Título
[en] A STOCHASTIC MODEL BASED ON NEURAL NETWORKS
Autor
[pt] MARLEY MARIA BERNARDES REBUZZI VELLASCO
Autor
[pt] JUAN GUILLERMO LAZO LAZO
Autor
[pt] LUCIANA CONCEICAO DIAS CAMPOS
Resumo
[en] This paper presents the proposal of a generic
model of stochastic process based on neural networks, called
Neural Stochastic Process (NSP). The proposed model can be
applied to problems involving phenomena of stochastic behavior
and / or periodic features. Through the NSP’s neural networks
it is possible to capture the historical series’ behavior of these
phenomena without requiring any a priori information about
the series, as well as to generate synthetic time series with the
same probabilities as the historical series. The NSP was applied
to the treatment of monthly inflows series and the results
indicate that the generated synthetic series exhibit statistical
characteristics similar to historical series.
Catalogação
2013-02-14
Tipo
[pt] TEXTO
Formato
application/pdf
Idioma(s)
INGLÊS
Referência [en]
https://www.maxwell.vrac.puc-rio.br/colecao.php?strSecao=resultado&nrSeq=21157@2
Arquivos do conteúdo
NA ÍNTEGRA PDF