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A spectral clustering method with semantic interpretation based on axiomatic fuzzy set theory

机译:基于公理模糊集理论的语义解释光谱聚类方法

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摘要

Owing to good performance in clustering non-convex datasets, spectral clustering has attracted much attention and become one of the most popular clustering algorithms in the last decades. However, the existing spectral clustering methods are sensitive to parameter settings in building the affinity matrix, which seriously jeopardizes the algorithm's immunity to noise data. Moreover, in many application domains, including credit rating and medical diagnosis, it is very important that the learned model is capable of understandability and interpretability. To make spectral clustering competitive in both classification rate and comprehensibility, we propose a spectral clustering method with semantic interpretation based on axiomatic fuzzy set (AFS) theory, which integrates the representation capability of AFS and the classification competence of spectral clustering (N-cut). The effectiveness of the proposed approach is demonstrated by using real-word datasets, and the experimental results indicate that the performance of our method is comparable with that of classic spectral clustering algorithms (NJW, SM, Diffuzzy, AASC and SOM-SC) and other clustering methods, including K-means, fuzzy c-means, and MinMax K-means. Meanwhile, the proposed method can be used to explore the underlying clusters and give their characteristics in the form of fuzzy descriptions. (C) 2017 Elsevier B.V. All rights reserved.
机译:由于聚类非凸数据集的性能良好,光谱聚类引起了很多关注,并成为过去几十年中最受欢迎的聚类算法之一。但是,现有的频谱聚类方法对构建亲和矩阵的参数设置敏感,这严重危及算法对噪声数据的免疫力。此外,在许多应用领域中,包括信用评级和医学诊断,学习模型能够理解和解释是非常重要的。为了使光谱聚类在分类率和可理解性中,我们提出了一种基于公理模糊集(AFS)理论的语义解释的光谱聚类方法,其集成了AFS的表示能力和光谱聚类的分类能力(N-CUT) 。通过使用实际数据集来证明所提出的方法的有效性,实验结果表明,我们的方法的性能与经典光谱聚类算法(NJW,SM,Simmuzzy,AASC和SOM-SC)相当的比较。聚类方法,包括K-means,模糊C-means和Minmax K-means。同时,所提出的方法可用于探索底层簇,并以模糊描述的形式给出它们的特征。 (c)2017 Elsevier B.v.保留所有权利。

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