A turning point prediction method of stock price based on RVFL-GMDH and chaotic time series analysis

被引:0
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作者
Junde Chen
Shuangyuan Yang
Defu Zhang
Y. A. Nanehkaran
机构
[1] Xiamen University,School of Informatics
来源
关键词
Turning point prediction; Chaotic time series; Phase space reconstruction; RVFL-GMDH; Stock market;
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学科分类号
摘要
Stock market prediction is extremely important for investors because knowing the future trend of stock prices will reduce the risk of investing capital for profit. Therefore, seeking an accurate, fast, and effective approach to identify the stock market movement is of great practical significance. This study proposes a novel turning point prediction method for the time series analysis of stock price. Through the chaos theory analysis and application, we put forward a new modeling approach for the nonlinear dynamic system. The turning indicator of time series is computed firstly; then, by applying the RVFL-GMDH model, we perform the turning point prediction of the stock price, which is based on the fractal characteristic of a strange attractor with an infinite self-similar structure. The experimental findings confirm the efficacy of the proposed procedure and have become successful for the intelligent decision support of the stock trading strategy.
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页码:2693 / 2718
页数:25
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