Binary classification trees for multi-class classification problems

Jin-Seon Lee, Il-Seok Oh
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引用次数: 32

Abstract

This paper proposes a binary classification tree aiming atsolving multi-class classification problems using binaryclassifiers. The tree design is achieved in a way that aclass group is partitioned into two distinct subgroups at anode. The node adopts the class-modular scheme toimprove the binary classification capability. Thepartitioning is formulated as an optimization problemand a genetic algorithm is proposed to solve theoptimization problem. The binary classification tree iscompared to the conventional methods in terms ofclassification accuracy and timing efficiency.Experiments were performed with numeral recognitionand touching-numeral pair recognition.
二叉分类树用于多类分类问题
本文提出了一种利用二分类器解决多类分类问题的二分类树。树形设计的实现方式是将类组在阳极处划分为两个不同的子组。节点采用类模块化方案,提高了二值分类能力。将分区问题表述为一个优化问题,并提出了一种求解优化问题的遗传算法。二叉分类树在分类精度和时序效率方面与传统方法进行了比较。进行了数字识别和触摸-数字对识别实验。
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