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Forecasting stock market trends using support vector regression and perceptually important points

机译:预测股票市场趋势使用支持向量回归和感知重要观点

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Intelligent stock trading systems use soft computing techniques in order to make trading decisions in the stock market. However, the fluctuations of the stock price make it difficult for the trading system to discover the underlying trends. In order to enable the trading system for trend prediction, this paper suggests using perceptually important points as a turning point prediction framework. Perceptually important points are utilized as a high-level representation for the stock price time series to decompose the price into several segments of uptrends and downtrends and define a trading signal which is an indicator of the current trend. A support vector regression model is trained on this high-level data to make trading decisions based on predicted trading signal. The performance of the proposed trading system is compared with three other trading systems on five of the top performing stocks in Tehran Stock Exchange, and obtained results show a significant improvement.
机译:智能股票交易系统使用软计算技术,以便在股票市场进行交易决策。然而,股票价格的波动使得交易系统难以发现潜在的趋势。为了使趋势预测的交易系统能够实现趋势预测,本文建议使用感知重要点作为转折点预测框架。感知的重要观点被用作股票价格时间序列的高级别表示,将价格分解为上升趋势和下降趋势,并定义交易信号,该交易信号是当前趋势的指标。支持向量回归模型在此高级数据上培训,以基于预测交易信号进行交易决策。拟议的交易系统的表现与德黑兰证券交易所五大表演股票的三个其他贸易系统进行了比较,获得了显着改善。

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