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Data driven modelling based on Recurrent Interval-Valued Metacognitive Scaffolding Fuzzy Neural Network

机译:基于递归区间值元认知支架模糊神经网络的数据驱动建模

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The Metacognitive Scaffolding Learning Machine (McSLM), combining the concept of metacognition- what-to-learn, how-to-learn, and when-to-learn, and the Scaffolding theory-a tutoring theory for a learner to learn a complex task, has been successfully developed to enhance the capability of Evolving Intelligent Systems (EIS) in processing non-stationary data streams. Three issues, namely uncertainty, temporal behaviour, unknown system order, are however uncharted by any existing McSLMs and all McSLMs in the literature are designed for classification problems. This paper proposes a novel McSLM, called Recurrent Interval-Valued Metacognitive Scaffolding Fuzzy Neural Network (RIVMcSFNN) and used to solve regression and time-series modelling problems from data streams. RIVMcSFNN presents a novel recurrent network architecture as a cognitive constituent, which features double local recurrent connections at both the hidden layer and the consequent layer. The new recurrent network architecture is driven by the interval-valued multivariate Gaussian function in the hidden node and the nonlinear Wavelet function in the consequent node. As with its predecessors, the RIVMcSFNN characterises an open structure, where it can automatically grow, prune, adjust, merge, recall its hidden node and can select relevant data samples on the fly using an online active learning methodology. The RIVMcSFNN is also equipped with the online dimensionality reduction technique to cope with the curse of dimensionality. All learning mechanisms are carried out in the single-pass and local learning mode and actualise the plug-and-play learning principle, which aims to minimise the use of pre-and/or post-training steps. The efficacy of our algorithm was tested using numerous data-driven modelling problems and comprehensive comparisons with its counterparts. The RIVMcSFNN demonstrated substantial improvements in both accuracy and complexity against existing variants of the McSLMs and EISs. (C) 2017 Elsevier B.V. All rights reserved.
机译:元认知脚手架学习机(McSLM)结合了元认知的概念(学习什么,如何学习以及何时学习)和脚手架理论(一种针对学习者学习复杂任务的辅导理论)已成功开发了,以增强演进的智能系统(EIS)处理非平稳数据流的能力。但是,任何现有的McSLM都无法确定三个问题,即不确定性,时间行为,未知的系统顺序,并且文献中的所有McSLM都是针对分类问题而设计的。本文提出了一种新颖的McSLM,称为递归区间值元认知支架模糊神经网络(RIVMcSFNN),用于解决数据流中的回归和时间序列建模问题。 RIVMcSFNN提出了一种新颖的递归网络体系结构作为认知成分,它在隐藏层和后续层都具有双重本地递归连接。新的递归网络体系结构由隐藏节点中的区间值多元高斯函数和后续节点中的非线性小波函数驱动。与其以前的产品一样,RIVMcSFNN具有开放结构的特征,它可以自动增长,修剪,调整,合并,调用其隐藏节点,并可以使用在线主动学习方法即时选择相关数据样本。 RIVMcSFNN还配备了在线降维技术,以应对维数的诅咒。所有学习机制都是在单次通过和本地学习模式下执行的,并实现了即插即用的学习原理,该原理旨在最大程度地减少训练前和/或训练后步骤的使用。我们使用大量数据驱动的建模问题以及与之对应的综合比较,对我们算法的有效性进行了测试。相对于McSLM和EIS的现有变体,RIVMcSFNN展示出了准确性和复杂性方面的显着提高。 (C)2017 Elsevier B.V.保留所有权利。

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