Detalhes do Documento

Weighted cross-validation evolving artificial neural networks to forecast time ...

Autor(es): Peralta Donate, Juan cv logo 1 ; Cortez, Paulo, 1971- cv logo 2 ; Gutierrez Sanchez, German cv logo 3 ; Sanchis de Miguel, Araceli cv logo 4

Data: 2011

Identificador Persistente: http://hdl.handle.net/1822/14844

Origem: RepositóriUM - Universidade do Minho

Assunto(s): Evolutionary computation; Genetic algorithms; Artificial neural networks; Time series; Forecasting; Ensembles


Descrição
Accurate time series forecasting is a key tool to support decision making and for planning our day to-day activities. In recent years, several Works in the literature have adopted evolving artificial neural networks (EANN) for forecasting applications. EANNs are particularly appealing due to their ability to model an unspecified non-linear relationship between time series variables. In this Work, a novel approach for EANN forecasting systems is proposed, where a weighted cross-validation is used to build an ensemble of neural networks. Several experiments Were held, using a set of six real-world time series (from different domains) and comparing both the weighted and standard cross-validation variants. Overall, the weighted cross-validation provided the best forecasting results.
Tipo de Documento Artigo
Idioma Inglês
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Fundação para a Ciência e a Tecnologia Universidade do Minho   Governo Português Ministério da Educação e Ciência Programa Operacional da Sociedade do Conhecimento União Europeia