Non-fixed and asymmetrical margin approach to stock market prediction using Support Vector Regression

Neural Information Processing, 2002. ICONIP '02. Proceedings of the 9th International Conference(2002)

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摘要
Recently, support vector regression (SVR) has been applied to financial time series prediction. Typical characteristics of financial time series are non-stationary and noisy in nature. The volatility, usually time-varying, of the time series is therefore some valuable information about the series. Previously, we had proposed to use the volatility to adaptively change the width of the margin of SVR. We have noticed that upside margin and downside margin do not necessary be the same, and we have observed that their choice would affect the upside risk, downside risk and as well as the overall prediction result. In this paper, we introduce a novel approach to adapt the asymmetrical margins using momentum. We applied and compared this method to predict the Hang Seng Index and Dow Jones Industrial Average.
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关键词
dow jones,asymmetrical margin,forecasting theory,volatility,learning (artificial intelligence),support vector regression,stock market prediction,hang seng index,stock markets,financial time series,support vector machine,time series,support vector machines,learning artificial intelligence
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