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Unsupervised non-parametric kernel learning algorithm

机译:无监督非参数核学习算法

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摘要

A foundational problem in kernel-based learning is how to design suitable kernels. Non-Parametric Kernel Learning (NPKL) is one of the most important kernel learning methods. However, most research on NPKL has tended to focus on the semi-supervised scenario. In this paper, we propose a novel unsupervised non-parametric kernel learning method, which can seamlessly combine the spectral embedding of unlabeled data and manifold Regularized Least-Squares (RLS) to learn non-parametric kernels efficiently. The proposed algorithm enjoys a closed-form solution in each iteration, which can be efficiently computed by the Lanczos sparse eigen-decomposition technique. Meanwhile, it can be extended to supervised kernel learning naturally. Experimental results show that our proposed unsupervised non-parametric kernel learning algorithm is significantly more effective and applicable to enhance the performance of Maximum Margin Clustering (MMC). Especially, it outperforms multiple kernel learning in both unsupervised and supervised settings.
机译:基于内核的学习中的一个基本问题是如何设计合适的内核。非参数内核学习(NPKL)是最重要的内核学习方法之一。但是,关于NPKL的大多数研究都倾向于集中在半监督的情况下。在本文中,我们提出了一种新颖的无监督非参数内核学习方法,该方法可以将未标记数据的频谱嵌入与流形正则最小二乘(RLS)无缝结合,从而有效地学习非参数内核。所提出的算法在每次迭代中都具有封闭形式的解决方案,可以通过Lanczos稀疏特征分解技术有效地对其进行计算。同时,它可以自然地扩展到有监督的内核学习。实验结果表明,我们提出的无监督非参数内核学习算法明显更有效,可用于增强最大边缘聚类(MMC)的性能。尤其是,它在无监督和有监督的环境下均优于多内核学习。

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