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Fontenla-Romero et al., 2018 - Google Patents

An incremental non-iterative learning method for one-layer feedforward neural networks

Fontenla-Romero et al., 2018

Document ID
9834507338842348704
Author
Fontenla-Romero O
Perez-Sanchez B
Guijarro-Berdinas B
Publication year
Publication venue
Applied Soft Computing

External Links

Snippet

In machine learning literature, and especially in the literature referring to artificial neural networks, most methods are iterative and operate in batch mode. However, many of the standard algorithms are not suitable for efficiently managing the emerging large-scale data …
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