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Improving the Run-Time Performance of Multi-class Support Vector Machines

机译:改善多类支持向量机的运行时性能

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In this paper we propose three approaches to speed up the prediction phase of multi-class Support Vector Machines (SVM). For the binary classification the method of partial sum estimation and the method of orthonormalization of the support vector set are introduced. Both methods rely on an already trained SVM and reduce the amount of necessary computations during the classification phase. The predicted result is always the same as when using the standard method. No limitations on the training algorithm, on the kernel function or on the kind of input data are implied. Experiments show that both methods outperform the standard method, though the orthonormalization method delivers significantly better results. For the multi-class classification we have developed the pairwise classification heuristics method, which avoids a lot of unnecessary evaluations of binary classifiers and obtains the predicted class in a shorter time. By combining the orthonormalization method with the pairwise classification heuristics, we show that the multi-class classification can be performed considerably faster compared to the standard method without any loss of accuracy.
机译:在本文中,我们提出了三种方法来加快多类支持向量机(SVM)的预测阶段。对于二元分类,介绍了部分和估计的方法以及支持向量集的正交化方法。两种方法都依赖于已经训练有素的SVM,并减少了分类阶段的必要计算量。预测结果始终与使用标准方法时的结果相同。没有暗示对训练算法,内核函数或输入数据类型的限制。实验表明,尽管正交归一化方法可提供更好的结果,但两种方法均优于标准方法。对于多类别分类,我们开发了成对分类启发式方法,该方法避免了对二进制分类器进行大量不必要的评估,并在较短的时间内获得了预测的类别。通过将正交归一化方法与成对分类试探法相结合,我们显示出与标准方法相比,可以更快地执行多类分类,而不会损失任何准确性。

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