University of Taipei:Item 987654321/15766
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    University of Taipei > 理學院 > 資訊科學系 > 會議論文 >  Item 987654321/15766


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    题名: Forecasting Stock Market Indices Using RVC-SVR
    作者: Hung, Jui-Chung;洪瑞鍾;Huang, Jing-Xuan
    贡献者: 臺北市立大學資訊科學系
    关键词: Support vector regression;Forecasting index of stock market;Genetic algorithm;Real volatility clustering
    日期: 2014
    上传时间: 2017-07-24 11:27:30 (UTC+8)
    摘要: This paper addresses stock market forecasting indices. Generally, the stock market index exhibits clustering properties and irregular fluctuation. This paper presents the results of using real volatility clustering (RVC) to analyze the clustering in support vector regression (SVR), called “real volatility clustering of support vector regression” (RVC-SVR). Combining RVC and SVR causes the parameters of estimation to become more difficult to solve, thus constituting a highly nonlinear optimization problem accompanied by many local optima. Thus, the genetic algorithm (GA) is used to estimate parameters.

    Data from the Taiwan stock weighted index (Taiwan), Hang Seng index (Hong Kong), and NASDAQ (USA) were used as the simulation presented in this paper. Based on the simulation results, the stock indices forecasting accuracy performance is significantly improved when the SVR model considers the RVC.
    關聯: Advanced Approaches to Intelligent Information and Database Systems Studies in Computational Intelligence Volume 551, pp 89-96
    显示于类别:[資訊科學系] 會議論文

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