Advantages of decision lists and implicit negatives in Inductive Logic Programming

被引:0
|
作者
Mary Elaine Califf
Raymond J. Mooney
机构
[1] University of Texas at Austin,Department of Computer Sciences
来源
New Generation Computing | 1998年 / 16卷
关键词
Inductive Logic Programming; Machine Learning; Decision Lists;
D O I
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中图分类号
学科分类号
摘要
This paper demonstrates the capabilities offoidl, an inductive logic programming (ILP) system whose distinguishing characteristics are the ability to produce first-order decision lists, the use of an output completeness assumption as a substitute for negative examples, and the use originally motivated by the problem of learning to generate the past tense of English verbs; however, this paper demonstrates its superior performance on two different sets of benchmark ILP problems. Tests on the finite element mesh design problem show thatfoidl’s decision lists enable it to produce generally more accurate results than a range of methods previously applied to this problem. Tests with a selection of list-processing problems from Bratko’s introductory Prolog text demonstrate that the combination of implicit negatives and intensionality allowfoidl to learn correct programs from far fewer examples thanfoil.
引用
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页码:263 / 281
页数:18
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