Transitive Distance Clustering with K-Means Duality

CVPR(2014)

引用 12|浏览79
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摘要
We propose a very intuitive and simple approximation for the conventional spectral clustering methods. It effectively alleviates the computational burden of spectral clustering - reducing the time complexity from O(n3) to O(n2) - while capable of gaining better performance in our experiments. Specifically, by involving a more realistic and effective distance and the \"k-means duality\" property, our algorithm can handle datasets with complex cluster shapes, multi-scale clusters and noise. We also show its superiority in a series of its real applications on tasks including digit clustering as well as image segmentation.
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关键词
time complexity,digit clustering,image segmentation,matrix algebra,spectral clustering method,transitive distance matrix,transitive distance clustering,computational complexity,data handling,intuitive approximation,k-means duality property,complex cluster shapes,duality (mathematics),multiscale clusters,data noise,labeling,algorithm design and analysis,kernel,clustering algorithms,measurement,duality mathematics,shape
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