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首页> 外文期刊>International Journal of Artificial Intelligence Tools: Architectures, Languages, Algorithms >An Empirical Analysis of Evolved Radial Basis Function Networks and Support Vector Machines with Mixture of Kernels
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An Empirical Analysis of Evolved Radial Basis Function Networks and Support Vector Machines with Mixture of Kernels

机译:演化混合径向基函数网络和支持向量机的实证分析

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摘要

Classification is one of the most fundamental and formidable tasks in many domains including biomedical. In biomedical domain, the distributions of data in most of the datasets into predefined number of classes is significantly different (i.e., the classes are distributed unevenly). Many mathematical, statistical, and machine learning approaches have been developed for classification of biomedical datasets with a varying degree of success. This paper attempts to analyze the empirical performance of two forefront machine learning algorithms particularly designed for classification problem by adding some novelty to address the problem of imbalanced dataset. The evolved radial basis function network with novel kernel and support vector machine with mixture of kernels are suitably designed for the purpose of classification of imbalanced dataset. The experimental outcome shows that both algorithms are promising compared to simple radial basis function neural networks and support vector machine, respectively. However, on an average, support vector machine with mixture kernels is better than evolved radial basis function neural networks.
机译:分类是包括生物医学在内的许多领域中最基本,最艰巨的任务之一。在生物医学领域,大多数数据集中数据的分布到预定数量的类别中是显着不同的(即,类别分布不均匀)。已经开发了许多数学,统计和机器学习方法来对生物医学数据集进行分类,并获得了不同程度的成功。本文试图通过增加一些新颖性来解决数据集不平衡的问题,来分析针对分类问题而设计的两种最前沿的机器学习算法的经验性能。针对不平衡数据集的分类,设计了具有新型核的演化径向基函数网络和混合核的支持向量机。实验结果表明,与简单的径向基函数神经网络和支持向量机相比,这两种算法都是有前途的。但是,平均而言,带有混合核的支持向量机要优于进化的径向基函数神经网络。

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