A Hybrid Forecasting Method for Anticipating Stock Market Trends via a Soft- Thresholding De-noise Model and Support Vector Machine (SVM)
Autour(s)
- Lixuan Zhang, Chang Li, Lee Chen, Don Chen, Zheng Xiang, Bing Pan
Abstract
Stock market time series are inherently noisy. Although support vector machine has the noise-tolerant property, the noised data still affect the accuracy of classification. Compared with other studies only classify the movements of stock market into up-trend and down-trend which does not concern the noised data, this study uses wavelet soft-threshold de-noising model to classify the noised data into stochastic trend. In the experiment, we remove the stochastic trend data from the SSE Composite Index and get de-noised training data for SVM. Then we use the de-noised data to train SVM and to forecast the testing data. The hit ratio is 60.12%. Comparing with 54.25% hit ratio that is forecasted by noisy training data SVM, we enhance the forecasting performance.