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Recurrent convolutional neural kernel model for stock price movement prediction

机译:用于股票价格运动预测的经常性卷积神经内核模型

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摘要

Stock price movement prediction plays important roles in decision making for investors. It was usually regarded as a binary classification task. In this paper, a recurrent convolutional neural kernel (RCNK) model was proposed, which learned complementary features from different sources of data, namely, historical price data and text data in the message board, to predict the stock price movement. It integrated the advantage of technical analysis and sentiment analysis. Different from previous studies, the text data was treated as sequential data and utilized the RCNK model to train sentiment embeddings with the temporal features. Besides, in the classification section of the model, the explicit kernel mapping layer was used to replace several full-connected layers. This operation reduced the parameters of the model and the risk of overfitting. In order to test the impact of treating the sentiment data as sequential data, the effectiveness of explicit kernel mapping layer and the usefulness integrating the technical analysis and sentiment analysis, the proposed model was compared with the other two deep learning models (recurrent convolutional neural network model and convolutional neural kernel model) and the models with only one source of data as input. The result showed that the proposed model outperformed the other models.
机译:股票价格运动预测在投资者决策中起着重要作用。它通常被视为二进制分类任务。在本文中,提出了一种经常性卷积神经内核(RCNK)模型,其学习了来自不同数据来源的互补特征,即留言板中的历史价格数据和文本数据,以预测股票价格运动。它集成了技术分析和情感分析的优势。与以前的研究不同,文本数据被视为顺序数据并利用RCNK模型与时间特征训练情绪嵌入。此外,在模型的分类部分中,显式内核映射层用于替换多个全连接层。该操作减少了模型的参数和过度装备的风险。为了测试将情绪数据视为顺序数据的影响,明确核映射层的有效性和整合技术分析和情感分析的有效性,该建议的模型与其他两个深度学习模型进行了比较(经常性卷积神经网络模型和卷积神经内核模型)和仅作为输入的一个数据来源的模型。结果表明,所提出的模型表现出其他模型。

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