Feature selection for clustering - a filter solution

M. Dash, Ki-Hoon Choi, P. Scheuermann, Huan Liu
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引用次数: 437

Abstract

Processing applications with a large number of dimensions has been a challenge for the KDD community. Feature selection, an effective dimensionality reduction technique, is an essential pre-processing method to remove noisy features. In the literature only a few methods have been proposed for feature selection for clustering, and almost all these methods are 'wrapper' techniques that require a clustering algorithm to evaluate candidate feature subsets. The wrapper approach is largely unsuitable in real-world applications due to its heavy reliance on clustering algorithms that require parameters such as the number of clusters, and the lack of suitable clustering criteria to evaluate clustering in different subspaces. In this paper we propose a 'filter' method that is independent of any clustering algorithm. The proposed method is based on the observation that data with clusters has a very different point-to-point distance histogram to that of data without clusters. By exploiting this we propose an entropy measure that is low if data has distinct clusters and high if it does not. The entropy measure is suitable for selecting the most important subset of features because it is invariant with the number of dimensions, and is affected only by the quality of clustering. Extensive performance evaluation over synthetic, benchmark, and real datasets shows its effectiveness.
聚类的特征选择——一个过滤器解决方案
处理具有大量维度的应用程序一直是KDD社区面临的挑战。特征选择是一种有效的降维技术,是去除噪声特征必不可少的预处理方法。在文献中,只有少数方法被提出用于聚类的特征选择,并且几乎所有这些方法都是“包装”技术,需要聚类算法来评估候选特征子集。包装器方法在很大程度上不适合实际应用程序,因为它严重依赖需要集群数量等参数的聚类算法,并且缺乏合适的聚类标准来评估不同子空间中的聚类。本文提出了一种独立于任何聚类算法的“过滤”方法。提出的方法是基于观察到有簇的数据与没有簇的数据具有非常不同的点对点距离直方图。通过利用这一点,我们提出了一个熵度量,如果数据有不同的集群,则为低,如果没有则为高。熵度量适合于选择最重要的特征子集,因为它与维数不变,并且只受聚类质量的影响。对合成、基准和真实数据集的广泛性能评估表明了其有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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