混合属性数据集的一种新的监督聚类算法

Shijin Li, Yuelong Zhu, Jing Liu, Xiaohu Zhang
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引用次数: 7

摘要

由于混合属性数据集的复杂性,适合这类数据集的传统聚类算法很少,聚类效果不佳。k -原型聚类是这类数据挖掘中最常用的方法之一。本文借鉴多分类器梳理技术的思想,以k- prototype为基础聚类算法,设计了一种多级聚类集成算法,采用自适应选择属性进行重新聚类。在UCI机器学习数据库的成人数据集上进行了对比实验,结果表明该方法具有很强的竞争力,适合于数据编辑。
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A New Supervised Clustering Algorithm for Data Set with Mixed Attributes
Because of the complexity of data set with mixed attributes, the traditional clustering algorithms appropriate for this kind of dataset are few and the effect of clustering is not good. K-prototype clustering is one of the most commonly used methods in data mining for this kind of data. We borrow the ideas from the multiple classifiers combing technology, use k- prototype as the basis clustering algorithm to design a multi-level clustering ensemble algorithm in this paper, which adoptively selects attributes for re-clustering. Comparison experiments on Adult data set from UCI machine learning data repository show very competitive results and the proposed method is suitable for data editing.
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