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Evolving fuzzy Optimally Pruned Extreme Learning Machine: A comparative analysis

机译:进化模糊的最优修剪极端学习机:对比分析

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This paper proposes a method for the identification of evolving fuzzy Takagi-Sugeno systems based on the Optimally-Pruned Extreme Learning Machine (OP-ELM) methodology. We describe ELM which is a simple yet accurate and fast learning algorithm for training single-hidden layer feed-forward artificial neural networks (SLFNs) with random hidden neurons. We then describe the OP-ELM methodology for building ELM models in a robust and generic manner. Leveraging on the previously proposed Online Sequential ELM method and the OP-ELM, we propose an identification method for self-developing or evolving neuro-fuzzy systems. This method follows a random projection based approach to extracting evolving fuzzy rulebases. A comparison is performed over a diverse collection of datasets against well known evolving neuro-fuzzy methods, namely DENFIS and eTS. It is shown that the method proposed is robust and competitive in terms of accuracy and speed.
机译:本文提出了一种基于最优修剪极限学习机(OP-ELM)方法的演化模糊Takagi-Sugeno系统辨识方法。我们描述了ELM,它是一种用于训练带有随机隐藏神经元的单隐藏层前馈人工神经网络(SLFN)的简单而又准确且快速的学习算法。然后,我们描述以健壮和通用的方式构建ELM模型的OP-ELM方法。利用先前提出的在线顺序ELM方法和OP-ELM,我们提出了一种用于自我开发或进化的神经模糊系统的识别方法。该方法遵循基于随机投影的方法来提取演化的模糊规则库。针对众所周知的不断发展的神经模糊方法(即DENFIS和eTS),对各种数据集进行了比较。结果表明,所提出的方法在准确性和速度上是鲁棒的和有竞争力的。

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