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Multiple kernel dimensionality reduction via spectral regression and trace ratio maximization

机译:通过光谱回归和痕量比最大化实现多核降维

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The performance of kernel-based dimensionality reduction heavily relies on the selection of kernel functions. Multiple kernel learning for dimensionality reduction (MKL-DR) has been recently proposed to learn a convex combination from a set of base kernels. But this method relaxes a nonconvex quadratically constrained quadratic programming (QCQP) problem into a semi-definite programming (SDP) problem to specify the kernel weights, which might lead to its performance degradation. Although a trace ratio maximization approach to multiple-kernel based dimensionality reduction (MKL-TR) has been presented to avoid convex relaxation, it has to compute a generalized eigenvalue problem in each iteration of its algorithm, which is expensive in both time and memory. To improve the performance of these methods further, this paper proposes a novel multiple kernel dimensionality reduction method by virtue of spectral regression and trace ratio maximization, termed as MKL-SRTR. The proposed approach aims at learning an appropriate kernel from the multiple base kernels and a transformation into a lower dimensionality space efficiently and effectively. The experimental results demonstrate the effectiveness of the proposed method in benchmark datasets for supervised, unsupervised as well as semi-supervised scenarios. (C) 2015 Elsevier B.V. All rights reserved.
机译:基于内核的降维性能很大程度上取决于对内核函数的选择。最近提出了用于降维的多核学习(MKL-DR),以从一组基本核中学习凸组合。但是,该方法将非凸二次约束二次规划(QCQP)问题缓解为指定内核权重的半定规划(SDP)问题,这可能导致其性能下降。尽管已经提出了一种基于多核的降维(MKL-TR)的迹线比例最大化方法来避免凸松弛,但是它必须在其算法的每次迭代中计算一个广义特征值问题,这在时间和内存上都是昂贵的。为了进一步提高这些方法的性能,本文提出了一种新的多核降维方法,即利用光谱回归和痕量比最大化,称为MKL-SRTR。所提出的方法旨在从多个基本内核中学习适当的内核,并有效地将其转换为低维空间。实验结果证明了该方法在有监督,无监督以及半监督场景的基准数据集中的有效性。 (C)2015 Elsevier B.V.保留所有权利。

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