首页> 外文会议>International Conference on Intelligent Computing(ICIC 2006); 20060816-19; Kunming(CN) >A Comparative Study on Improved Fuzzy Support Vector Machines and Levenberg-Marquardt-Based BP Network
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A Comparative Study on Improved Fuzzy Support Vector Machines and Levenberg-Marquardt-Based BP Network

机译:改进的模糊支持向量机与基于Levenberg-Marquardt的BP网络的比较研究

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The paper proposes an edge-effect training multi-class fuzzy support vector machine (EFSVM). It treats the training data points with different importance in the training process, and especially emphasizes primary contribution of these points distributed in edge area of data sets for classification, and then assigns them greater fuzzy membership degrees, thus assures that the nearer these points are away from edge area of training sets and the greater their contribution are. At the same time EFSVM is systematically compared to two other fuzzy support vector machines and a Levenberg-Marquardt-based BP algorithm (LMBP). The classification results for both Iris data and remote sensing image show that EFSVM is the best and may effectively enhance pattern classification accuracy.
机译:提出了一种边缘效应训练的多类模糊支持向量机(EFSVM)。它对待训练过程中具有不同重要性的训练数据点进行处理,并特别强调这些点分布在数据集边缘区域中的主要贡献,以进行分类,然后为它们分配更大的模糊隶属度,从而确保距离这些点越近从训练集的边缘区域开始,它们的贡献就越大。同时,系统地将EFSVM与其他两个模糊支持向量机和基于Levenberg-Marquardt的BP算法(LMBP)进行了比较。虹膜数据和遥感图像的分类结果表明,EFSVM是最好的,可以有效地提高模式分类的准确性。

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