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Recent Advances and Trends in Large-Scale Kernel Methods

机译:大规模内核方法的最新进展和趋势

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摘要

Kernel methods such as the support vector machine are one of the most successful algorithms in modern machine learning. Their advantage is that linear algorithms are extended to non-linear scenarios in a straightforward way by the use of the kernel trick. However, naive use of kernel methods is computationally expensive since the computational complexity typically scales cubically with respect to the number of training samples. In this article, we review recent advances in the kernel methods, with emphasis on scalability for massive problems.
机译:诸如支持向量机之类的内核方法是现代机器学习中最成功的算法之一。它们的优点是,通过使用内核技巧,线性算法可以直接扩展到非线性方案。然而,单纯地使用核方法在计算上是昂贵的,因为计算复杂度通常相对于训练样本的数量成三次方地缩放。在本文中,我们回顾了内核方法​​的最新进展,重点是针对大规模问题的可伸缩性。

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