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High and Low Prices Prediction of Soybean Futures with LSTM Neural Network

机译:LSTM神经网络对大豆期货的高低价格预测

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摘要

The prediction of futures prices is a great challenge. On the other hand, it can bring investors great profits. Most researches just show the predictions of closing prices but we can also predict high and low prices. The high and low prices have lower noises than closing prices, making it easier to predict them and to use them for making profitable strategies. In this paper, we build a model to predict high and low prices of soybean futures with the LSTM neural network using the dataset from the Dalian Commodity Exchange. Then we use mean absolute error (MAE) and trend accuracy to evaluate the performance of this model. For comparison, we predict the closing price using the LSTM neural network and build another prediction model based on the BP neural network. Results show that we get higher accuracy predicting the trends of high and low prices. Also, the prediction model based on the LSTM neural network performs better and it gets more than 80% of the accuracy in trend estimation when the predicting high prices or low prices have high volatilities.
机译:期货价格的预测是一个巨大的挑战。另一方面,它可以为投资者带来丰厚的利润。大多数研究只是显示收盘价的预测,但我们也可以预测高价和低价。高价和低价的噪音要比收盘价低,因此更容易预测价格并将其用于制定有利可图的策略。在本文中,我们使用大连商品交易所的数据集,通过LSTM神经网络建立了一个模型来预测大豆期货的高低价格。然后,我们使用平均绝对误差(MAE)和趋势准确性来评估该模型的性能。为了进行比较,我们使用LSTM神经网络预测收盘价,并基于BP神经网络建立另一个预测模型。结果表明,我们获得了较高的预测高低价格趋势的准确性。同样,当预测高价格或低价格具有高波动性时,基于LSTM神经网络的预测模型表现更好,并且趋势估计的准确性超过80%。

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