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Recognition of Control Chart Patterns Using Decision Tree of Multi-class SVM

机译:使用多类支持向量机的决策树识别控制图模式

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This paper aims to realize the automatic recognition of abnormal patterns of control charts in a statistical process control system. A novel multi-class SVM is proposed to recognize the control chart patterns, which include six basic patterns (i.e. normal, cyclic, up-trend, down-trend, up-shift, and down-shift pattern). Unlike the commonly used One-Against-All (OAA) implementation methods, the structure of proposed multi-class SVM is same as a special decision tree with each node as a binary SVM classifier, which is built via recursively dividing the training dataset of six classes into two subsets of classes. The proposed multi-class SVM can increase recognition accuracy and resolve the unclassifiable region problems caused by OAA methods. Based on this, Monte Carlo simulation is used to generate training and testing data samples. The results of simulated experiment show that the problem of false recognition has been addressed effectively, and the proposed decision tree of multi-class SVM is more effective in detecting unnatural patterns on control charts than the traditional OAA methods.
机译:本文旨在实现统计过程控制系统中控制图异常模式的自动识别。提出了一种新颖的多类支持向量机来识别控制图模式,该模式包括六个基本模式(即正常,循环,上升趋势,下降趋势,上移和下移模式)。与常用的“一费一价”(OAA)实现方法不同,拟议的多类支持向量机的结构与特殊决策树相同,每个节点均作为二进制支持向量机分类器,通过递归地将训练数据集分为六个来构建类分为两类。提出的多类支持向量机可以提高识别的准确性,并解决由OAA方法引起的无法分类的区域问题。基于此,蒙特卡洛模拟用于生成训练和测试数据样本。仿真实验结果表明,错误识别问题得到了有效的解决,与传统的OAA方法相比,提出的多类支持向量机决策树在控制图上更有效地检测非自然模式。

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