peer reviewedReinforcement learning (RL) is a widely used learning paradigm for adaptive agents. Because exact RL can only be applied to very simple problems, approximate algorithms are usually necessary in practice. Many algorithms for approximate RL rely on basis-function representations of the value function (or of the Q-function). Designing a good set of basis functions without any prior knowledge of the value function (or of the Q-function) can be a difficult task. In this paper, we propose instead a technique to optimize the shape of a constant number of basis functions for the approximate, fuzzy Q-iteration algorithm. In contrast to other approaches to adapt basis functions for RL, our optimization criterion measures the actual perfo...
In this thesis, a novel Reinforcement Learning (RL) methodology, termed Dynamic Self-Generated Fuzz...
Reinforcement Learning is the learning methodology whereby a learner develops its knowledge through ...
We formulate an efficient approximation for multi-agent batch reinforcement learning, the approximat...
Abstract: Reinforcement learning (RL) is a widely used learning paradigm for adaptive agents. Becaus...
peer reviewedReinforcement learning (RL) is a widely used learning paradigm for adaptive agents. Wel...
peer reviewedReinforcement learning (RL) is a widely used paradigm for learning control. Computing e...
peer reviewedReinforcement learning (RL) is a learning control paradigm that provides well-understoo...
Abstract—Reinforcement learning (RL) is a widely used para-digm for learning control. Computing exac...
Dynamic programming (DP) is a powerful paradigm for general, nonlinear optimal control. Computing ex...
In this study a gain scheduling method for the scaling factors of the input variables to the fuzzy l...
Fuzzy Q-Learning algorithm combines reinforcement learning techniques with fuzzy modelling. It provi...
Recently, the intelligent agent has become one of the important issues in Artificial Intelligence. T...
In this work, we propose a new fuzzy reinforcement learning algorithm for differential games that ha...
A multi-agent system (MAS) is suitable for addressing tasks in a variety of domains without any prog...
This paper introduces an algorithm for direct search of control policies in continuous-state, discre...
In this thesis, a novel Reinforcement Learning (RL) methodology, termed Dynamic Self-Generated Fuzz...
Reinforcement Learning is the learning methodology whereby a learner develops its knowledge through ...
We formulate an efficient approximation for multi-agent batch reinforcement learning, the approximat...
Abstract: Reinforcement learning (RL) is a widely used learning paradigm for adaptive agents. Becaus...
peer reviewedReinforcement learning (RL) is a widely used learning paradigm for adaptive agents. Wel...
peer reviewedReinforcement learning (RL) is a widely used paradigm for learning control. Computing e...
peer reviewedReinforcement learning (RL) is a learning control paradigm that provides well-understoo...
Abstract—Reinforcement learning (RL) is a widely used para-digm for learning control. Computing exac...
Dynamic programming (DP) is a powerful paradigm for general, nonlinear optimal control. Computing ex...
In this study a gain scheduling method for the scaling factors of the input variables to the fuzzy l...
Fuzzy Q-Learning algorithm combines reinforcement learning techniques with fuzzy modelling. It provi...
Recently, the intelligent agent has become one of the important issues in Artificial Intelligence. T...
In this work, we propose a new fuzzy reinforcement learning algorithm for differential games that ha...
A multi-agent system (MAS) is suitable for addressing tasks in a variety of domains without any prog...
This paper introduces an algorithm for direct search of control policies in continuous-state, discre...
In this thesis, a novel Reinforcement Learning (RL) methodology, termed Dynamic Self-Generated Fuzz...
Reinforcement Learning is the learning methodology whereby a learner develops its knowledge through ...
We formulate an efficient approximation for multi-agent batch reinforcement learning, the approximat...