Abstract

Crude oil price forecasting is gaining increased interest globally. This interest is due mainly to the economic value attached to the product. For this reason, new forecasting methods are proposed in the literature. This paper proposes a novel technique for forecasting crude oil price based on Support Vector Machines (SVM). The study adopts the data on crude oil price of West Texas Intermediate (WTI) for its experimental purposes. This is because many studies have previously used this same data and it will afford a common basis for assessment. To evaluate the performance of the model, the study employs two measures, RMSE and MAE. These are used to compare the performance of the proposed technique and that of ARIMA and GARCH methods for the most efficient in crude oil price forecasting. The results reveal that the proposed method outperforms the other two in terms of forecast accuracy while it achieved a forecast error of 0.8684 that of ARIMA and GARCH were 0.9856 and 1.0134 respectively judging by their RMSE.

Highlights

  • Country and by extension the gross domestic product (GDP)

  • The results reveal that the proposed method outperforms the other two in terms of forecast accuracy while it achieved a forecast error of 0.8684 that of ARIMA and GARCH were 0.9856 and 1.0134 respectively judging by their Root Mean Square Error (RMSE)

  • The results revealed that GARCH-N model is the best model for forecasting for Brent while GARCH-G model is the best for forecasting of West Texas Intermediate (WTI) crude oil spot prices

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Summary

INTRODUCTION

Country and by extension the gross domestic product (GDP). GDP has been defined by (Chrystal & Lipsey) as Forecasting crude oil prices is important as it affects the total goods and services produced in a country within other key sectors of the economy including the stock a given year. One of the important areas in economic research prediction of crude oil prices a very imperative task to is forecasting the trend of price change of international decrease the impact of price fluctuations and assist crude oil. This makes it crucial to develop reliable models that mentioned reasons predicting crude oil is not a simple would assist adequately in forecasting the fluctuation of task. This is because of price increase of crude models as in

REVIEW OF RELATED LITERATURE
ARIMA Modeling
GARCH Modeling
Support Vector Machines
Proposed SVM Implementation
Evaluation of Volatility Forecasts
Results and Analysis
CONCLUSION
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