Title of article
Bounding the cost of learned rules Original Research Article
Author/Authors
Jihie Kim، نويسنده , , Paul S. Rosenbloom، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2000
Pages
38
From page
43
To page
80
Abstract
In this article we approach one key aspect of the utility problem in explanation-based learning (EBL)—the expensive-rule problem—as an avoidable defect in the learning procedure. In particular, we examine the relationship between the cost of solving a problem without learning versus the cost of using a learned rule to provide the same solution, and refer to a learned rule as expensive if its use is more costly than the original problem solving from which it was learned. The key idea we explore is that expensiveness is inadvertently and unnecessarily introduced into learned rules by the learning algorithms themselves. This becomes a particularly powerful idea when combined with an analysis tool which identifies these hidden sources of expensiveness, and modifications of the learning algorithms which eliminate them. The result is learning algorithms for which the cost of learned rules is bounded by the cost of the problem solving that they replace.
Keywords
Speed up learning , problem solving , Utility problem , Rule match
Journal title
Artificial Intelligence
Serial Year
2000
Journal title
Artificial Intelligence
Record number
1206867
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