Learning in Mathematically-Based Domains: Understanding and Generalizing Obstacle Cancellations

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Shavlik, Jude W
deJong, Gerald F

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Technical Report

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University of Wisconsin-Madison Department of Computer Sciences

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Mathematical reasoning provides the basis for problem solving and learning in many complex domains. A model for applying explanation-based learning in mathematically-based domains is presented, and an implemented learning system is described. In explanation-based learning, a specific problem�s solution is generalized into a form that can be later used to solve conceptually similar problems. The presented system�s mathematical reasoning processes are guided by the manner in which variables are cancelled in specific problem solutions. Analyzing the cancellation of obstacles � variables that preclude the direct evaluation of the problem�s unknown � leads to the generalization of the specific solution. Two important general issues in explanation-based learning are also addressed. Namely, generalizing the number of entities in a situation and acquiring efficiently-applicable concepts.

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TR837

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