Kernel entropy principal component analysis using Parzen estimator

Loubna El Fattahi, E. Sbai
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引用次数: 3

Abstract

Clustering is the task of dividing data objects into meaningful groups named as clusters such that objects in the same cluster are similar and objects form different clusters are dissimilar. It is an important unsupervised technique more and more frequently adopted by several research communities. In this paper we introduce an enhanced kernel-based method for data transformation. The method is founded on the maximum entropy principle through the kernel entropy principal component analysis. Incorporating the kernel method, the input space can be implicitly mapped into a high-dimensional feature space. Therefore the nonlinear patterns turn linear. The key measure is Shannon's entropy estimated via the inertia provided by the contribution of each object in data. As a result, the proposed method uses kernel mapping function to map data before performing entropy principal component analysis. Then data could be reduced into lower dimension of valuable extracted features. This has a major effect on the fast search of center clusters based on the local densities. The method performs very well our clustering algorithm.
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基于Parzen估计的核熵主成分分析
聚类的任务是将数据对象划分为有意义的组,称为集群,使同一集群中的对象相似,不同集群中的对象不相似。它是一种重要的无监督技术,越来越多地被一些研究团体所采用。本文介绍了一种增强的基于核的数据转换方法。该方法通过核熵主成分分析,建立在最大熵原理的基础上。结合核方法,可以将输入空间隐式映射到高维特征空间中。因此,非线性模式变成线性。关键的度量是香农熵,它是通过数据中每个对象的贡献所提供的惯性来估计的。因此,该方法在进行熵主成分分析之前,先使用核映射函数对数据进行映射。然后将数据降维为提取出的有价值的特征。这对基于局部密度的中心簇的快速搜索有重要影响。该方法可以很好地执行我们的聚类算法。
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