Deep learning classifier based on nefclass neural network
DOI:
https://doi.org/10.18372/1990-5548.49.11242Keywords:
Fuzzy classifiers, deep learning, NEFCLASS neural network Restricted Boltzman MachineAbstract
It is proposed a new class of fuzzy classifiers. It is a deep learning classifier based onNEFCLASS neural network. The pre-learning is supplied with help of Restricted Boltzman MachineReferences
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