In many practical reinforcement learning problems, the state space is too large to permit an exact representation of the value function, much less the time required to compute it. In such cases, a common solution approach is to compute an approximation of the value function in terms of state features. However, relatively little attention has been paid to the cost of computing these state features. For example, search-based features may be useful for value prediction, but their computational cost must be traded off with their impact on value accuracy. To this end, we introduce a new cost-sensitive sparse linear regression paradigm for value function approximation in reinforcement learning where the learner is able to select only those co...
In reinforcement learning (RL), an important sub-problem is learning the value function, which is ch...
Reinforcement learning is a powerful approach for learning control policies that solve sequential de...
In recent years, reinforcement learning (RL) has become an increasingly popular framework for formal...
A common solution approach to reinforcement learning problems with large state spaces (where value f...
We introduce cost-sensitive regression as a way to introduce information obtained by planning as bac...
The field of reinforcement learning concerns the question of automated action se-lection given past ...
The application of reinforcement learning to problems with continuous domains requires representing ...
Reinforcement learning is a general computational framework for learning sequential decision strate...
A key element in the solution of reinforcement learning problems is the value function. The purpose ...
In value-based reinforcement learning (RL), unlike in supervised learning, the agent faces not a sin...
A key element in the solution of reinforcement learning problems is the value function. The purpose ...
Reinforcement learning (RL) is a computational framework for learning sequential decision strategies...
To represent and learn a value function, one needs a set of features that facilitates the process by...
A thesis presented for the degree of Doctor of Philosophy, School of Computer Science and Applied Ma...
Reinforcement learning (RL) is a machine learning paradigm where an agent learns to interact with an...
In reinforcement learning (RL), an important sub-problem is learning the value function, which is ch...
Reinforcement learning is a powerful approach for learning control policies that solve sequential de...
In recent years, reinforcement learning (RL) has become an increasingly popular framework for formal...
A common solution approach to reinforcement learning problems with large state spaces (where value f...
We introduce cost-sensitive regression as a way to introduce information obtained by planning as bac...
The field of reinforcement learning concerns the question of automated action se-lection given past ...
The application of reinforcement learning to problems with continuous domains requires representing ...
Reinforcement learning is a general computational framework for learning sequential decision strate...
A key element in the solution of reinforcement learning problems is the value function. The purpose ...
In value-based reinforcement learning (RL), unlike in supervised learning, the agent faces not a sin...
A key element in the solution of reinforcement learning problems is the value function. The purpose ...
Reinforcement learning (RL) is a computational framework for learning sequential decision strategies...
To represent and learn a value function, one needs a set of features that facilitates the process by...
A thesis presented for the degree of Doctor of Philosophy, School of Computer Science and Applied Ma...
Reinforcement learning (RL) is a machine learning paradigm where an agent learns to interact with an...
In reinforcement learning (RL), an important sub-problem is learning the value function, which is ch...
Reinforcement learning is a powerful approach for learning control policies that solve sequential de...
In recent years, reinforcement learning (RL) has become an increasingly popular framework for formal...