Large state and action spaces are very challenging to reinforcement learning. However, in many domains there is a set of algorithms available, which estimate the best action given a state. Hence, agents can either directly learn a performance-maximizing mapping from states to actions, or from states to algorithms. We investigate several aspects of this dilemma, showing sufficient conditions for learning over algorithms to outperform over actions for a finite number of training iterations. We present synthetic experiments to further study such systems. Finally, we propose a function approximation approach, demonstrating the effectiveness of learning over algorithms in real-time strategy games
A key aspect of artificial intelligence is the ability to learn from experience. If examples of corr...
In complex tasks, such as those with large combinatorial action spaces, random exploration may be to...
Sequential decision making from experience, or reinforcement learning (RL), is a paradigm that is we...
We consider the problem of effective and automated decision-making in modern real-time strategy (RTS...
Reinforcement learning (RL) focuses on an essential aspect of intelligent behavior – how an agent ca...
When applying reinforcement learning in domains with very large or continuous state spaces, the expe...
Summarization: The majority of learning algorithms available today focus on approximating the state ...
Trial and error learning methods are often ineffective when applied to robots. This is due to certa...
The reinforcement learning (RL) framework formalizes the notion of learning with interactions. Many ...
Reinforcement Learning (RL) is a machine learning discipline in which an agent learns by interacting...
Machine learning and artificial intelligence has been a hot topic the last few years, thanks to impr...
Different from classic Supervised Learning, Reinforcement Learning (RL), is fundamentally interactiv...
Being able to accomplish tasks with multiple learners through learning has long been a goal of the m...
Reinforcement learning provides a means for autonomous agents to improve their action selection stra...
The dynamics of the game world present both challenges and opportunities for AI to make a useful dif...
A key aspect of artificial intelligence is the ability to learn from experience. If examples of corr...
In complex tasks, such as those with large combinatorial action spaces, random exploration may be to...
Sequential decision making from experience, or reinforcement learning (RL), is a paradigm that is we...
We consider the problem of effective and automated decision-making in modern real-time strategy (RTS...
Reinforcement learning (RL) focuses on an essential aspect of intelligent behavior – how an agent ca...
When applying reinforcement learning in domains with very large or continuous state spaces, the expe...
Summarization: The majority of learning algorithms available today focus on approximating the state ...
Trial and error learning methods are often ineffective when applied to robots. This is due to certa...
The reinforcement learning (RL) framework formalizes the notion of learning with interactions. Many ...
Reinforcement Learning (RL) is a machine learning discipline in which an agent learns by interacting...
Machine learning and artificial intelligence has been a hot topic the last few years, thanks to impr...
Different from classic Supervised Learning, Reinforcement Learning (RL), is fundamentally interactiv...
Being able to accomplish tasks with multiple learners through learning has long been a goal of the m...
Reinforcement learning provides a means for autonomous agents to improve their action selection stra...
The dynamics of the game world present both challenges and opportunities for AI to make a useful dif...
A key aspect of artificial intelligence is the ability to learn from experience. If examples of corr...
In complex tasks, such as those with large combinatorial action spaces, random exploration may be to...
Sequential decision making from experience, or reinforcement learning (RL), is a paradigm that is we...