An actor-critic reinforcement-learning algorithm using a radial-basis-function network for approximation of the actor and the critic was run on a small-scale multi-agent system with an initially unpredictably hostile environment. The performance of two approaches was compared: having fixed learning parameters, and using modulated parameters that were allowed to deviate from their base values depending on the simulated emotional state of the agent. The latter approach was shown to give marginally better performance once the distracting hostile elements were removed from the environment. This seems to indicate that emotion-modulated learning may lead to somewhat closer approximation of the optimal policy in a difficult environment, by focusin...
For single-agent problems, Reinforcement Learning (RL) algorithms proved to be useful learning optim...
We propose a method for learning multi-agent policies to compete against multiple opponents. The met...
Item does not contain fulltextLearning to cope with negative emotions is an important challenge, whi...
Abstract—Policy gradient based actor-critic algorithms are amongst the most popular algorithms in th...
This thesis investigates possible assets of emotions for autonomous adaptive agents working in envir...
Reinforcement learning refers to a machine learning paradigm in which an agent interacts with the en...
Abstract- This paper presents the performance of autonomous agents living in a role-playing game, wh...
Reinforcement learning (RL) is generally considered as the machine learning answer to the optimal co...
Learning to cope with negative emotions is an important challenge, which has received considerable a...
In this article, we propose a new reinforcement learning (RL) method based on an actor-critic archit...
The reinforcement learning (RL) framework enables to construct controllers that try to find find an ...
In this paper, we suggest a novel reinforcement learning architecture, the Natural Actor-Critic. The...
Editor’s Summary: Chapter?? introduced policy gradients as a way to improve on stochastic search of ...
This article provides the first survey of computational models of emotion in reinforcement learning ...
Human behavior is the potential and expressive capacity (mental, physical, and social) of human indi...
For single-agent problems, Reinforcement Learning (RL) algorithms proved to be useful learning optim...
We propose a method for learning multi-agent policies to compete against multiple opponents. The met...
Item does not contain fulltextLearning to cope with negative emotions is an important challenge, whi...
Abstract—Policy gradient based actor-critic algorithms are amongst the most popular algorithms in th...
This thesis investigates possible assets of emotions for autonomous adaptive agents working in envir...
Reinforcement learning refers to a machine learning paradigm in which an agent interacts with the en...
Abstract- This paper presents the performance of autonomous agents living in a role-playing game, wh...
Reinforcement learning (RL) is generally considered as the machine learning answer to the optimal co...
Learning to cope with negative emotions is an important challenge, which has received considerable a...
In this article, we propose a new reinforcement learning (RL) method based on an actor-critic archit...
The reinforcement learning (RL) framework enables to construct controllers that try to find find an ...
In this paper, we suggest a novel reinforcement learning architecture, the Natural Actor-Critic. The...
Editor’s Summary: Chapter?? introduced policy gradients as a way to improve on stochastic search of ...
This article provides the first survey of computational models of emotion in reinforcement learning ...
Human behavior is the potential and expressive capacity (mental, physical, and social) of human indi...
For single-agent problems, Reinforcement Learning (RL) algorithms proved to be useful learning optim...
We propose a method for learning multi-agent policies to compete against multiple opponents. The met...
Item does not contain fulltextLearning to cope with negative emotions is an important challenge, whi...