International audienceDeep reinforcement learning has met noticeable successes recently for a wide range of control problems. However, this is typically based on thousands of weights and non-linearities, making solutions complex, not easily reproducible, uninterpretable and heavy. The present paper presents genetic programming approaches for building symbolic controllers. Results are competitive, in particular in the case of delayed rewards, and the solutions are lighter by orders of magnitude and much more understandable
AbstractThe purpose of this article is to present a multi-strategy approach to learn heuristics for ...
This paper presents Genetic-based learning Algorithms (GA) for automatically inducing control rules ...
Many risk-sensitive applications require Machine Learning (ML) models to be interpretable. Attempts ...
International audienceDeep reinforcement learning has met noticeable successes recently for a wide r...
International audienceThe goal of reinforcement learning is to find a policy, directly or indirectly...
The goal of reinforcement learning is to find a policy that maximizes the expected reward accumulate...
Optimisation theory is at the heart of any control process, where we seek to control the behaviour o...
Explainable artificial intelligence has received great interest in the recent decade, due to its imp...
This paper addresses the problem of deriving a policy from the value function in the context of rein...
This paper shows how genetic programming (an area under the umbrella of evolutionary computation) ca...
A recent trend in evolutionary algorithms (EAs) transfers expertise from and to other areas of machi...
Reward functions in reinforcement learning have largely been assumed given as part of the problem be...
The purpose of this article is to present a multi-strategy approach to learn heuristics for planning...
The last decade has seen amazing performance improvements in deep learning. However, the black-box n...
Combining different machine learning algorithms in the same system can produce benefits above and be...
AbstractThe purpose of this article is to present a multi-strategy approach to learn heuristics for ...
This paper presents Genetic-based learning Algorithms (GA) for automatically inducing control rules ...
Many risk-sensitive applications require Machine Learning (ML) models to be interpretable. Attempts ...
International audienceDeep reinforcement learning has met noticeable successes recently for a wide r...
International audienceThe goal of reinforcement learning is to find a policy, directly or indirectly...
The goal of reinforcement learning is to find a policy that maximizes the expected reward accumulate...
Optimisation theory is at the heart of any control process, where we seek to control the behaviour o...
Explainable artificial intelligence has received great interest in the recent decade, due to its imp...
This paper addresses the problem of deriving a policy from the value function in the context of rein...
This paper shows how genetic programming (an area under the umbrella of evolutionary computation) ca...
A recent trend in evolutionary algorithms (EAs) transfers expertise from and to other areas of machi...
Reward functions in reinforcement learning have largely been assumed given as part of the problem be...
The purpose of this article is to present a multi-strategy approach to learn heuristics for planning...
The last decade has seen amazing performance improvements in deep learning. However, the black-box n...
Combining different machine learning algorithms in the same system can produce benefits above and be...
AbstractThe purpose of this article is to present a multi-strategy approach to learn heuristics for ...
This paper presents Genetic-based learning Algorithms (GA) for automatically inducing control rules ...
Many risk-sensitive applications require Machine Learning (ML) models to be interpretable. Attempts ...