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Exploring Cluster Stocks based on deep learning for Stock Prediction

机译:基于股票预测的深度学习探索集群股票

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Stock prediction is an important yet challenging problem in finance field. As the stock increase, cluster stocks have a certain on target stock, because the same type of stocks have a linkage effect. However, a large amount of approaches only utilize their own information, and not use extra information from cluster stocks. In this paper, to improve the stock prediction, we exploit cluster stocks, and develop a deep learning model for stock prediction. A LSTM model is first introduced, then we introduce attention model. The combination LSTM and attention model is proposed for stock prediction by using cluster stocks. To validate the proposed approach, we collect the data from Wind Financial Terminal. Extensive experiments are carried out on this data, and results show that exploring cluster stocks based on deep learning is a promising development that improves the performance of stock prediction, and the cluster stocks information can offer promising enhancement.
机译:股票预测是金融领域重要但具有挑战性的问题。 随着股票增加,群集股在目标库存上具有一定的股票,因为相同类型的股票具有连锁效果。 但是,大量方法只能利用他们自己的信息,而不是使用群集股票的额外信息。 在本文中,为了提高股票预测,我们利用群集股,并开发了股票预测的深入学习模型。 首先介绍了LSTM模型,然后我们介绍了注意力模型。 通过使用集群股票提出了LSTM和注意力模型的组合。 要验证所提出的方法,我们将从风力财务终端收集数据。 对该数据进行了广泛的实验,结果表明,根据深度学习探索集群股票是一个有前途的发展,提高了库存预测的绩效,群体股票信息可以提供有希望的增强。

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