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Path-Based Relative Similarity Spectral Clustering

机译:基于路径的相对相似谱聚类

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Spectral clustering shows promising clustering results on many computer applications. But it will greatly affected by its scale parameter used in Gaussian kernel. Path-based spectral can alleviate the problem in some extend, but it will still be some shortcoming in the algorithm. In this paper, we propose a new kind of path-based spectral clustering, called path-based relative similarity spectral clustering. Inspired by LLE(Locally Linear Embedding), the proposed novel algorithm uses linear reconstruction weights to measure the similarity between adjacent points. Then based on the constructed connected graph, the new path-based similarity can be got. Experiments prove the algorithmȁ9;s efficiency. Also, we naturally extend the clustering method to semi-supervised clustering.
机译:频谱聚类在许多计算机应用程序上显示出令人鼓舞的聚类结果。但是它会极大地受到其在高斯核中使用的scale参数的影响。基于路径的频谱可以在一定程度上缓解该问题,但是在算法上仍然存在一些不足。在本文中,我们提出了一种新的基于路径的谱聚类,称为基于路径的相对相似谱聚类。受到LLE(局部线性嵌入)的启发,该新算法使用线性重构权重来测量相邻点之间的相似度。然后基于构造的连通图,可以得到新的基于路径的相似度。实验证明了该算法的有效性。同样,我们自然地将聚类方法扩展到半监督聚类。

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