Linguistic neurocomputing: the design of a neural networks in the framework of fuzzy sets
Academic Article
Publication Date:
2002
abstract:
A process of information granulation takes care of an enormous flood of
numerical details that becomes summarized and hidden (encapsulated in the
form of fuzzy sets) at the time of the design of a neural network.
Information granules play an important role in the development of neural
networks. First, they substantially reduce the amount of training as the
designed network needs to deal with a significantly reduced and highly
compressed number of data that falls far below the size of the original
training set. The same granulation mechanism delivers some highly advantageous regularization properties. Second, information granules
support the design of more transparent and easily interpretable neural networks.
The necessary effect of information granulation is accomplished in the
framework of fuzzy sets, especially via context-sensitive (conditional) fuzzy clustering. Subsequently, the resulting neural network becomes an
architecture with non numeric connections. A thorough analysis of results
of computing carried out in the setting of linguistic neurocomputing is also given.
Iris type:
01.01 Articolo in rivista
Keywords:
reti neurali; fuzzy sets; fuzzy clustering; descrizione
List of contributors:
Bortolan, Giovanni
Published in: