Abstract. We present a motivational system for an agent undergoing reinforce-ment learning (RL), which enables it to balance multiple drives, each of which is satiated by different types of stimuli. Inspired by drive reduction theory, it uses Minor Component Analysis (MCA) to model the agent’s internal drive state, and modulates incoming stimuli on the basis of how strongly the stimulus satiates the currently active drive. The agent’s dynamic policy continually changes through least-squares temporal difference updates. It automatically seeks stimuli that first satiate the most active internal drives, then the next most active drives, etc. We prove that our algorithm is stable under certain conditions. Experimental results illustrate its beh...
In the ¯eld of machine learning, reinforcement learning constitutes the idea of enabling machines to...
An actor-critic reinforcement-learning algorithm using a radial-basis-function network for approxima...
The concepts of attention and intrinsic motivations are of great interest within adaptive robotic sy...
Reinforcement learning refers to a machine learning paradigm in which an agent interacts with the en...
Along this paper, we propose to model the learning process of the controller policy of a humanoid jo...
Homeostasis is a prevalent process by which living beings maintain their internal milieu around opti...
This thesis attempts to model homeostatic regulation, a behavioural phenomenon ubiquitousin animals,...
How should a reinforcement learning agent act if its sole purpose is to efficiently learn an optimal...
Behavioral control has been an effective method for controlling low-level motion for autonomous agen...
Reinforcement Learning (RL) algorithms allow artificial agents to improve their action selection pol...
Autonomous driving is an active field of research in academia and industry. On the way to the ambiti...
International audienceWithin this paper, a new kind of learning agents - so-called Constraint based ...
How should a reinforcement learning agent act if its sole purpose is to efficiently learn an optimal...
Learning to control is a complicated process, yet humans seamlessly control various complex movement...
Abstract—Children are capable of acquiring a large repertoire of motor skills and of efficiently ada...
In the ¯eld of machine learning, reinforcement learning constitutes the idea of enabling machines to...
An actor-critic reinforcement-learning algorithm using a radial-basis-function network for approxima...
The concepts of attention and intrinsic motivations are of great interest within adaptive robotic sy...
Reinforcement learning refers to a machine learning paradigm in which an agent interacts with the en...
Along this paper, we propose to model the learning process of the controller policy of a humanoid jo...
Homeostasis is a prevalent process by which living beings maintain their internal milieu around opti...
This thesis attempts to model homeostatic regulation, a behavioural phenomenon ubiquitousin animals,...
How should a reinforcement learning agent act if its sole purpose is to efficiently learn an optimal...
Behavioral control has been an effective method for controlling low-level motion for autonomous agen...
Reinforcement Learning (RL) algorithms allow artificial agents to improve their action selection pol...
Autonomous driving is an active field of research in academia and industry. On the way to the ambiti...
International audienceWithin this paper, a new kind of learning agents - so-called Constraint based ...
How should a reinforcement learning agent act if its sole purpose is to efficiently learn an optimal...
Learning to control is a complicated process, yet humans seamlessly control various complex movement...
Abstract—Children are capable of acquiring a large repertoire of motor skills and of efficiently ada...
In the ¯eld of machine learning, reinforcement learning constitutes the idea of enabling machines to...
An actor-critic reinforcement-learning algorithm using a radial-basis-function network for approxima...
The concepts of attention and intrinsic motivations are of great interest within adaptive robotic sy...