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A hybrid SVM based decision tree

机译:基于混合SVM的决策树

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摘要

We have proposed a hybrid SVM based decision tree to speedup SVMs in its testing phase for binary classification tasks. While most existing methods addressed towards this task aim at reducing the number of support vectors, we have focused on reducing the number of test datapoints that need SVM's help in getting classified. The central idea is to approximate the decision boundary of SVM using decision trees. The resulting tree is a hybrid tree in the sense that it has both univariate and multivariate (SVM) nodes. The hybrid tree takes SVM's help only in classifying crucial datapoints lying near decision boundary; remaining less crucial datapoints are classified by fast univariate nodes. The classification accuracy of the hybrid tree is guaranteed by tuning a threshold parameter. Extensive computational comparisons on 19 publicly available datasets indicate that the proposed method achieves significant speedup when compared to SVMs, without any compromise in classification accuracy.
机译:我们已经提出了一种基于混合SVM的决策树,以在二进制分类任务的测试阶段加快SVM的速度。尽管解决该任务的大多数现有方法旨在减少支持向量的数量,但我们集中在减少需要SVM帮助进行分类的测试数据点的数量。中心思想是使用决策树来近似支持向量机的决策边界。从它既具有单变量节点又包含多变量(SVM)节点的意义上说,所得树是混合树。混合树仅在对决策边界附近的关键数据点进行分类时才使用SVM的帮助。剩余的不太重要的数据点由快速单变量节点分类。通过调整阈值参数,可以保证混合树的分类精度。在19个公开可用的数据集上进行的大量计算比较表明,与SVM相比,该方法可实现显着的加速,而不会影响分类精度。

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