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Building manageable rough set classifiers.

机译:建立可管理的粗糙集分类器。

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摘要

An interesting aspect of techniques for data mining and knowledge discovery is their potential for generating hypotheses by discovering underlying relationships buried in the data. However, the set of possible hypotheses is often very large and the extracted models may become prohibitively complex. It is therefore typically desirable to only consider the "strongest" hypotheses, so that smaller models can be obtained that also retain good classificatory capabilities. This paper outlines how rule-based classifiers based on rough set theory and Boolean reasoning that are both small and perform well can be developed. Applied to a real-world medical dataset, the final models are shown to exhibit good performance using only a subset of the available information. Furthermore, the number of resulting rules is low and enables practical a posteriori inspection and interpretation of the models.
机译:数据挖掘和知识发现技术的一个有趣方面是它们潜在的潜力,可以通过发现隐藏在数据中的潜在关系来生成假设。但是,可能的假设集通常非常大,提取的模型可能变得非常复杂。因此,通常希望仅考虑“最强”的假设,以便可以获得较小的模型,该模型也保留了良好的分类能力。本文概述了如何开发既小又性能好的基于粗糙集理论和布尔推理的基于规则的分类器。将最终模型应用于现实世界的医疗数据集,仅使用部分可用信息即可显示出良好的性能。此外,生成的规则数量很少,并且可以进行模型的实际后验检查和解释。

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