Volume 21, Issue 3 (2014)                   EIJH 2014, 21(3): 1-16 | Back to browse issues page

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Abrishami H, Bourbour F, Aghajani M. Prediction of Natural Gas Price Using GMDH Type Neural Network:A Case Study of USA Market. EIJH 2014; 21 (3) :1-16
URL: http://eijh.modares.ac.ir/article-27-5139-en.html
1- Professor in Faculty of Economics, University of Tehran
2- MA in economics,University of Tehran, Oil company employees.
3- PhD student in economics, Allameh Tabatabaee University.
Abstract:   (5003 Views)
In this paper, a model based on GMDH Type Neural Network, is used to predict gas price in the spot market while using oil spot market price, gas spot market price, gas future market price, oil future market price and average temperature of the weather. The results suggest that GMDH Neural Network model, according to the Root Mean Squared Error (RMSE) and Direction statistics (Dstat) statistics are more effective than OLS method. Also, first lag of gas price in the future market is the most efficient variable in predicting gas price in spot market.
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Received: 2012/12/10 | Accepted: 2014/01/27 | Published: 2015/07/23

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