한국지능시스템학회:학술대회논문집 (Proceedings of the Korean Institute of Intelligent Systems Conference)
- 한국퍼지및지능시스템학회 2003년도 ISIS 2003
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- Pages.338-341
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- 2003
Chaotic Forecast of Time-Series Data Using Inverse Wavelet Transform
- Matsumoto, Yoshiyuki (Tohwa University Multimedia Department) ;
- Yabuuchi, Yoshiyuki (Shimonoseki City University Economics Department) ;
- Watada, Junzo (Waseda University Graduate School of Information, Production and System)
- 발행 : 2003.09.01
초록
Recently, the chaotic method is employed to forecast a near future of uncertain phenomena. This method makes it possible by restructuring an attractor of given time-series data in multi-dimensional space through Takens' embedding theory. However, many economical time-series data are not sufficiently chaotic. In other words, it is hard to forecast the future trend of such economical data on the basis of chaotic theory. In this paper, time-series data are divided into wave components using wavelet transform. It is shown that some divided components of time-series data show much more chaotic in the sense of correlation dimension than the original time-series data. The highly chaotic nature of the divided component enables us to precisely forecast the value or the movement of the time-series data in near future. The up and down movement of TOPICS value is shown so highly predicted by this method as 70%.