The significance of machine learning for the future use of computers is very great. Autonomous computer systems of the future will need far more knowledge than humans can explicitly transfer; this requires that computers learn independently. An important research goal for machine learning is to identify techniques that will allow intelligent knowledge-based systems to learn automatically the large amounts of domain-specific knowledge that are necessary for achieving expert-level problem-solving performance. This thesis describes apprenticeship learning techniques for automation of the transfer of expertise. Apprenticeship learning is a form of learning by watching, in which learning occurs as a byproduct of building explanations of human pr...
The importance of “culture of learning” has been pointed out by many authors and is an emerging feat...
Disciple is an apprenticeship, multistrategy learning approach for developing intelligent agents whe...
We provide new theoretical results for apprenticeship learning, a variant of rein-forcement learning...
This paper describes an investigation into creating agents that can learn how to perform a task by o...
As the field of robotic and humanoid systems expand, more research is being done on how to best cont...
This paper presents a learning-based approach to the automation of knowledge acquisition for expert ...
This paper describes an investigation into creating agents that can learn how to perform a task by o...
This paper presents Disciple-COA, the most recent learning agent shell developed in the Disciple fra...
Arguing that an explicit representation of the problem-solving method of an expert system shell as a...
In contrast to current intelligent systems, which must be laboriously programmed for each task they ...
This paper develops a generalized appren-ticeship learning protocol for reinforcement-learning agent...
Abstract: Knowledge engineers qualified to build expert systems are currently in short supply. We pr...
Artificial Intelligence (AI) has come out from science fiction movies and it is now enabling machine...
Apprentice learning and reinforcement learning are methods that have each been developed in order to...
This paper describes the Minerva and Gerona agent architectures, which have been designed to facili-...
The importance of “culture of learning” has been pointed out by many authors and is an emerging feat...
Disciple is an apprenticeship, multistrategy learning approach for developing intelligent agents whe...
We provide new theoretical results for apprenticeship learning, a variant of rein-forcement learning...
This paper describes an investigation into creating agents that can learn how to perform a task by o...
As the field of robotic and humanoid systems expand, more research is being done on how to best cont...
This paper presents a learning-based approach to the automation of knowledge acquisition for expert ...
This paper describes an investigation into creating agents that can learn how to perform a task by o...
This paper presents Disciple-COA, the most recent learning agent shell developed in the Disciple fra...
Arguing that an explicit representation of the problem-solving method of an expert system shell as a...
In contrast to current intelligent systems, which must be laboriously programmed for each task they ...
This paper develops a generalized appren-ticeship learning protocol for reinforcement-learning agent...
Abstract: Knowledge engineers qualified to build expert systems are currently in short supply. We pr...
Artificial Intelligence (AI) has come out from science fiction movies and it is now enabling machine...
Apprentice learning and reinforcement learning are methods that have each been developed in order to...
This paper describes the Minerva and Gerona agent architectures, which have been designed to facili-...
The importance of “culture of learning” has been pointed out by many authors and is an emerging feat...
Disciple is an apprenticeship, multistrategy learning approach for developing intelligent agents whe...
We provide new theoretical results for apprenticeship learning, a variant of rein-forcement learning...