作者
Manuela Veloso, Jaime Carbonell, Alicia Perez, Daniel Borrajo, Eugene Fink, Jim Blythe
发表日期
1995/1/1
期刊
Journal of Experimental & Theoretical Artificial Intelligence
卷号
7
期号
1
页码范围
81-120
出版商
Taylor & Francis Group
简介
Planning is a complex reasoning task that is well suited for the study of improving performance and knowledge by learning, i.e. by accumulation and interpretation of planning experience. PRODIGY is an architecture that integrates planning with multiple learning mechanisms. Learning occurs at the planner's decision points and integration in PRODIGY is achieved via mutually interpretable knowledge structures. This article describes the PRODIGY planner, briefly reports on several learning modules developed earlier along the project, and presents in more detail two recently explored methods to learn to generate plans of better quality. We introduce the techniques, illustrate them with comprehensive examples, and show preliminary empirical results. The article also includes a retrospective discussion of the characteristics of the overall PRODIGY architecture and discusses their evolution within the goal of the …
引用总数
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M Veloso, J Carbonell, A Perez, D Borrajo, E Fink… - Journal of Experimental & Theoretical Artificial …, 1995