支持向量机的模糊BI目标模型及其交互过程识别最佳折衷方案

Hager Ali Yahia, Mohammed Zakaria Moustafa, Mohammed Rizk Mohammed, H. Khater
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引用次数: 1

摘要

支持向量机(SVM)从两类不同的输入点中学习决策面。在许多应用中,在一些输入点中存在错误分类,并且每个输入点都没有完全分配到这两个类中的一个。本文采用了一种带有模糊参数的双目标二次规划模型,同时优化了不同的特征质量度量。定义了α-切,将模糊模型转化为一类经典的双目标二次规划问题。采用加权法对每个问题进行优化。通过改变权重值,得到不同的有效支持向量,为提出的模糊双目标二次规划模型增加了重要贡献。实验结果表明,采用加权参数的α-切法可以有效地减少两类输入点之间的误分类。将增加一个互动程序,从生成的有效解决方案中确定最佳折衷解决方案。
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A Fuzzy BI-Objective Model for SVM with an Interactive Procedure to Identify the Best Compromise Solution
A support vector machine (SVM) learns the decision surface from two different classes of the input points. In many applications, there are misclassifications in some of the input points and each is not fully assigned to one of these two classes. In this paper a bi-objective quadratic programming model with fuzzy parameters is utilized and different feature quality measures are optimized simultaneously. An α-cut is defined to transform the fuzzy model to a family of classical bi-objective quadratic programming problems. The weighting method is used to optimize each of these problems. An important contribution will be added for the proposed fuzzy bi-objective quadratic programming model by getting different efficient support vectors due to changing the weighting values. The experimental results show the effectiveness of the α-cut with the weighting parameters on reducing the misclassification between two classes of the input points. An interactive procedure will be added to identify the best compromise solution from the generated efficient solutions.
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