Title :
Wavelet-Based Relevance Vector Machines for Stock Index Forecasting
Author :
Huang, Shian-Chang ; Wu, Tung-Kuang
Author_Institution :
Nat. Changhua Univ. of Educ., Changhua
Abstract :
Relevance vector machine (RVM) is a Bayesian version of the support vector machine, which with a sparse model representation, has appeared as a powerful tool for time series forecasting. RVM has demonstrated better performance over other methods such as neural networks or ARIMA-based models. This paper proposes a wavelet-based RVM model to forecast stock indices. The time series of explanatory variables are decomposed by the wavelet basis, and the extracted time scale features served as inputs of a RVM to perform the nonparametric regression and forecasting. Compared with the traditional GARCH model forecasts, the new method shows superior performance, and reduces the root-mean-squared forecasting errors by nearly one order.
Keywords :
autoregressive moving average processes; economic forecasting; forecasting theory; mean square error methods; neural nets; nonparametric statistics; regression analysis; stock markets; support vector machines; time series; wavelet transforms; ARIMA-based models; Bayesian version; neural networks; nonparametric forecasting; nonparametric regression; root-mean-squared forecasting error; sparse model representation; stock index forecasting; support vector machine; time series forecasting; traditional GARCH model; wavelet-based relevance vector machines; Economic forecasting; Feature extraction; Information analysis; Neural networks; Power generation economics; Predictive models; Risk analysis; Support vector machines; Time series analysis; Wavelet analysis;
Conference_Titel :
Neural Networks, 2006. IJCNN '06. International Joint Conference on
Conference_Location :
Vancouver, BC
Print_ISBN :
0-7803-9490-9
DOI :
10.1109/IJCNN.2006.246738