Sublinear Optimization for Machine Learning

K. Clarkson, Elad Hazan, David P. Woodruff
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引用次数: 128

Abstract

We give sub linear-time approximation algorithms for some optimization problems arising in machine learning, such as training linear classifiers and finding minimum enclosing balls. Our algorithms can be extended to some kernelized versions of these problems, such as SVDD, hard margin SVM, and $L_2$-SVM, for which sub linear-time algorithms were not known before. These new algorithms use a combination of a novel sampling techniques and a new multiplicative update algorithm. We give lower bounds which show the running times of many of our algorithms to be nearly best possible in the unit-cost RAM model. We also give implementations of our algorithms in the semi-streaming setting, obtaining the first low pass polylogarithmic space and sub linear time algorithms achieving arbitrary approximation factor.
机器学习的次线性优化
对于机器学习中出现的一些优化问题,如训练线性分类器和寻找最小封闭球,我们给出了子线性时间逼近算法。我们的算法可以扩展到这些问题的一些核化版本,如SVDD、硬边界支持向量机和$L_2$-支持向量机,这是以前不知道的子线性时间算法。这些新算法结合了一种新的采样技术和一种新的乘法更新算法。我们给出的下界表明,在单位成本RAM模型中,我们的许多算法的运行时间几乎是最好的。我们还给出了我们的算法在半流设置下的实现,获得了第一个低通多对数空间和亚线性时间算法,实现了任意近似因子。
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