Comparison of Back Propagation, Long Short-Term Memory (LSTM), Attention-Based LSTM Neural Networks Application in Futures Market of China using R Programming

Wang Shuangao, Liu Yi, R. Padmanaban, M. Shamsudeen, R. Subalakshmi
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Abstract

Artificial neural network is widely used in the financial time series, but Long short-term memory (LSTM) neural network is rarely used in the futures market in China. In this paper, the LSTM neural network is studied by using futures data. The daily trading data of four groups of futures such as silver, copper, lithium and coking coal from December 2014 to December 2018 are used as the training object to make short-term prediction of the closing price. By comparing the Back Propagation (BP) neural network, general multi-layer LSTM neural network, and using the attention mechanism optimization LSTM contrast test, the result of the experiment shows that the futures price trend forecast time sequence, attention mechanism to promote significant effect of time sequence, and LSTM combined effect, by adjusting the parameters setting, using the improved LSTM neural network for time series prediction accuracy is higher, better generalization ability.
反向传播、长短期记忆(LSTM)、基于注意力的LSTM神经网络在中国期货市场的应用比较
人工神经网络在金融时间序列中得到了广泛的应用,但长短期记忆(LSTM)神经网络在我国期货市场中的应用较少。本文利用期货数据对LSTM神经网络进行了研究。以银、铜、锂、焦煤等四组期货2014年12月至2018年12月的每日交易数据为训练对象,对收盘价进行短期预测。通过比较反向传播(BP)神经网络、一般多层LSTM神经网络,并利用注意力机制优化LSTM对比测试,实验结果表明,通过调整参数设置,期货价格趋势预测时序、注意力机制对时序的显著促进作用和LSTM的组合作用,使用改进的LSTM神经网络对时间序列进行预测精度更高,泛化能力更好。
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