会议专题

Morphological Component Analysis based Hybrid Approach for Prediction of Crude Oil Price

The prediction of crude oil price remains a challenging issue due to its complicated data generating process. Aside from the long perceived nonlinear data feature issue, recent empirical evidence suggests that the mixture of data characteristics in the time scale domain is another important data feature to be incorporated in the modeling process. This paper proposes a novel Morphological Component Analysis based hybrid methodology for modeling the multi scale heterogeneous data generating process. Empirical studies in the marker crude oil market show the significant performance improvement of the proposed algorithm, against benchmark models. The superior performance of the proposed model is attributed to the separation of the underlying distinct data features and the identification of appropriate model specifications for them. Meanwhile, the proposed methodology offers additional insights into the underlying data generating process and their economic viability.

Morphological Component Analysis Crude Oil Price Support Vector Regression Time Series Model Random Walk Model

Kaijian He Kin Keung Lai Jerome Yen

Department of Management Sciences City University of Hong Kong Tat Chee Avenue, Kowloon, Hong Kong School of Business Administration and Tourism Management The Chinese University of Hong Kong - Tung

国际会议

The Third International Joint Conference on Computational Science and Optimization(第三届计算科学与优化国际大会 CSO 2010)

黄山

英文

423-427

2010-05-28(万方平台首次上网日期,不代表论文的发表时间)