A Novel Learning Scheme for Chebyshev Functional Link Neural Networks

Satchidananda Dehuri
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引用次数: 13

Abstract

A hybrid learning scheme (ePSO-BP) to train Chebyshev Functional Link Neural Network (CFLNN) for classification is presented. The proposed method is referred as hybrid CFLNN (HCFLNN). The HCFLNN is a type of feed-forward neural networks which have the ability to transform the nonlinear input space into higher dimensional-space where linear separability is possible. Moreover, the proposed HCFLNN combines the best attribute of particle swarm optimization (PSO), back propagation learning (BP learning), and functional link neural networks (FLNNs). The proposed method eliminates the need of hidden layer by expanding the input patterns using Chebyshev orthogonal polynomials. We have shown its effectiveness of classifying the unknown pattern using the publicly available datasets obtained from UCI repository. The computational results are then compared with functional link neural network (FLNN) with a generic basis functions, PSO-based FLNN, and EFLN. From the comparative study, we observed that the performance of the HCFLNN outperforms FLNN, PSO-based FLNN, and EFLN in terms of classification accuracy.
一种新的Chebyshev函数链接神经网络学习方案
提出了一种训练切比雪夫功能链接神经网络(CFLNN)的混合学习方案(ePSO-BP)。该方法被称为混合CFLNN (HCFLNN)。HCFLNN是一种前馈神经网络,具有将非线性输入空间转换为可能存在线性可分性的高维空间的能力。此外,所提出的HCFLNN结合了粒子群优化(PSO)、反向传播学习(BP学习)和功能链接神经网络(flnn)的最佳属性。该方法利用切比雪夫正交多项式对输入模式进行扩展,消除了隐藏层的需要。我们已经证明了它使用从UCI存储库获得的公开可用数据集对未知模式进行分类的有效性。并将计算结果与具有通用基函数的泛函链接神经网络(FLNN)、基于pso的泛函链接神经网络(FLNN)和EFLN进行了比较。通过对比研究,我们发现HCFLNN的分类准确率优于FLNN、基于pso的FLNN和EFLN。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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