Data Mining Methods for Crude Oil Market Analysis and Forecast

Data Mining Methods for Crude Oil Market Analysis and Forecast

Author: 
Bao, Yejing
Place: 
Hershey, PA
Publisher: 
IGI Global
Date published: 
2010
Record type: 
Responsibility: 
Pang, Ye, jt. author
Wang, Shouyang, jt. author
Editor: 
Syvajarvi, Antti
Journal Title: 
Data Mining in Public and Private Sectors
Source: 
Data Mining in Public and Private Sectors
Abstract: 

In this study, two data mining based models are proposed for crude oil price analysis and forecasting, one of which is a hybrid wavelet decomposition and support vector Machine (SVM) model and the other is an OECD petroleum inventory levels based wavelet neural network model (WNN). These models utilize support vector regression (SVR) and artificial neural network (ANN) technique for crude oil prediction and are made comparison with other forecasting models, respectively. Empirical results show that the proposed nonlinear models can improve the performance of oil price forecasting. The findings of this research are useful for private organizations and governmental agencies to take either preventive or corrective actions to reduce the impact of large fluctuation in crude oil markets, and demonstrate that the implications of data mining in public and private sectors and government agencies are promising for analyzing and predicting on the basis of data.

Series: 
Advances in Data Mining and Database Management

CITATION: Bao, Yejing. Data Mining Methods for Crude Oil Market Analysis and Forecast edited by Syvajarvi, Antti . Hershey, PA : IGI Global , 2010. Data Mining in Public and Private Sectors - Available at: https://library.au.int/frdata-mining-methods-crude-oil-market-analysis-and-forecast