In applying reinforcement learning to agents acting in the real world we are often faced with tasks that are non-Markovian in nature. Much work has been done using state estimation algorithms to try to uncover Markovian models of tasks in order to allow the learning of optimal solutions using reinforcement learning. Unfortunately these algorithms which attempt to simultaneously learn a Markov model of the world and how to act have proved very brittle. Our focus differs. In considering embodied, embedded and situated agents we have a preference for simple learning algorithms which reliably learn satisficing policies. The learning algorithms we consider do not try to uncover the underlying Markovian states, instead they aim to learn successfu...
Abstract The problem of reinforcement learning in a non-Markov environment isexplored using a dynami...
The problem of selecting the right state-representation in a reinforcement learning problem is consi...
Unlike traditional reinforcement learning (RL), market-based RL is in principle applicable to worlds...
Institute of Perception, Action and BehaviourIn applying reinforcement learning to agents acting in ...
People are efficient when they make decisions under uncertainty, even when their decisions have long...
In this paper, we describe how techniques from reinforcement learning might be used to approach the ...
Reinforcement learning (RL) algorithms provide a sound theoretical basis for building learning contr...
AbstractTechniques based on reinforcement learning (RL) have been used to build systems that learn t...
Typical “supervised ” and “unsupervised ” forms of machine learning are very specialized compared to...
The field of Reinforcement Learning is concerned with teaching agents to take optimal decisions t...
A very general framework for modeling uncertainty in learning environments is given by Partially Obs...
Sequentially making-decision abounds in real-world problems ranging from robots needing to interact ...
AbstractActing in domains where an agent must plan several steps ahead to achieve a goal can be a ch...
Increasing attention has been paid to reinforcement learning algorithms in recent years, partly due ...
Reinforcement learning defines a prominent family of unsupervised machine learning methods in autono...
Abstract The problem of reinforcement learning in a non-Markov environment isexplored using a dynami...
The problem of selecting the right state-representation in a reinforcement learning problem is consi...
Unlike traditional reinforcement learning (RL), market-based RL is in principle applicable to worlds...
Institute of Perception, Action and BehaviourIn applying reinforcement learning to agents acting in ...
People are efficient when they make decisions under uncertainty, even when their decisions have long...
In this paper, we describe how techniques from reinforcement learning might be used to approach the ...
Reinforcement learning (RL) algorithms provide a sound theoretical basis for building learning contr...
AbstractTechniques based on reinforcement learning (RL) have been used to build systems that learn t...
Typical “supervised ” and “unsupervised ” forms of machine learning are very specialized compared to...
The field of Reinforcement Learning is concerned with teaching agents to take optimal decisions t...
A very general framework for modeling uncertainty in learning environments is given by Partially Obs...
Sequentially making-decision abounds in real-world problems ranging from robots needing to interact ...
AbstractActing in domains where an agent must plan several steps ahead to achieve a goal can be a ch...
Increasing attention has been paid to reinforcement learning algorithms in recent years, partly due ...
Reinforcement learning defines a prominent family of unsupervised machine learning methods in autono...
Abstract The problem of reinforcement learning in a non-Markov environment isexplored using a dynami...
The problem of selecting the right state-representation in a reinforcement learning problem is consi...
Unlike traditional reinforcement learning (RL), market-based RL is in principle applicable to worlds...