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Alignment based kernel learning with a continuous set of base kernels

机译:基于对齐的内核学习与连续的基础内核集

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The success of kernel-based learning methods depends on the choice of kernel. Recently, kernel learning methods have been proposed that use data to select the most appropriate kernel, usually by combining a set of base kernels. We introduce a new algorithm for kernel learning that combines a continuous set of base kernels, without the common step of discretizing the space of base kernels. We demonstrate that our new method achieves state-of-the-art performance across a variety of real-world datasets. Furthermore, we explicitly demonstrate the importance of combining the right dictionary of kernels, which is problematic for methods that combine a finite set of base kernels chosen a priori. Our method is not the first approach to work with continuously parameterized kernels. We adopt a two-stage kernel learning approach. We also show that our method requires substantially less computation than previous such approaches, and so is more amenable to multi-dimensional parameterizations of base kernels, which we demonstrate.
机译:基于内核的学习方法的成功取决于内核的选择。最近,提出了使用数据来选择最合适的内核的内核学习方法,通常是通过组合一组基本内核来进行的。我们介绍了一种用于内核学习的新算法,该算法结合了一组连续的基本内核,而无需执行离散化基本内核空间的通用步骤。我们证明了我们的新方法在各种现实世界的数据集上都达到了最先进的性能。此外,我们明确证明了组合正确的内核字典的重要性,这对于组合先验选择的有限基础内核集合的方法是有问题的。我们的方法不是使用连续参数化内核的第一种方法。我们采用两阶段的内核学习方法。我们还表明,与以前的此类方法相比,我们的方法所需的计算量要少得多,因此,我们更喜欢基本内核的多维参数化。

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