基于模糊逻辑的有效监督聚类

T. Patil, G. Pole
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引用次数: 0

摘要

半管理聚类是将信息对象聚类(组)的重要任务之一,聚类内的项目相似性高,聚类间的项目可比性低。数据集偶尔可能是混合性质的,即它可能包含数字和非缓和类型的信息。这是两种不同的数据特征。由于他们的素质不同,同时考虑到收集这些信息的最终目的,采用分而结合的剧团分组策略来处理这一问题是理想的。本文将不同的数据集分为数值数据集和分类数据集,并使用传统和模糊逻辑算法进行聚类。输出与集成聚类相结合,并通过f测度和熵测度进行评价。结果表明,采用模糊聚类算法可以得到更好的结果。
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An efficient supervised clustering using fuzzy logic
In semi administered bunching is one of the vital errands and goes for gathering the information objects into classes (groups) to such an extent that the similitude of items inside bunches is high and the comparability of articles between bunches is Less. The dataset once in a while might be in blended nature that is it might comprise of both numeric and unmitigated sort of information. So two types of different data with characteristics. Due to the different in their qualities keeping in mind the end goal to gather these sorts of information it is ideal to utilize the troupe grouping strategy which utilizes divide and combine way to deal with take care of this issue. In this paper the different dataset is divide into numeric and categorical data set and clustered using both traditional and fuzzy logic algorithms. The output is combined with ensemble clustering and evaluated by both f-measure and entropy measure. It is found that using fuzzy clustering algorithms gives better results.
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