Bayesian model averaging of load demand forecasts from neural network models

Hassan, S. and Khosravi, A. and Jaafar, J. (2013) Bayesian model averaging of load demand forecasts from neural network models. In: UNSPECIFIED.

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Abstract

Creating a set of a number of neural network (NN) models in an ensemble and accumulating them can achieve better overview capability as compared to single neural network. Neural network ensembles are designed to provide solutions to particular problems. Many researchers and academicians have adopted this NN ensemble technique, especially in machine learning, and has been applied in various fields of engineering, medicine and information technology. This paper present a robust aggregation methodology for load demand forecasting based on Bayesian Model Averaging of a set of neural network models in an ensemble. This paper estimate a vector of coefficient for individual NN models' forecasts using validation data-set. These coefficients, also known as weights, are equal to posterior probabilities of the models generating the forecasts. These BMA weights are then used in combining forecasts generated from NN models with test data-set. By comparing the Bayesian results with the Simple Averaging method, it was observed that benefits are obtained by utilizing an advanced method like BMA for forecast combinations. © 2013 IEEE.

Item Type: Conference or Workshop Item (UNSPECIFIED)
Impact Factor: cited By 3
Uncontrolled Keywords: Bayesian model averaging; Combining forecasts; Ensemble techniques; Forecast combinations; Load forecasting; Neural network ensembles; Neural network model; Posterior probability, Bayesian networks; Cybernetics; Electric load forecasting; Information technology; Neural networks, Forecasting
Depositing User: Ms Sharifah Fahimah Saiyed Yeop
Date Deposited: 29 Mar 2022 14:05
Last Modified: 29 Mar 2022 14:05
URI: http://scholars.utp.edu.my/id/eprint/32531

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