Optimisation theory is at the heart of any control process, where we seek to control the behaviour of a system through a set of actions. Linear control problems have been extensively studied, and optimal control laws have been identified. But the world around us is highly non-linear and unpredictable. For these dynamic systems, which don’t possess the nice mathematical properties of the linear counterpart, the classic control theory breaks and other methods have to be employed. But nature thrives by optimising non-linear and over-complicated systems. Evolutionary Computing (EC) methods exploit nature’s way by imitating the evolution process and avoid to solve the control problem analytically. Reinforcement Learning (RL) from the other side...
In this thesis we investigate how intelligent techniques, such as Evolutionary Algorithms, can be ap...
Despite the numerous applications and success of deep reinforcement learning in many control tasks, ...
The purpose of this article is to present a multi-strategy approach to learn heuristics for planning...
International audienceDeep reinforcement learning has met noticeable successes recently for a wide r...
Algorithms for evolutionary computation, which simulate the process of natural selection to solve op...
In this paper, evolutionary and dynamic programming-based reinforcement learning techniques are comb...
Reinforcement learning in the continuous state-space poses the problem of the inability to store the...
There are two distinct approaches to solving reinforcement learning problems, namely, searching in v...
A recent trend in evolutionary algorithms (EAs) transfers expertise from and to other areas of machi...
AbstractEvolutionary programming is a stochastic optimization procedure that can be applied to diffi...
This paper shows the computational benefits of a game theoretic approach to optimization of high dim...
International audienceThe goal of reinforcement learning is to find a policy, directly or indirectly...
AbstractThe purpose of this article is to present a multi-strategy approach to learn heuristics for ...
The goal of reinforcement learning is to find a policy that maximizes the expected reward accumulate...
AbstractThe aim of this paper is to attest the improvement on strategies of intelligent adaptive age...
In this thesis we investigate how intelligent techniques, such as Evolutionary Algorithms, can be ap...
Despite the numerous applications and success of deep reinforcement learning in many control tasks, ...
The purpose of this article is to present a multi-strategy approach to learn heuristics for planning...
International audienceDeep reinforcement learning has met noticeable successes recently for a wide r...
Algorithms for evolutionary computation, which simulate the process of natural selection to solve op...
In this paper, evolutionary and dynamic programming-based reinforcement learning techniques are comb...
Reinforcement learning in the continuous state-space poses the problem of the inability to store the...
There are two distinct approaches to solving reinforcement learning problems, namely, searching in v...
A recent trend in evolutionary algorithms (EAs) transfers expertise from and to other areas of machi...
AbstractEvolutionary programming is a stochastic optimization procedure that can be applied to diffi...
This paper shows the computational benefits of a game theoretic approach to optimization of high dim...
International audienceThe goal of reinforcement learning is to find a policy, directly or indirectly...
AbstractThe purpose of this article is to present a multi-strategy approach to learn heuristics for ...
The goal of reinforcement learning is to find a policy that maximizes the expected reward accumulate...
AbstractThe aim of this paper is to attest the improvement on strategies of intelligent adaptive age...
In this thesis we investigate how intelligent techniques, such as Evolutionary Algorithms, can be ap...
Despite the numerous applications and success of deep reinforcement learning in many control tasks, ...
The purpose of this article is to present a multi-strategy approach to learn heuristics for planning...