ability to produce a large and diverse collection of orga...
International audienceThe recently introduced Intelligent Trial and Error algorithm (IT&E) both impr...
Optimization plays an essential role in industrial design, but is not limited to minimization of a s...
Quality-Diversity search is the process of finding diverse solutions within the search space which d...
Quality-Diversity (QD) algorithms have recently gained traction as optimisation methods due to their...
Exploration is a key challenge in Reinforcement Learning, especially in long-horizon, deceptive and ...
International audienceEvolution has produced an astonishing diversity of species, each filling a dif...
The recently introduced Intelligent Trial and Error algorithm (IT&E) both improves the ability t...
Neuroevolution is an alternative to gradient-based optimisation that has the potential to avoid loca...
International audienceEvolutionary ensemble learning methods with Genetic Programming have achieved ...
This thesis proposes a new approach to evolving a diversity of high-quality solutions for problems h...
One of the core functions in most Evolutionary Algorithms is mutation. In complex search spaces, whi...
We present a Quality-Diversity benchmark suite for Deep Neuroevolution in Reinforcement Learning dom...
Quality-Diversity algorithms, such as MAP-Elites, are a branch of Evolutionary Computation generatin...
Quality-Diversity optimisation algorithms enable the evolutionof collections of both high-performing...
A fascinating aspect of nature lies in its ability to produce a large and diverse collection of orga...
International audienceThe recently introduced Intelligent Trial and Error algorithm (IT&E) both impr...
Optimization plays an essential role in industrial design, but is not limited to minimization of a s...
Quality-Diversity search is the process of finding diverse solutions within the search space which d...
Quality-Diversity (QD) algorithms have recently gained traction as optimisation methods due to their...
Exploration is a key challenge in Reinforcement Learning, especially in long-horizon, deceptive and ...
International audienceEvolution has produced an astonishing diversity of species, each filling a dif...
The recently introduced Intelligent Trial and Error algorithm (IT&E) both improves the ability t...
Neuroevolution is an alternative to gradient-based optimisation that has the potential to avoid loca...
International audienceEvolutionary ensemble learning methods with Genetic Programming have achieved ...
This thesis proposes a new approach to evolving a diversity of high-quality solutions for problems h...
One of the core functions in most Evolutionary Algorithms is mutation. In complex search spaces, whi...
We present a Quality-Diversity benchmark suite for Deep Neuroevolution in Reinforcement Learning dom...