谱聚类的约束亲和矩阵:一个基本的半监督扩展

C. Castro-Hoyos, D. Peluffo, C. Castellanos
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引用次数: 1

摘要

谱聚类在数字信号处理和模式识别中是一种很好的替代方法;然而,关于数据之间的关联函数的决定仍然是一个问题。在这项工作中,提出了一种传统的多类光谱聚类方法的扩展版本,该方法将分类数据的先验信息引入到亲和矩阵中,旨在保持传统方式可能丢失的背景关系,即使用缩放指数亲和矩阵,根据一些先验知识对数据进行加权,并通过k-way规范化切割聚类。结果在一个半监督方法的传统光谱聚类。对玩具数据分类和图像分割进行测试,并使用和非监督性能测量(组一致性,fisher标准和轮廓)进行评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Constrained affinity matrix for spectral clustering: A basic semi-supervised extension
Spectral clustering has represented a good alternative in digital signal processing and pattern recognition; however a decision concerning the affinity functions among data is still an issue. In this work it is presented an extended version of a traditional multiclass spectral clustering method which employs prior information about the classified data into the affinity matrixes aiming to maintain the background relation that might be lost in the traditional manner, that is using a scaled exponential affinity matrix constrained by weighting the data according to some prior knowledge and via k-way normalized cuts clustering, results in a semi-supervised methodology of traditional spectral clustering. Test was performed over toy data classification and image segmentation and evaluated with and unsupervised performance measures (group coherence, fisher criteria and silhouette).
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