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Research on Multiple Classification Based on Improved SVM Algorithm for Balanced Binary Decision Tree

机译:基于改进的平衡二元决策树的SVM算法的多分类研究

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Support vector machines (SVMs) are designed to solve the binary classification problems at the beginning, but in the real world, there are a lot of multiclassification cases. The multiclassification methods based on SVM are mainly divided into the direct methods and the indirect methods, in which the indirect methods, which consist of multiple binary classifiers integrated in accordance with certain rules to form the multiclassification model, are the most commonly used multiclassification methods at present. In this paper, an improved multiclassification algorithm based on the balanced binary decision tree is proposed, which is called the IBDT-SVM algorithm. In this algorithm, it considers not only the influence of “between-classes distance” and “class variance” in traditional measures of between-classes separability but also takes “between-classes variance” into consideration and proposes a new improved “between-classes separability measure.” Based on the new “between-classes separability measure,” it finds out the two classes with the largest between-classes separability measure and uses them as the positive and negative samples to train and learn the classifier. After that, according to the principle of the class-grouping-by-majority, the remaining classes are close to these two classes and merged into the positive samples and the negative samples to train SVM classifier again. For the samples with uneven distribution or sparse distribution, this method can avoid the error caused by the shortest canter distance classification method and overcome the “error accumulation” problem existing in traditional binary decision tree to the greatest extent so as to obtain a better classifier. According to the above algorithm, each layer node of the decision tree is traversed until the output classification result is a single-class label. The experimental results show that the IBDT-SVM algorithm proposed in this paper can achieve better classification accuracy and effectiveness for multiple classification problems.
机译:支持向量机(SVM)旨在解决开始的二进制分类问题,但在现实世界中,有很多多分类案例。基于SVM的多分类方法主要分为直接方法和间接方法,其中包括根据某些规则集成的多个二进制分类器组成的间接方法是最常用的多分类方法展示。本文提出了一种基于平衡二元决策树的改进的多分类算法,称为IBDT-SVM算法。在该算法中,不仅考虑了“中类距离”和“类别方差”中的传统措施的影响,还考虑了“课程方差”之间的“课程方差”,并提出了一种新的改进“课程之间的课程可分离性度量。“基于新的“课程间可分离措施”,它发现了两种课程,课程间可分离度量最大,并使用它们作为培训和学习分类器的正面和负面样本。之后,根据类别的基础,逐渐组成的原理,剩余类别接近这两个类,并合并到正面样本和负样本中,以便再次训练SVM分类器。对于分布不均匀或稀疏分布的样本,该方法可以避免由最短慢速距离分类方法引起的误差,并克服传统二进制决策树中存在的“误差累积”问题,以便获得更好的分类器。根据上述算法,遍历决策树的每个层节点,直到输出分类结果是单级标签。实验结果表明,本文提出的IBDT-SVM算法可以实现更好的分类准确性和有效性,以获得多种分类问题。

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