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dc.date.accessioned 2012-11-08T14:36:48Z
dc.date.available 2012-11-08T14:36:48Z
dc.date.issued 2006-08
dc.identifier.uri http://sedici.unlp.edu.ar/handle/10915/23879
dc.description.abstract Recently, novel learning algorithms such as Support Vector Regression (SVR) and Neural Networks (NN) have received increasing attention in forecasting and time series prediction, offering attractive theoretical properties and successful applications in several real world problem domains. Commonly, time series are composed of the combination of regular and irregular patterns such as trends and cycles, seasonal variations, level shifts, outliers or pulses and structural breaks, among others. Conventional parametric statistical methods are capable of forecasting a particular combination of patterns through ex ante selection of an adequate model form and specific data preprocessing. Thus, the capability of semi-parametric methods from computational intelligence to predict basic time series patterns without model selection and preprocessing is of particular relevance in evaluating their contribution to forecasting. This paper proposes an empirical comparison between NN and SVR models using radial basis function (RBF) and linear kernel functions, by analyzing their predictive power on five artificial time series: stationary, additive seasonality, linear trend, linear trend with additive seasonality, and linear trend with multiplicative seasonality. Results obtained show that RBF SVR models have problems in extrapolating trends, while NN and linear SVR models without data preprocessing provide robust accuracy across all patterns and clearly outperform the commonly used RBF SVR on trended time series. en
dc.language en es
dc.subject learning algorithms en
dc.subject Neural nets es
dc.subject comparison en
dc.subject Algorithms es
dc.subject Radial Basis Functions (RBF) en
dc.title A study on the ability of support vector regression and neural networks to forecast basic time series patterns en
dc.type Objeto de conferencia es
sedici.identifier.isbn 0-387-34654-6 es
sedici.creator.person Crone, Sven F. es
sedici.creator.person Weber, Richard es
sedici.creator.person Guajardo, José es
sedici.description.note IFIP International Conference on Artificial Intelligence in Theory and Practice - Neural Nets es
sedici.subject.materias Ciencias Informáticas es
sedici.description.fulltext true es
mods.originInfo.place Red de Universidades con Carreras en Informática (RedUNCI) es
sedici.subtype Objeto de conferencia es
sedici.rights.license Creative Commons Attribution-NonCommercial-ShareAlike 2.5 Argentina (CC BY-NC-SA 2.5)
sedici.rights.uri http://creativecommons.org/licenses/by-nc-sa/2.5/ar/
sedici.date.exposure 2006-08
sedici.relation.event 19 th IFIP World Computer Congress - WCC 2006 es
sedici.description.peerReview peer-review es


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Creative Commons Attribution-NonCommercial-ShareAlike 2.5 Argentina (CC BY-NC-SA 2.5) Excepto donde se diga explícitamente, este item se publica bajo la siguiente licencia Creative Commons Attribution-NonCommercial-ShareAlike 2.5 Argentina (CC BY-NC-SA 2.5)