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Granular-Rule Extraction to Simplify Data

机译:颗粒规则提取以简化数据

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摘要

Granulation simplifies the data to better understand its complexity. It comforts this understanding by extracting the structure of data, essentially in big data or cloud computing scales. It can extract a simple granular-rules set from a complex data set. Granulation is associated with theory of fuzzy information granulation, which can be supported by fuzzy C-mean clustering. However, intersections of fuzzy clusters create redundant granular-rules. This paper proposes a granular-rules extraction method to simplify a data set into a granular-rule set with unique granular-rules. It performs based on two stages to construct and prune the granular-rules. We use four data sets to reveal the results, i.e., wine, servo, iris, and concrete compressive strength. The results reveal the ability of proposed method to simplify data sets by 58% to 91%.
机译:粒度简化了数据,以更好地理解其复杂性。它通过提取数据结构(本质上是大数据或云计算规模)来安慰这种理解。它可以从复杂的数据集中提取出简单的粒度规则集。粒化与模糊信息粒化的理论相关联,可以通过模糊C均值聚类来支持。但是,模糊聚类的交集会创建冗余的粒度规则。本文提出了一种粒度规则提取方法,以将数据集简化为具有唯一粒度规则的粒度规则集。它基于两个阶段来执行以构造和修剪粒度规则。我们使用四个数据集来揭示结果,即酒,伺服,虹膜和混凝土的抗压强度。结果表明,该方法能够将数据集简化58%至91%。

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