A hybrid forecasting methodology using feature selection and support vector regression

Guajardo, J.; Miranda J.; Weber R.

Keywords: model, systems, models, learning, selection, support, machines, regression, networks, forecasting, analysis, vector, methods, mathematical, Neural, feature, Iterative, (SVM)

Abstract

Various techniques have been proposed to forecast a given time series. Models from the ARIMA family have been successfully used as well as regression approaches based on e.g. linear, non-linear regression, neural networks, and Support Vector Machines. What makes the difference in many real-world applications, however, is not the technique but an appropriated forecasting methodology. Here we present such a methodology for the regression-based forecasting approach. A hybrid system is presented that iteratively selects the most relevant features and constructs the best regression model given certain criteria. We present a particular technique for feature selection as well as for model construction. The methodology, however, is a generic one providing the opportunity to employ alternative approaches within our framework.

Más información

Título de la Revista: 1604-2004: SUPERNOVAE AS COSMOLOGICAL LIGHTHOUSES
Volumen: 2005
Editorial: ASTRONOMICAL SOC PACIFIC
Fecha de publicación: 2005
Página de inicio: 341
Página final: 346
URL: http://www.scopus.com/inward/record.url?eid=2-s2.0-33847005948&partnerID=q2rCbXpz