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Semi-supervised low rank kernel learning algorithm via extreme learning machine

机译:基于极限学习机的半监督低阶核学习算法

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摘要

Semi-supervised kernel learning methods have been received much more attention in the past few years. Traditional semi-supervised non-parametric kernel learning (NPKL) methods usually formulate the learning task as a semi-definite programming (SDP) problem, which is very time consuming. Although some fast semi-supervised NPKL methods have been proposed recently, they usually scale very poorly. Furthermore, many semi-supervised NPKL methods are developed based on the manifold assumption. But, such an assumption might be invalid when handling some high-dimensional and sparse data, which has severely negative effect on the performance of learning algorithms. In this paper, we propose a more efficient semi-supervised NPKL method, which can effectively learn a low-rank kernel matrix from must-link and cannot-link constraints. Specially, by virtue of the nonlinear embedding functions based on extreme learning machine (ELM), the proposed method has the ability of coping with data points that do not have a clear manifold structure in a low dimensional space. The proposed method is formulated as a trace ratio optimization problem, which is combined with dimensionality reduction in ELM feature space and aims to find optimal low-rank kernel matrices. The proposed optimization problem can be solved much more efficiently than SDP solvers. Extensive experiments have validated the superior performance of the proposed method compared to state-of-the-art semi-supervised kernel learning methods.
机译:在过去的几年中,半监督内核学习方法已受到越来越多的关注。传统的半监督非参数内核学习(NPKL)方法通常将学习任务表述为半确定编程(SDP)问题,这非常耗时。尽管最近已经提出了一些快速的半监督NPKL方法,但是它们通常很难扩展。此外,基于流形假设,开发了许多半监督的NPKL方法。但是,这种假设在处理某些高维和稀疏数据时可能无效,这对学习算法的性能产生了严重的负面影响。在本文中,我们提出了一种更有效的半监督NPKL方法,该方法可以从必须链接和不能链接约束中有效地学习低秩内核矩阵。特别地,借助基于极限学习机(ELM)的非线性嵌入功能,该方法具有处理在低维空间中没有清晰流形结构的数据点的能力。该方法被提出为跟踪比率优化问题,并与ELM特征空间的降维相结合,旨在找到最优的低阶核矩阵。所提出的优化问题比SDP求解器可以更有效地解决。与最新的半监督内核学习方法相比,大量实验已验证了该方法的优越性能。

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