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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >A novel recurrent neural network algorithm with long short-term memory model for futures trading
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A novel recurrent neural network algorithm with long short-term memory model for futures trading

机译:一种新型复发性神经网络算法,期货交易长期内存模型

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摘要

This paper attempts to apply recurrent neural networks (RNN) to price forecasts and financial trading. Compared with previous neural networks models, the recurrent neural network can better use the previous information to infer subsequent events, which is more suitable for price time series analysis. Long Short-Term Memory (LSTM) has made structural changes to the RNN to avoid long-term dependency problems. The empirical research uses the 2010-2017 price panel data of four kinds of soybean futures in China's futures market, and confirms the model's improved predictive ability through statistical tests. The empirical analysis of futures trading verifies the practice of these model strategies in terms of risked return. This paper improves and expands the application of recurrent neural networks model, and provides a new idea for applying artificial neural network algorithm to futures trading.
机译:本文试图将经常性神经网络(RNN)应用于价格预测和金融交易。 与先前的神经网络模型相比,经常性神经网络可以更好地利用先前的信息来推断后续事件,更适合价格时间序列分析。 长期内存(LSTM)对RNN进行了结构性变化,以避免长期依赖性问题。 经验研究采用2010-2017中国期货市场中四种大豆期货价格面板数据,并通过统计检验确认该模型提高了预测能力。 期货交易的实证分析验证了这些模型策略在冒险危险方面的实践。 本文改善和扩展了经常性神经网络模型的应用,并为将人工神经网络算法应用于期货交易的新思路。

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