Sentiment-aware stock market prediction: A deep learning method

Jiahong Li, Hui Bu, Junjie Wu
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引用次数: 80

Abstract

Stock market prediction has attracted much attention from academia as well as business. However, it is a challenging research topic, in which many advanced computational methods have been proposed, but not yet attained a desirable and reliable performance. This study proposes a new method for stock market prediction, which adopts the Long Short-Term Memory (LSTM) neural network and incorporates investor sentiment and market factors to improve forecasting performance. By extracting investor sentiment from forum posts using Naïve Bayes, this paper makes it possible to analyze the irrational component of stock price. Our empirical study on CSI300 index proves that our prediction method provides better prediction performance. It gives a prediction accuracy of 87.86%, outperforming other benchmark models by at least 6%. Furthermore, our empirical study reveals evidence that helps to better understand investor sentiment and stock behaviors. Finally, this work shows the potential of deep learning financial time series in the presence of strong noises.
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情绪感知股票市场预测:一种深度学习方法
股市预测不仅受到企业界的关注,也受到学术界的广泛关注。然而,这是一个具有挑战性的研究课题,许多先进的计算方法已经提出,但尚未达到理想和可靠的性能。本文提出了一种新的股票市场预测方法,该方法采用长短期记忆(LSTM)神经网络,并结合投资者情绪和市场因素来提高预测效果。本文利用Naïve贝叶斯算法从论坛帖子中提取投资者情绪,从而分析股价的非理性成分。对沪深300指数的实证研究表明,该预测方法具有较好的预测性能。它给出了87.86%的预测精度,比其他基准模型至少高出6%。此外,我们的实证研究揭示了有助于更好地理解投资者情绪和股票行为的证据。最后,这项工作显示了在强噪声存在下深度学习金融时间序列的潜力。
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