AbstractWe investigate the problem of learning the transition dynamics of deterministic, discrete-state environments. We assume that an agent exploring such an environment is able to perform actions (from a finite set of actions) in the environment and to sense the state changes. The question investigated is whether the agent can learn the dynamics without visiting all states. Such a goal is unrealistic in general, hence we assume that the environment has structural properties an agent might exploit. In particular, we assume that the set of all action sequences forms an algebraic group.We introduce a learning model in different variants and study under which circumstances the corresponding “group-structured environments” can be learned effi...
How can an agent bootstrap up from a pixel-level representation to autonomously learn high-level sta...
Autonomous automata should not only be able to learn how to behave efficiently in any predefined int...
A learning strategy in Learning Classifier Systems (LCSs) defines how classifiers cover a state-acti...
AbstractWe investigate the problem of learning the transition dynamics of deterministic, discrete-st...
We investigate the problem of learning the transition dynamics of deterministic, discrete-state envi...
When reinforcement learning is applied with sparse rewards, agents must spend a prohibitively long t...
Consider the finite state graph that results from a simple, discrete, dynamical system in which an a...
Perceived signals in real-world scenarios are usually high-dimensional and noisy, and finding and us...
AbstractFrom the perspective of an agent, the input/output behavior of the environment in which it i...
International audienceWe present a novel approach to state space discretization for constructivist a...
In applying reinforcement learning to agents acting in the real world we are often faced with tasks ...
It is crucial for agents, both biological and artificial, to acquire world models that veridically r...
textHow can an agent bootstrap up from a pixel-level representation to autonomously learn high-level...
The bootstrapping problem consists in designing agents that learn a model of themselves and the worl...
Institute of Perception, Action and BehaviourIn applying reinforcement learning to agents acting in ...
How can an agent bootstrap up from a pixel-level representation to autonomously learn high-level sta...
Autonomous automata should not only be able to learn how to behave efficiently in any predefined int...
A learning strategy in Learning Classifier Systems (LCSs) defines how classifiers cover a state-acti...
AbstractWe investigate the problem of learning the transition dynamics of deterministic, discrete-st...
We investigate the problem of learning the transition dynamics of deterministic, discrete-state envi...
When reinforcement learning is applied with sparse rewards, agents must spend a prohibitively long t...
Consider the finite state graph that results from a simple, discrete, dynamical system in which an a...
Perceived signals in real-world scenarios are usually high-dimensional and noisy, and finding and us...
AbstractFrom the perspective of an agent, the input/output behavior of the environment in which it i...
International audienceWe present a novel approach to state space discretization for constructivist a...
In applying reinforcement learning to agents acting in the real world we are often faced with tasks ...
It is crucial for agents, both biological and artificial, to acquire world models that veridically r...
textHow can an agent bootstrap up from a pixel-level representation to autonomously learn high-level...
The bootstrapping problem consists in designing agents that learn a model of themselves and the worl...
Institute of Perception, Action and BehaviourIn applying reinforcement learning to agents acting in ...
How can an agent bootstrap up from a pixel-level representation to autonomously learn high-level sta...
Autonomous automata should not only be able to learn how to behave efficiently in any predefined int...
A learning strategy in Learning Classifier Systems (LCSs) defines how classifiers cover a state-acti...