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Fuzzy clustering-based neural network based on linear fitting residual-driven weighted fuzzy clustering and convolutional regularization strategy — Fan Bu (2024) | RDL Network
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Fuzzy clustering-based neural network based on linear fitting residual-driven weighted fuzzy clustering and convolutional regularization strategy
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Witold Pedrycz
University of Alberta
Fuzzy clustering-based neural network based on linear fitting residual-driven weighted fuzzy clustering and convolutional regularization strategy
Article
2024
en
Authors
+3 more
FB
Fan Bu
CZ
Congcong Zhang
EK
Eun-Hu Kim
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