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Comparative study of stock trend prediction using time delay, recurrent and probabilistic neural networks

机译:利用时间延迟,递归和概率神经网络进行股票趋势预测的比较研究

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摘要

Three networks are compared for low false alarm stock trend predictions. Short-term trends, particularly attractive for neural network analysis, can be used profitably in scenarios such as option trading, but only with significant risk. Therefore, we focus on limiting false alarms, which improves the risk/reward ratio by preventing losses. To predict stock trends, we exploit time delay, recurrent, and probabilistic neural networks (TDNN, RNN, and PNN, respectively), utilizing conjugate gradient and multistream extended Kalman filter training for TDNN and RNN. We also discuss different predictability analysis techniques and perform an analysis of predictability based on a history of daily closing price. Our results indicate that all the networks are feasible, the primary preference being one of convenience.
机译:比较了三个网络的低虚假警报趋势预测。短期趋势,特别是对神经网络分析有吸引力的趋势,可以在诸如期权交易之类的情况下获利使用,但风险很大。因此,我们专注于限制错误警报,通过防止损失来提高风险/回报率。为了预测库存趋势,我们利用时延,递归和概率神经网络(分别为TDNN,RNN和PNN),对TDNN和RNN利用共轭梯度和多流扩展卡尔曼滤波器训练。我们还将讨论不同的可预测性分析技术,并根据每日收盘价的历史记录对可预测性进行分析。我们的结果表明,所有网络都是可行的,主要的优先选择是便利性之一。

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