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Fast Training of Structured SVM Using Fixed-Threshold Sequential Minimal Optimization

机译:使用固定阈值顺序最小优化的结构化SVM快速训练

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摘要

In this paper, we describe a fixed-threshold sequential minimal optimization (FSMO) for structured SVM problems. FSMO is conceptually simple, easy to implement, and faster than the standard support vector machine (SVM) training algorithms for structured SVM problems. Because FSMO uses the fact that the formulation of structured SVM has no bias (that is, the threshold b is fixed at zero), FSMO breaks down the quadratic programming (QP) problems of structured SVM into a series of smallest QP problems, each involving only one variable. By involving only one variable, FSMO is advantageous in that each QP sub-problem does not need subset selection. For the various test sets, FSMO is as accurate as an existing structured SVM implementation (SVM-Struct) but is much faster on large data sets. The training time of FSMO empirically scales between O(n) and O(n~(1.2)), while SVM-Struct scales between O(n~(1.5)) and O(n~(1.8)).
机译:在本文中,我们描述了结构化SVM问题的固定阈值顺序最小优化(FSMO)。 FSMO在概念上简单,易于实现,并且比针对结构化SVM问题的标准支持向量机(SVM)训练算法更快。因为FSMO使用结构化SVM的公式没有偏差(即阈值b固定为零)这一事实,所以FSMO将结构化SVM的二次规划(QP)问题分解为一系列最小的QP问题,每个问题都涉及只有一个变量。通过仅包含一个变量,FSMO的优势在于,每个QP子问题都不需要选择子集。对于各种测试集,FSMO与现有的结构化SVM实现(SVM-Struct)一样准确,但是在大型数据集上要快得多。 FSMO的训练时间在O(n)和O(n〜(1.2))之间按经验标度,而SVM-Struct在O(n〜(1.5))和O(n〜(1.8))之间标度。

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