2024
DOI: 10.1007/s44244-024-00017-7
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Universal approximation property of stochastic configuration networks for time series

Jin-Xi Zhang,
Hangyi Zhao,
Xuefeng Zhang

Abstract: For the purpose of processing sequential data, such as time series, and addressing the challenge of manually tuning the architecture of traditional recurrent neural networks (RNNs), this paper introduces a novel approach-the Recurrent Stochastic Configuration Network (RSCN). This network is constructed based on the random incremental algorithm of stochastic configuration networks. Leveraging the foundational structure of recurrent neural networks, our learning model commences with a modest-scale recurrent neur… Show more

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