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Applying long short term momory neural networks for predicting stock closing price

机译:应用长短短期记忆神经网络预测库存收盘价

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The main goal of this paper is to assess the hypothesis that combining RNNs with informative input variables can provide a more effective method for predicting the next-day stock movement. Moreover, we propose using long short term memory (LSTM) aand stock basic trading data to realize the stock prediction model. For training the model, we utilize some optimization strategies, such as adaptive moment estimation (Adam) and glorot uniform initialization. We present a case study based on Standard & Poor's (S&P500) and NASDAQ. Quantities of comparison experiments were performed to evaluate this model. At last we analyze the performance of different models with a series of evaluation criteria. Stock market prediction has garnered significant interest among investment and researchers. However, accurate prediction of stock market is an extremely challenging task. Hopefully, based on the case study, we show that our forecasting system gives slightly higher prediction accuracy for the stock closing price of next day, which outperforms the comparison models.
机译:本文的主要目的是评估与信息输入变量组合RNN的假设可以提供更有效的方法来预测下一天的股票运动。此外,我们建议使用长期内存(LSTM)AAND股票基本交易数据来实现库存预测模型。对于培训模型,我们利用了一些优化策略,例如自适应时刻估计(ADAM)和Glorot统一初始化。我们介绍了基于标准差价(标准普尔)和纳斯达克的案例研究。进行比较实验的数量以评估该模型。最后,我们分析了一系列评估标准的不同模型的性能。股市预测在投资和研究人员之间获得了重大兴趣。然而,准确预测股市是一个极具挑战性的任务。希望基于案例研究,我们表明,我们的预测系统对第二天的股票价格进行了略高的预测准确性,这优于比较模型。

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