Learning by Analogy: Formulating and Generalizing Plans from Past Experience
ثبت نشده
چکیده
Analogical reasoning is a powerful mechanism for exploiting past experience in planning and problem solving. This paper outlines a theory of analogical problem solving based on an extension to means-ends analysis. An analogical transformation process is developed to extract knowledge from past successful problem solving situations that bear strong similarity to the current problem. Then, the investigation focuses on exploiting and extending the analogical reasoning model to generate useful exemplary solutions to related problems from which more general plans can be induced and refined. Starting with a general analogical inference engine, problem solving experience is, in essence, compiled incrementally into effective procedures that solve various classes of problems in an increasingly reliable and direct manner.
منابع مشابه
Learning by analogy : formulating and generalizing plans from past experience
Analogical reasoning is a powerful mechanism for exploiting past experience in planning and problem solving. This paper outlines a theory of analogical problem solving based on an extension to means-ends analysis. An analogical transformation process is developed to extract knowledge from past successful problem solving situations that bear strong similarity to the current problem. Then, the in...
متن کاملCase-Based Planning: A Framework for Planning from Experience
This paper presents a view of planning as a task supported by a dynamic memory. This view attempts to integrate models of memory, learning and planning into a single system that learns about planning by creating new plans and analyzing how they interact with the world. We call this view of planning Case-Based Planning. A case-based planner makes use of its own past experience in developing new ...
متن کاملRationale-Supported Mixed-Initiative Case-Based Planning
Mixed-initiative planning envisions a framework in which automated and human planners interact to jointly construct plans that satisfy specific objectives. In this paper, we report on our work engineering a robust mixed-initiative planning system. Human planners rely strongly on past planning experience to generate new plans. ForMAT is a case-based system that supports human planning through th...
متن کاملCase - Based Planning : A Framework for Planning from Experience KRISTIAN
This article presents a view of planning as o task supported by o dynamic memory. This view attempts to ingegrote models of memory, learning, and planning into a single system that learns about planning by creating new plans and analyzing how they interact with the world. We call this view of planning case-based planning. A case-based planner makes use of its own past experience in developing n...
متن کاملExperiential Learning in Analogical Problem Solving
A computational model of skill acquisition is analyzed based on extensions to an analogical problem solving method and previous Al work on concept acquisition. The present investigation focuses on exploiting and extending the analogical reasoning model to generate useful exemplary solutions to related problems from which more general plans can be induced and refined. Starting with a general ana...
متن کامل