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An Ensemble of Neural Networks for Stock Trading Decision Making

机译:用于股票交易决策的神经网络集成

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Stock turning signals detection are very interesting subject arising in numerous financial and economic planning problems. In this paper, Ensemble Neural Network system with Intelligent Piecewise Linear Representation for stock turning points detection is presented. The Intelligent piecewise linear representation method is able to generate numerous stocks turning signals from the historic data base, then Ensemble Neural Network system will be applied to train the pattern and retrieve similar stock price patterns from historic data for training. These turning signals represent short-term and long-term trading signals for selling or buying stocks from the market which are applied to forecast the future turning points from the set of test data. Experimental results demonstrate that the hybrid system can make a significant and constant amount of profit when compared with other approaches using stock data available in the market.
机译:库存转向信号的检测是引起许多财务和经济计划问题的非常有趣的主题。本文提出了具有智能分段线性表示的Ensemble神经网络系统,用于股票转折点检测。智能分段线性表示方法能够从历史数据库中生成大量股票转向信号,然后将使用Ensemble神经网络系统来训练模式,并从历史数据中检索相似的股票价格模式以进行训练。这些转向信号表示从市场买卖股票的短期和长期交易信号,用于根据测试数据集预测未来的转向点。实验结果表明,与使用市场上可用的库存数据的其他方法相比,混合系统可以带来可观且恒定的利润。

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