半监督聚类的学习谱嵌入

Fanhua Shang, Yuanyuan Liu, Fei Wang
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引用次数: 24

摘要

近年来,半监督聚类(SSC)引起了机器学习和数据挖掘领域的广泛关注。本文提出了一种基于增强谱嵌入(ESE)的半监督聚类方法,该方法不仅考虑了数据集中包含的结构信息,而且利用了对约束等先验侧信息。特别地,我们首先构造了一个对称的k-NN图,它对有噪声的对象具有很强的鲁棒性,并能反映数据的底层流形结构。然后,我们学习增强的频谱嵌入,以获得尽可能符合对约束的理想表示。最后,利用拉普拉斯正则化,我们将学习谱表示表述为平方损失函数下的半确定二次线性规划(SQLPs)或铰链损失函数下的小半确定规划(sdp),两者都可以有效地求解。在各种合成数据集和现实世界数据集上的实验结果表明,我们的方法在基于向量和基于图的聚类上都优于最先进的SSC算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Spectral Embedding for Semi-supervised Clustering
In recent years, semi-supervised clustering (SSC) has aroused considerable interests from the machine learning and data mining communities. In this paper, we propose a novel semi-supervised clustering approach with enhanced spectral embedding (ESE) which not only considers structure information contained in data sets but also makes use of prior side information such as pair wise constraints. Specially, we first construct a symmetry-favored k-NN graph which is highly robust to noisy objects and can reflect the underlying manifold structure of data. Then we learn the enhanced spectral embedding towards an ideal representation as consistent with the pair wise constraints as possible. Finally, through taking advantage of Laplacian regularization, we formulate learning spectral representation as semi definite-quadratic-linear programs (SQLPs) under the squared loss function or small semi definitive programs (SDPs) under the hinge loss function, which both can be efficiently solved. Experimental results on a variety of synthetic and real-world data sets show that our approach outperforms the state-of-the-art SSC algorithms on both vector-based and graph-based clustering.
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