Nearly Optimal Risk Bounds for Kernel K-Means

Liu, Yong, Ding, Lizhong, Zhang, Hua, Ren, Wenqi, Zhang, Xiao, Jiang, Shali, Liu, Xinwang, Wang, Weiping

arXiv.org Machine Learning 

In this paper, we study the statistical properties of the kernel $k$-means and obtain a nearly optimal excess risk bound, substantially improving the state-of-art bounds in the existing clustering risk analyses. We further analyze the statistical effect of computational approximations of the Nystr\"{o}m kernel $k$-means, and demonstrate that it achieves the same statistical accuracy as the exact kernel $k$-means considering only $\sqrt{nk}$ Nystr\"{o}m landmark points. To the best of our knowledge, such sharp excess risk bounds for kernel (or approximate kernel) $k$-means have never been seen before.

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