2024
DOI: 10.3390/e26050368
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Learning in Deep Radial Basis Function Networks

Fabian Wurzberger,
Friedhelm Schwenker

Abstract: Learning in neural networks with locally-tuned neuron models such as radial Basis Function (RBF) networks is often seen as instable, in particular when multi-layered architectures are used. Furthermore, universal approximation theorems for single-layered RBF networks are very well established; therefore, deeper architectures are theoretically not required. Consequently, RBFs are mostly used in a single-layered manner. However, deep neural networks have proven their effectiveness on many different tasks. In thi… Show more

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