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Maximizing winning trades using a rough set based other-product (RSPOP) fuzzy neural network intelligent stock trading system

机译:使用基于粗糙的其他产品(RSPOP)模糊神经网络智能股票交易系统最大化赢得胜利交易

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Trading systems have been relying more and more on the use of novel computational intelligence techniques in the formulation of trading decisions. A novel RSPOP intelligent stock trading system is proposed in this paper. This trading system is demonstrated empirically to achieve significantly superior returns on live stock data, and is able to filter out erroneous trading signals generated by the moving average trading rule. This ability to filter out erroneous signals is measured by the percentage of winning trades. The trading system is demonstrated empirically to achieve more than 92% of winning trades compared to an average of 70% of winning trades demonstrated by the conventional trading system based on the moving average trading rule.
机译:交易系统越来越依赖于在配方交易决策方面使用新颖的计算智能技术。本文提出了一种新颖的RSPOP智能股票交易系统。本贸易系统经验展示,实现了现场存量数据的显着优越的回报,能够过滤出移动平均交易规则产生的错误交易信号。这种过滤出错误信号的能力是通过获奖交易的百分比来衡量的。贸易体系经验证明,达到92%以上的获胜交易,而根据移动平均交易规则,常规交易系统展示的平均胜利交易的平均交易量为70%。

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