Title :
An SVM-based approach for stock market trend prediction
Author :
Yuling Lin ; Haixiang Guo ; Jinglu Hu
Author_Institution :
Grad. Sch. of Inf., Production & Syst., Waseda Univ., Kitakyushu, Japan
Abstract :
In this paper, an SVM-based approach is proposed for stock market trend prediction. The proposed approach consists of two parts: feature selection and prediction model. In the feature selection part, a correlation-based SVM filter is applied to rank and select a good subset of financial indexes. And the stock indicators are evaluated based on the ranking. In the prediction model part, a so called quasi-linear SVM is applied to predict stock market movement direction in term of historical data series by using the selected subset of financial indexes as the weighted inputs. The quasi-linear SVM is an SVM with a composite quasi-linear kernel function, which approximates a nonlinear separating boundary by multi-local linear classifiers with interpolation. Experimental results on Taiwan stock market datasets demonstrate that the proposed SVM-based stock market trend prediction method produces better generalization performance over the conventional methods in terms of the hit ratio. Moreover, the experimental results also show that the proposed SVM-based stock market trend prediction system can find out a good subset and evaluate stock indicators which provide useful information for investors.
Keywords :
approximation theory; financial data processing; interpolation; pattern classification; stock markets; support vector machines; SVM-based stock market trend prediction method; Taiwan stock market datasets; composite quasi-linear kernel function; correlation-based SVM filter; feature prediction model; feature selection model; financial indexes; multilocal linear classifiers; nonlinear separating boundary; quasi-linear SVM; stock indicators; stock market movement direction prediction; Forecasting; Indexes; Kernel; Market research; Predictive models; Stock markets; Support vector machines;
Conference_Titel :
Neural Networks (IJCNN), The 2013 International Joint Conference on
Conference_Location :
Dallas, TX
Print_ISBN :
978-1-4673-6128-6
DOI :
10.1109/IJCNN.2013.6706743