Stream-suitable optimization algorithms for some soft-margin support vector machine variants

被引:0
|
作者
Hien D. Nguyen
Andrew T. Jones
Geoffrey J. McLachlan
机构
[1] La Trobe University,Department of Mathematics and Statistics
[2] University of Queensland,School of Mathematics and Physics
关键词
Big data; MNIST; Stochastic majorization–minimization algorithm; Streamed data; Support vector machines;
D O I
10.1007/s42081-018-0001-y
中图分类号
学科分类号
摘要
Soft-margin support vector machines (SVMs) are an important class of classification models that are well known to be highly accurate in a variety of settings and over many applications. The training of SVMs usually requires that the data be available all at once, in batch. The Stochastic majorization–minimization (SMM) algorithm framework allows for the training of SVMs on streamed data instead. We utilize the SMM framework to construct algorithms for training hinge loss, squared-hinge loss, and logistic loss SVMs. We prove that our three SMM algorithms are each convergent and demonstrate that the algorithms are comparable to some state-of-the-art SVM-training methods. An application to the famous MNIST data set is used to demonstrate the potential of our algorithms.
引用
收藏
页码:81 / 108
页数:27
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