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Specialization models for a general fuzzy set covering framework

机译:通用模糊集覆盖框架的专业化模型

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摘要

Set covering is a well-known rule induction paradigm for learning crisp classification rules. In this paper we present a generalization of the crisp set covering approach to fuzzy sets. We propose a general fuzzy set covering framework for finding good rules by a general-to-specific search as a further generalization of the set covering approach to learning. The paper illustrates four different specialization model algorithms as instantiations within this framework, and concludes with an empirical study to substantiate the usefulness of this new paradigm for the induction of fuzzy classification rules.
机译:集合覆盖是用于学习清晰分类规则的众所周知的规则归纳范例。在本文中,我们提出了对模糊集的清晰集覆盖方法的概括。我们提出了一个通用的模糊集覆盖框架,用于通过一般到特定的搜索来找到良好的规则,作为对学习的覆盖集方法的进一步概括。本文在该框架内举例说明了四种不同的专业化模型算法,并以实证研究得出结论,以证实这种新范式对模糊分类规则的归纳的有效性。

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