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Systemical convergence rate analysis of convex incremental feedforward neural networks

机译:凸增量前馈神经网络的系统收敛速度分析

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摘要

In this paper, we systemically investigate several convex incremental feedforward neural networks. Firstly, we prove the universal approximation and the convergence rate of a generalized convex incremental (GCI) structure, which provides us a wider parameter selection. Second, according to the convergence rate proof of GCI, we further prove the convergence rate of a best convex incremental (BCI) structure, moreover its proof also illustrates that BCI can achieve a better generalization performance than GCI. But we should note that the hidden neurons of BCI and GCI both are constructed on the maximum principle (not random). Next, we introduce the random neuron conception based on CI-ELM (convex incremental extreme learning machines), and further propose an alternative algorithm (improved CI-ELM, ICI-ELM) between CI-ELM and BCI, which removes the "useless" neurons in CI-ELM and improves the efficiency of neural networks. ICI-ELM randomly generates a group of parameters, among which we determine the best parameters leading to the smallest residual error. Therefore ICI-ELM can achieve a faster convergence rate than CI-ELM, meanwhile it still retains the same convergence rate as BCI. On the other hand, ICI-ELM also provides an alternative scheme to replace conventional gradient methods, which are only suitable for differential functions and often achieves local minima. The experimental results based on several benchmark regression problems support our claims.
机译:在本文中,我们系统地研究了几个凸增量前馈神经网络。首先,我们证明了广义凸增量(GCI)结构的通用逼近和收敛速度,这为我们提供了更广泛的参数选择。其次,根据GCI的收敛速度证明,我们进一步证明了最佳凸增量(BCI)结构的收敛速度,此外,其证明还表明BCI可以实现比GCI更好的泛化性能。但是我们应该注意,BCI和GCI的隐藏神经元都是基于最大原理(不是随机的)构造的。接下来,我们介绍基于CI-ELM(凸增量极限学习机)的随机神经元概念,并进一步提出CI-ELM和BCI之间的替代算法(改进的CI-ELM,ICI-ELM),从而消除了“无用的” CI-ELM中的神经元,并提高了神经网络的效率。 ICI-ELM随机生成一组参数,其中我们确定导致最小残留误差的最佳参数。因此,ICI-ELM可以实现比CI-ELM更快的收敛速度,同时仍保持与BCI相同的收敛速度。另一方面,ICI-ELM还提供了一种替代方案来替代常规梯度法,该方法仅适用于微分函数,并且经常达到局部最小值。基于几个基准回归问题的实验结果支持了我们的主张。

著录项

  • 来源
    《Neurocomputing》 |2009年第12期|2627-2635|共9页
  • 作者单位

    Network Systems and Service Lab, Department of Computer Science, National University of Singapore, Singapore;

    Network Systems and Service Lab, Department of Computer Science, National University of Singapore, Singapore;

    Network Systems and Service Lab, Department of Computer Science, National University of Singapore, Singapore;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    feedforward neural networks; convergence rate; universal approximation; random hidden neurons;

    机译:前馈神经网络收敛速度通用近似随机隐藏的神经元;
  • 入库时间 2022-08-18 02:08:30

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