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A Novel Meta-Cognitive Extreme Learning Machine to Learning from Data Streams

机译:一种新颖的元认知极限学习机,可从数据流中学习

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Extreme Learning Machine (ELM) is an answer to an increasing demand for a low-cost learning algorithm to handle big data applications. Nevertheless, existing ELMs leave four uncharted problems: complexity, uncertainty, concept drifts, curse of dimensionality. To correct these issues, a novel incremental meta-cognitive ELM, namely Evolving Type-2 Extreme Learning Machine (eT2ELM), is proposed. Et2Elm is built upon the three pillars of meta-cognitive learning, namely what-to-learn, how-to-learn, when-to-learn, where the notion of ELM is implemented in the how-to-learn component. On the other hand, eT2ELM is driven by a generalized interval type-2 Fuzzy Neural Network (FNN) as the cognitive constituent, where the interval type-2 multivariate Gaussian function is used in the hidden layer, whereas the nonlinear Chebyshev function is embedded in the output layer. The efficacy of eT2ELM is proven with four data streams possessing various concept drifts, comparisons with prominent classifiers, and statistical tests, where eT2ELM demonstrates the most encouraging learning performances in terms of accuracy and complexity.
机译:极限学习机(ELM)满足了对处理大数据应用程序的低成本学习算法的日益增长的需求。尽管如此,现有的ELM仍然存在四个未知的问题:复杂性,不确定性,概念漂移,维度诅咒。为了纠正这些问题,提出了一种新颖的渐进式元认知ELM,即正在发展的Type-2极限学习机(eT2ELM)。 Et2Elm建立在元认知学习的三个支柱上,即学习什么,如何学习,何时学习,其中在学习方法组件中实现了ELM的概念。另一方面,eT2ELM由广义间隔2型模糊神经网络(FNN)作为认知成分驱动,其中在隐藏层中使用间隔2型多元高斯函数,而将非线性Chebyshev函数嵌入其中。输出层。 eT2ELM的有效性已通过四个具有各种概念偏差的数据流,与著名分类器的比较以及统计测试得到了证明,其中eT2ELM在准确性和复杂性方面展示了最令人鼓舞的学习表现。

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