McCluskey, T.L. (1990) Empirical results from applying machine learning techniques to planning. In: IEE Colloquium on Machine Learning. IEEE Press, 6/1-6/3.Metadata only available from this repository.
Outlines an experimental machine learning implementation, called `FM', that applies both explanation based learning and similarity-based learning to AI planners. The system shell of FM contains techniques for learning application-dependent heuristics, through the experience of using a performance component (a planner) in that application. An application domain is supplied by specifying a set of action schemas, and environmental facts and rules. FM is then fed an initial state, and a sequence of tasks within this application, roughly in ascending order of complexity, which it is expected to solve. After each task has been solved, the system analyses the planning trace, allowing it to learn from experience.
|Item Type:||Book Chapter|
|Additional Information:||Paper presented at IEEE Colloquium on Machine Learning, London, 28th June 1990|
|Subjects:||T Technology > T Technology (General)|
|Schools:||School of Computing and Engineering|
School of Computing and Engineering > Pedagogical Research Group
School of Computing and Engineering > Informatics Research Group
School of Computing and Engineering > Informatics Research Group > Knowledge Engineering and Intelligent Interfaces
|Depositing User:||Cherry Edmunds|
|Date Deposited:||16 Jul 2010 14:43|
|Last Modified:||16 Dec 2010 13:54|
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