Artigo Produção Nacional

A neural net for extracting knowledge from natural language data bases

1992; Institute of Electrical and Electronics Engineers; Volume: 3; Issue: 5 Linguagem: Inglês

10.1109/72.159072

ISSN

1941-0093

Autores

A.F. Rocha, Ivan Rizzo Guilherme, M. Theoto, Ana María Kazue Miyadahira, Masatoshi Koizumi,

Tópico(s)

Rough Sets and Fuzzy Logic

Resumo

A model of a fuzzy neuron, one which increases the computational power of the artificial neuron, turning it also into a symbolic processing device, is presented. The model proposes the synapsis to be symbolically and numerically defined, by means of the assignment of tokens to the presynaptic and postsynaptic neurons. The matching or concatenation compatibility between these tokens is used to decide about the possible connections among neurons of a given net. The strength of the compatible synapsis is made dependent on the amount of the available presynaptic and postsynaptic tokens. The symbolic and numeric processing capacity of the new fuzzy neuron is used to build a neural net (JARGON) to disclose the existing knowledge in natural language databases such as medical files, sets of interviews and reports about engineering operations. >

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