Construction of Binary Tree Classifier Using Linear SVM for Large-Scale Classification

Q. Leng, Shurui Wang, Dehai Shen
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引用次数: 3

Abstract

Support vector machines (SVM) with kernel can solve nonlinear problem, but when the size of the problem is relatively large, the solving speed will be slow, which is not conducive to real-time applications. For linear SVM, it has fast computational speed, but its classification accuracy is usually not guaranteed. This paper proposes a binary tree classifier with linear SVM, which makes a tradeoff between computational speed and classification accuracy. If the local error rate is below a pre-set threshold, leaf nodes that make the final decision are generated; Otherwise, recursive construction of non-leaf nodes is performed. The final tree structure expresses the hierarchical division of given pattern classes. Experiments show that the proposed method ensures the genera-lization ability while responding rapidly.
基于线性支持向量机的二叉树分类器构建
带核支持向量机(SVM)可以求解非线性问题,但当问题规模较大时,求解速度会较慢,不利于实时应用。线性支持向量机的计算速度较快,但其分类精度往往得不到保证。本文提出了一种基于线性支持向量机的二叉树分类器,该分类器在计算速度和分类精度之间进行了权衡。如果局部错误率低于预先设定的阈值,则生成做出最终决策的叶节点;否则,执行非叶节点的递归构造。最后的树状结构表示给定模式类的层次划分。实验表明,该方法在快速响应的同时保证了泛化能力。
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