扩展概率论修正中偏差的作用

Ronen Feldman, Moshe Koppel, Alberto Maria Segre
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引用次数: 3

摘要

摘要理论修正是对有缺陷或不完整的知识库进行修正的过程,这种修正是在揭示问题的实例的基础上进行的。PTR算法是一种利用显式偏差指导缺陷知识库元素检测的理论修正算法。在本文中,我们检验了PTR的偏差方案在识别有缺陷的知识库元素方面的有效性,并提出了PTR算法的扩展,该扩展支持使用额外的偏差来指导一旦定位有缺陷元素的纠正过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extending the role of bias in probabilistic theory revision
Abstract Theory revision is the process of making corrections to a flawed or incomplete knowledge base on the basis of examples that expose those problems. The PTR algorithm is a theory revision algorithm that makes use of explicit bias to guide the detection of flawed knowledge base elements. In this paper, we examine the effectiveness of PTR's bias scheme in identifying flawed knowledge base elements, and we propose extensions to the PTR algorithm that support the use of additional bias to guide the process of correcting a flawed element once it has been located.
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