To Build A Forecasting Model To Predict Steel Billet Cash Prices Traded in the London Metal Exchange

The forecasting of asset prices using time series analysis techniques has focussed a great deal on the accuracy of the forecasting models. Among the traditional techniques of time series forecasting, the Box Jenkins Autoregressive Integrated Moving Average (ARIMA) models have been one of the most wi...

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Main Author: Chelladurai, Vinoth babu
Format: Dissertation (University of Nottingham only)
Language:English
Published: 2010
Online Access:https://eprints.nottingham.ac.uk/23776/
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author Chelladurai, Vinoth babu
author_facet Chelladurai, Vinoth babu
author_sort Chelladurai, Vinoth babu
building Nottingham Research Data Repository
collection Online Access
description The forecasting of asset prices using time series analysis techniques has focussed a great deal on the accuracy of the forecasting models. Among the traditional techniques of time series forecasting, the Box Jenkins Autoregressive Integrated Moving Average (ARIMA) models have been one of the most widely used linear time series models. There had been growing number of research indicating that novel techniques like Artificial Neural Networks (ANN) can be a promising model for forecasting and could prove to be a better alternative to the traditional models. The aim of this dissertation is to build a forecasting model for predicting the steel billet cash (spot) prices traded in the London Metal Exchange using the time series data of the steel billet cash prices from the period of September 2008 to June 2010. In order to achieve the aim, the R software is used to identify the appropriate ARIMA model specification, model validation and forecasting. In order to predict the time series in ANN model the Matlab software is used. The forecasting performance of the selected ARIMA and ANN models are compared in order to justify a better model for predicting steel billet cash prices. The Box-Jenkins ARIMA modelling methodology adopted indicated that the first order differencing model was weak form stationary and ARIMA (2,1,2) model was comparatively better fit than other models for both Mediterranean and Far-East steel prices. However the lack of model stability for different sub-period data limited the forecasting confidence of the selected model. The forecasting performance of ANN was limited with the measure of directional accuracy being lower for the best fit ANN architecture which could be attributed to the non-stationary nature of the steel prices and the random behaviour of steel prices.
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format Dissertation (University of Nottingham only)
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language English
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spelling nottingham-237762018-01-24T19:22:55Z https://eprints.nottingham.ac.uk/23776/ To Build A Forecasting Model To Predict Steel Billet Cash Prices Traded in the London Metal Exchange Chelladurai, Vinoth babu The forecasting of asset prices using time series analysis techniques has focussed a great deal on the accuracy of the forecasting models. Among the traditional techniques of time series forecasting, the Box Jenkins Autoregressive Integrated Moving Average (ARIMA) models have been one of the most widely used linear time series models. There had been growing number of research indicating that novel techniques like Artificial Neural Networks (ANN) can be a promising model for forecasting and could prove to be a better alternative to the traditional models. The aim of this dissertation is to build a forecasting model for predicting the steel billet cash (spot) prices traded in the London Metal Exchange using the time series data of the steel billet cash prices from the period of September 2008 to June 2010. In order to achieve the aim, the R software is used to identify the appropriate ARIMA model specification, model validation and forecasting. In order to predict the time series in ANN model the Matlab software is used. The forecasting performance of the selected ARIMA and ANN models are compared in order to justify a better model for predicting steel billet cash prices. The Box-Jenkins ARIMA modelling methodology adopted indicated that the first order differencing model was weak form stationary and ARIMA (2,1,2) model was comparatively better fit than other models for both Mediterranean and Far-East steel prices. However the lack of model stability for different sub-period data limited the forecasting confidence of the selected model. The forecasting performance of ANN was limited with the measure of directional accuracy being lower for the best fit ANN architecture which could be attributed to the non-stationary nature of the steel prices and the random behaviour of steel prices. 2010 Dissertation (University of Nottingham only) NonPeerReviewed application/pdf en https://eprints.nottingham.ac.uk/23776/1/Vinothbabu_MBAProject.pdf Chelladurai, Vinoth babu (2010) To Build A Forecasting Model To Predict Steel Billet Cash Prices Traded in the London Metal Exchange. [Dissertation (University of Nottingham only)] (Unpublished)
spellingShingle Chelladurai, Vinoth babu
To Build A Forecasting Model To Predict Steel Billet Cash Prices Traded in the London Metal Exchange
title To Build A Forecasting Model To Predict Steel Billet Cash Prices Traded in the London Metal Exchange
title_full To Build A Forecasting Model To Predict Steel Billet Cash Prices Traded in the London Metal Exchange
title_fullStr To Build A Forecasting Model To Predict Steel Billet Cash Prices Traded in the London Metal Exchange
title_full_unstemmed To Build A Forecasting Model To Predict Steel Billet Cash Prices Traded in the London Metal Exchange
title_short To Build A Forecasting Model To Predict Steel Billet Cash Prices Traded in the London Metal Exchange
title_sort to build a forecasting model to predict steel billet cash prices traded in the london metal exchange
url https://eprints.nottingham.ac.uk/23776/