会议专题

Stock Fluctuations Anomaly Detection Based on Wavelet Modulus Mazima

Stock fluctuations anomaly increase the uncertainty and investment risk in the stock market, is an important element in financial research. In this paper, wavelet modulus maxima method is used in the detection of abnormal stock analysis. It is obtained based on the irregular sampling in the multi-scale wavelet transform. It overcomes the localized limitation about traditional Fourier analysis in time and frequency domains. Experimental results show that the wavelet modulus maxima method can not only depict the position of the point mutation in the signals but also capture the singular points of the stock unusual fluctuations quickly and accurately.

Stock Abnormal Wavelet Modulus Mazima

Zhijun Fang Guihua Luo Shenghua Xu Fengchang Fei

Institute of Digital Media, School of Information Technology, Jiangxi University of Finance & Economics, Nanchang, China

国际会议

The Second International Conference on Business Intelligence and Financial Engineering(BIFE 2009)(第二届商务智能与金融工程国际会议)

北京

英文

360-363

2009-07-24(万方平台首次上网日期,不代表论文的发表时间)