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Solving Classification Problems Using Projection-Based Learning Algorithm with Fuzzy Radial Basis Function Neural Network

机译:用基于投影的模糊径向基函数神经网络解决基于投影的学习算法来解决分类问题

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摘要

Radial basis function (RBF) is combined with fuzzy C-means algorithms and its learning process made by projection-based learning (PBL) has been proposed in this paper, which is pointed out as PBL-fuzzy radial basis function (PBL-FRBF). The proposed method PBL-FRBF is producing good performances by selecting appropriate center and its width in order to achieve it by unsupervised classification algorithms instead of random selection. The PBL decreases the learning time, finds optimum output weight by its energy function and prefers smallest amount of samples for testing. Performance analysis is evaluated by benchmark datasets for classification problem taken from the UCI machine learning repository. The performance of the proposed PBL-FRBF has produced superior results when compared with FRBF and RBF for classification problems.
机译:径向基函数(RBF)与模糊C型算法相结合,并在本文中提出了通过基于投影的学习(PBL)制造的学习过程,其被指出为PBL模糊径向基函数(PBL-FRBF) 。 所提出的方法PBL-FRBF通过选择适当的中心及其宽度来产生良好的性能,以便通过无监督的分类算法而不是随机选择来实现它。 PBL降低了学习时间,通过其能量函数找到最佳输出重量,并更喜欢用于测试的最小样本。 通过基准数据集进行性能分析,用于从UCI机器学习存储库中取出的分类问题。 与FRBF和RBF进行分类问题相比,所提出的PBL-FRBF的性能产生了优异的结果。

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