DocumentCode :
3777332
Title :
Learning part-based dictionaries by NMF for crude oil market prediction
Author :
Xueyan Mei; Caiyang Xu; Lei Liu; Yinan Yang
Author_Institution :
Department of mathematics, University of Oklahoma, Norman, USA
Volume :
1
fYear :
2015
Firstpage :
624
Lastpage :
628
Abstract :
Since the crude oil market can make an impact to global economics, it is important to develop some effective approaches to forecast crude oil price and its volatility. In this paper, the goal is to predict the tendency of crude oil future price from ten selected features that potentially affect the crude oil price. Currently, the most popular and robust prediction methods are based on machine learning, such as artificial neural networks, support vector machine, and logistic regression, which are classifiers trained from the training data and used to make predictions for the new data. However, the representations of the data are also crucial to the performance of the classifier training. In this paper, we use non-negative matrix factorization techniques to capture the intrinsic features of the crude oil data, which leads to a part-based dictionary learning problem. Support vector machine (SVM) is trained on the data encoded by the elements from the dictionary in order to predict the tendency of crude oil future price. The experiment shows that the proposed framework is useful for crude oil market prediction.
Keywords :
"Dictionaries","Support vector machines","Biological system modeling","Training data","Principal component analysis","Matrix decomposition","Artificial neural networks"
Publisher :
ieee
Conference_Titel :
Computer Science and Network Technology (ICCSNT), 2015 4th International Conference on
Type :
conf
DOI :
10.1109/ICCSNT.2015.7490823
Filename :
7490823
Link To Document :
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