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Incremental Parallel Support Vector Machines for Classifying Large-Scale Multi-class Image Datasets

机译:用于大规模多类图像数据集分类的增量并行支持向量机

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In this paper, we propose an incremental parallel support vector machines (SVM) training with stochastic gradient descent (SGD) for dealing with the very large number of images and large-scale multi-class on standard personal computers (PCs). The two-class SVM-SGD algorithm is extended in several ways to develop the new incremental parallel multi-class SVM-SGD in large-scale classifications. We propose the balanced batch SGD of SVM (BBatch-SVM-SGD) for trainning two-class classifiers used in the one-versus-all strategy of the multi-class problems and the incremental training process of classifiers in parallel way on multi-core computers. The numerical test results on ImageNet datasets show that our algorithm is efficient compared to the state-of-the-art linear SVM classifiers in terms of training time, correctness and memory requirements.
机译:在本文中,我们提出了一种具有随机梯度下降(SGD)的增量并行支持向量机(SVM)训练,用于处理标准个人计算机(PC)上的大量图像和大规模多类。通过多种方式扩展了两类SVM-SGD算法,以便在大规模分类中开发新的增量并行多类SVM-SGD。我们提出了SVM的平衡批处理SGD(BBatch-SVM-SGD),用于训练用于多类别问题的一对多策略的两类分类器以及在多核上以并行方式分类器的增量训练过程电脑。在ImageNet数据集上的数值测试结果表明,相对于最新的线性SVM分类器,我们的算法在训练时间,正确性和内存要求方面是有效的。

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