基于图的少标记节点半监督局部聚类

Zhaiming Shen, M. Lai, Sheng Li
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引用次数: 0

摘要

局部聚类的目的是在不知道整个图结构的情况下提取图内部的局部结构。由于局部结构与整个图相比通常较小,因此可以将其视为压缩感知问题,其中目标簇的指标可以视为线性系统的稀疏解。在本文中,我们在同一框架下,基于两个开创性的工作,提出了一种新的半监督局部聚类方法,只使用少量标记节点。我们的方法改进了现有的作品,使初始切割成为整个图,从而克服了现有作品的一个主要限制,即初始切割的质量不高。在各种数据集上的大量实验结果证明了我们的方法的有效性。
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Graph-based Semi-supervised Local Clustering with Few Labeled Nodes
Local clustering aims at extracting a local structure inside a graph without the necessity of knowing the entire graph structure. As the local structure is usually small in size compared to the entire graph, one can think of it as a compressive sensing problem where the indices of target cluster can be thought as a sparse solution to a linear system. In this paper, we apply this idea based on two pioneering works under the same framework and propose a new semi-supervised local clustering approach using only few labeled nodes. Our approach improves the existing works by making the initial cut to be the entire graph and hence overcomes a major limitation of the existing works, which is the low quality of initial cut. Extensive experimental results on various datasets demonstrate the effectiveness of our approach.
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