Matches in SemOpenAlex for { <https://semopenalex.org/work/W85384083> ?p ?o ?g. }
- W85384083 endingPage "391" @default.
- W85384083 startingPage "386" @default.
- W85384083 abstract "Autogressive moving average (ARMA) has been widely used to model processes that generate linear time-series. Recent research activities in forecasting with artificial neutral networks (ANNs) suggest that ANNs can be a promising alternative to the traditional ARMA structure. These linear models and ANNs are often compared with mixed conclusions in terms of the superiority in forecasting performance. This study was designed: a) to investigate a hybrid methodology that combines ANN and ARMA models; b) to resolve one of the most important problems in time series using ARMA structure and Box-Jenkins methodology, the identification of the model. In this paper we present a new procedure to predict time series using paradigms as: fuzzy system, neutral networks and evolutionary algorithm. Our goal is to obtain an expert system based on paradigms of artificial intelligence, so that the linear model can be identified automatically, without the necessity for a human expert to intervene. The obtained linear model will be combine with ANN, making and hybrid system that could outperform the forecasting result." @default.
- W85384083 created "2016-06-24" @default.
- W85384083 creator A5039951150 @default.
- W85384083 creator A5052775844 @default.
- W85384083 creator A5058407177 @default.
- W85384083 creator A5059976520 @default.
- W85384083 creator A5076166876 @default.
- W85384083 creator A5078289965 @default.
- W85384083 creator A5089029287 @default.
- W85384083 date "2005-12-16" @default.
- W85384083 modified "2023-09-26" @default.
- W85384083 title "Predicting time series with advanced hybrid systems" @default.
- W85384083 cites W1673053763 @default.
- W85384083 cites W1965236978 @default.
- W85384083 cites W1980218259 @default.
- W85384083 cites W2042506099 @default.
- W85384083 cites W2072074223 @default.
- W85384083 cites W2140394893 @default.
- W85384083 cites W2896916590 @default.
- W85384083 cites W2114001875 @default.
- W85384083 hasPublicationYear "2005" @default.
- W85384083 type Work @default.
- W85384083 sameAs 85384083 @default.
- W85384083 citedByCount "0" @default.
- W85384083 crossrefType "proceedings-article" @default.
- W85384083 hasAuthorship W85384083A5039951150 @default.
- W85384083 hasAuthorship W85384083A5052775844 @default.
- W85384083 hasAuthorship W85384083A5058407177 @default.
- W85384083 hasAuthorship W85384083A5059976520 @default.
- W85384083 hasAuthorship W85384083A5076166876 @default.
- W85384083 hasAuthorship W85384083A5078289965 @default.
- W85384083 hasAuthorship W85384083A5089029287 @default.
- W85384083 hasConcept C116834253 @default.
- W85384083 hasConcept C119247159 @default.
- W85384083 hasConcept C119857082 @default.
- W85384083 hasConcept C124101348 @default.
- W85384083 hasConcept C139502532 @default.
- W85384083 hasConcept C143724316 @default.
- W85384083 hasConcept C149782125 @default.
- W85384083 hasConcept C151406439 @default.
- W85384083 hasConcept C151730666 @default.
- W85384083 hasConcept C154945302 @default.
- W85384083 hasConcept C159877910 @default.
- W85384083 hasConcept C163175372 @default.
- W85384083 hasConcept C175706884 @default.
- W85384083 hasConcept C24338571 @default.
- W85384083 hasConcept C2780009758 @default.
- W85384083 hasConcept C31972630 @default.
- W85384083 hasConcept C33923547 @default.
- W85384083 hasConcept C41008148 @default.
- W85384083 hasConcept C50644808 @default.
- W85384083 hasConcept C58166 @default.
- W85384083 hasConcept C59822182 @default.
- W85384083 hasConcept C74883015 @default.
- W85384083 hasConcept C82257358 @default.
- W85384083 hasConcept C86803240 @default.
- W85384083 hasConceptScore W85384083C116834253 @default.
- W85384083 hasConceptScore W85384083C119247159 @default.
- W85384083 hasConceptScore W85384083C119857082 @default.
- W85384083 hasConceptScore W85384083C124101348 @default.
- W85384083 hasConceptScore W85384083C139502532 @default.
- W85384083 hasConceptScore W85384083C143724316 @default.
- W85384083 hasConceptScore W85384083C149782125 @default.
- W85384083 hasConceptScore W85384083C151406439 @default.
- W85384083 hasConceptScore W85384083C151730666 @default.
- W85384083 hasConceptScore W85384083C154945302 @default.
- W85384083 hasConceptScore W85384083C159877910 @default.
- W85384083 hasConceptScore W85384083C163175372 @default.
- W85384083 hasConceptScore W85384083C175706884 @default.
- W85384083 hasConceptScore W85384083C24338571 @default.
- W85384083 hasConceptScore W85384083C2780009758 @default.
- W85384083 hasConceptScore W85384083C31972630 @default.
- W85384083 hasConceptScore W85384083C33923547 @default.
- W85384083 hasConceptScore W85384083C41008148 @default.
- W85384083 hasConceptScore W85384083C50644808 @default.
- W85384083 hasConceptScore W85384083C58166 @default.
- W85384083 hasConceptScore W85384083C59822182 @default.
- W85384083 hasConceptScore W85384083C74883015 @default.
- W85384083 hasConceptScore W85384083C82257358 @default.
- W85384083 hasConceptScore W85384083C86803240 @default.
- W85384083 hasLocation W853840831 @default.
- W85384083 hasOpenAccess W85384083 @default.
- W85384083 hasPrimaryLocation W853840831 @default.
- W85384083 hasRelatedWork W2031518108 @default.
- W85384083 hasRelatedWork W2040198354 @default.
- W85384083 hasRelatedWork W2055877700 @default.
- W85384083 hasRelatedWork W2059804518 @default.
- W85384083 hasRelatedWork W2080690725 @default.
- W85384083 hasRelatedWork W2082133475 @default.
- W85384083 hasRelatedWork W2088218958 @default.
- W85384083 hasRelatedWork W2088837885 @default.
- W85384083 hasRelatedWork W2103251750 @default.
- W85384083 hasRelatedWork W2103710884 @default.
- W85384083 hasRelatedWork W2110510303 @default.
- W85384083 hasRelatedWork W2160849785 @default.
- W85384083 hasRelatedWork W2293444041 @default.
- W85384083 hasRelatedWork W2294702910 @default.
- W85384083 hasRelatedWork W2733042576 @default.