Open AccessProceedings Article
Learning quality-enhancing control knowledge
M. Alicia Pérez
- 01 Aug 1994
- pp 1484-1484
TL;DR: The goal is to have a system that improves over experience the quality of the plans it generates by acquiring in a fully automated fashion control knowledge to guide the search.
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Abstract: Generating production-quality plans is an essential element in transforming planners from research tools into real-world applications. However most research on planning so far has concentrated on methods for constructing sound and complete planners that find a satisficing solution, and on how to find such solution in an efficient way. Similarly most of the work to date on automated control-knowledge acquisition has been aimed at improving the eficiency of planning; this work has been termed “speed-up learning”. Our work focuses on how control knowledge may guide a planner towards better plans, and how such control knowledge can be learned. “Better” may be defined in a domain-dependent way and vary over time. (Perez & Carbonell 1993) contains a detailed taxonomy of plan quality metrics. We have concentrated on metrics related to plan execution cost, expressed as an evaluation function additive on the cost of the individual operators. These functions are linear and do not capture the existence of tradeoffs between different quality factors. Our goal is to have a system that improves over experience the quality of the plans it generates by acquiring in a fully automated fashion control knowledge to guide the search. Figure 1 shows the architecture of the current system, fully implemented on top of the PRODIGY nonlinear planner (Carbonell et al. 1992).
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References
PRODIGY 4.0: The Manual and Tutorial
Jim Blythe,Jaime G. Carbonell,Oren Etzioni,Yolanda Gil,Robert Joseph,Dan Kahn,Craig A. Knoblock,Steven Minton,Alicia Perez,Scott Reilly,Manuela Veloso,Xuemei Wang +11 more
- 01 Jun 1992
TL;DR: This tutorial style is meant to provide the reader with the ability to run PRODIGY and make use of all the basic features, as well as gradually learning the more esoteric aspects of PRODigY4.0.
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•Proceedings Article
Control knowledge to improve plan quality
M. Alicia Pérez,Jaime G. Carbonell +1 more
- 13 Jun 1994
TL;DR: An implemented mechanism for learning quality-enhancing search control knowledge and its automated acquisition from problem solving experience is introduced and some of the preliminary results in a process planning domain are introduced.
Automated Acquisition of Control Knowledge to Improve the Quality of Plans
M. A Perez,Jaimes G. Carbonell +1 more
- 01 Apr 1993
TL;DR: In this article, a taxonomy of plan quality metrics and a prototype that partially automates the task of acquiring quality-enhancing control knowledge for the Prodigy nonlinear planner are presented.
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