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Combining Data Reduction and Parameter Selection for Improving RBF-DDA Performance

机译:结合数据减少和参数选择来提高RBF-DDA性能

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The Dynamic Decay Adjustment (DDA) algorithm is a fast constructive algorithm for training RBF neural networks for classification tasks. In a previous work, we have proposed a method for improving RBF-DDA generalization performance by adequately selecting the value of one of its training parameters (θ~–). Unfortunately, this method generates much larger networks than RBF-DDA with default parameters. This paper proposes a method for improving RBF-DDA generalization performance by combining a data reduction technique with the parameter selection technique. The proposed method has been evaluated on four classification tasks from the UCI repository, including three optical character recognition datasets. The results obtained show that the proposed method considerably improves performance of RBF-DDA without producing larger networks. The results are compared to MLP and k-NN results obtained in previous works. It is shown that the method proposed in this paper outperforms MLPs and obtains results comparable to k-NN on these tasks.
机译:动态衰减调整(DDA)算法是一种快速建设性算法,用于训练用于分类任务的RBF神经网络。在以前的工作中,我们已经提出了一种通过充分选择其训练参数之一的值(θ〜 - )来改善RBF-DDA泛化性能的方法。不幸的是,该方法产生的网络比RBF-DDA更大,具有默认参数。本文提出了一种通过将数据减少技术与参数选择技术相结合来提高RBF-DDA泛化性能的方法。已经在UCI存储库中的四个分类任务中评估了所提出的方法,包括三个光学字符识别数据集。得到的结果表明,该方法显着提高了RBF-DDA的性能而不产生较大的网络。将结果与先前作品中获得的MLP和K-NN结果进行比较。结果表明,本文提出的方法优于MLP,并获得与这些任务的K-NN相当的结果。

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