A hybrid linear-neural model for time series forecasting.

M C Medeiros, A Veiga
Author Information
  1. M C Medeiros: Department of Electrical Engineering, Catholic University of Rio de Janeiro, Rio de Janeiro, Brazil.

Abstract

This paper considers a linear model with time varying parameters controlled by a neural network to analyze and forecast nonlinear time series.We show that this formulation, called neural coefficient smooth transition autoregressive (NCSTAR) model, is in close relation to the threshold autoregressive (TAR) model and the smooth transition autoregressive (STAR) model with the advantage of naturally incorporating linear multivariate thresholds and smooth transitions between regimes. In our proposal, the neuralnetwork output is used to induce a partition of the input space, with smooth and multivariate thresholds. This also allows the choice of good initial values for the training algorithm.

Word Cloud

Created with Highcharts 10.0.0modelsmoothtimeautoregressivelinearneuralseriestransitionmultivariatethresholdspaperconsidersvaryingparameterscontrollednetworkanalyzeforecastnonlinearWeshowformulationcalledcoefficientNCSTARcloserelationthresholdTARSTARadvantagenaturallyincorporatingtransitionsregimesproposalneuralnetworkoutputusedinducepartitioninputspacealsoallowschoicegoodinitialvaluestrainingalgorithmhybridlinear-neuralforecasting

Similar Articles

Cited By