2014
DOI: 10.1016/j.eswa.2014.04.035
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Nonlinear time series forecasting with Bayesian neural networks

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Cited by 57 publications
(36 citation statements)
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“…Weight decay and Laplace function approaches are well-known for function [7,28]. Essentially, the weight decay is given as a natural interpretation in the Gaussian approximation of Bayesian learning introduced by Mackay [2].…”
Section: Neural Network Structuresmentioning
confidence: 99%
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“…Weight decay and Laplace function approaches are well-known for function [7,28]. Essentially, the weight decay is given as a natural interpretation in the Gaussian approximation of Bayesian learning introduced by Mackay [2].…”
Section: Neural Network Structuresmentioning
confidence: 99%
“…In spite of incorporating many complicated concepts in its structure, Genetic MC can be implemented to the nonlinear regression and time series analyses easily, and then it allows estimating the robust models in context of training BNNs. Essentially, this novel approach is based on the hybrid learning procedures proposed by Kocadaglı [27], Kocadaglı and Asikgil [28] in which GAs is integrated with MCMC methods for Gaussian approach of BNNs. However, in this study, Genetic MC is adapted to the full Bayesian approach instead of Gaussian approach.…”
Section: Motivation and Overviewmentioning
confidence: 99%
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“…Wang et al (2015) propose the use of an adaptive differential evolution algorithm to select appropriate initial connection weights and thresholds. Kocadaǧlı and Aşıkgil (2014) use a Bayesian inference approach to train a ANN. An evolutionary Monte Carlo algorithm is proposed.…”
Section: Time Series Analysismentioning
confidence: 99%
“…Estes podem ser classificados em, basicamente, quatro categorias: modelos estatísticos (que podem ser subdivididos em modelos de estatística clássica [1,3] e de estatística bayesiana [4,5]), modelos de inteligência computacional (que podem ser subdivididos em modelos de lógica fuzzy [6,7], de redes neurais [8,9], de support vector regression [10,11] e outros), modelos híbridos (que combinam diferentes modelos, e.g. [12,13]), e outros tipos de modelos (e.g. judgemental forecasting [14]).…”
Section: Introductionunclassified