Article ID Journal Published Year Pages File Type
385807 Expert Systems with Applications 2011 10 Pages PDF
Abstract

Support vector regression has been applied to stock market forecasting problems. However, it is usually needed to tune manually the hyperparameters of the kernel functions. Multiple-kernel learning was developed to deal with this problem, by which the kernel matrix weights and Lagrange multipliers can be simultaneously derived through semidefinite programming. However, the amount of time and space required is very demanding. We develop a two-stage multiple-kernel learning algorithm by incorporating sequential minimal optimization and the gradient projection method. By this algorithm, advantages from different hyperparameter settings can be combined and overall system performance can be improved. Besides, the user need not specify the hyperparameter settings in advance, and trial-and-error for determining appropriate hyperparameter settings can then be avoided. Experimental results, obtained by running on datasets taken from Taiwan Capitalization Weighted Stock Index, show that our method performs better than other methods.

Research highlights► A multi-kernel regression model is developed and applied to stock forecasting. ► The user need not try different hyperparameter settings by trial-and-error. ► Advantages from different hyperparameter settings are combined automatically. ► The proposed method is effective in terms of accuracy, speed, and space.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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