基于深度学习的股票市场维数波动强度预测模型

Jheng-Long Wu, Chi-Sheng Yang, Kai-Hsuan Liu, Min-Tzu Huang
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引用次数: 6

摘要

本文提出了一种多维价值唤醒方法来定义股票市场的情绪状态。在过去,许多研究都集中在股票信息的价态情绪上,因为它代表了股票的上涨和下跌等趋势。在这种情况下,如果股票价格在短期内上涨或下跌(正/负趋势),投资者必然需要立即交易,但有些情况下不是这样。因此,价格唤醒法可以用来定义股票市场股票信息的趋势强度和交易强度。为了获得一个强大的预测模型来学习股票信息的趋势和交易强度,我们提出了一个基于关键字的关注网络,即HKAN模型,用于学习维度情绪(趋势和交易)与股票信息之间的关系。实验结果表明,我们提出的HKAN模型对股票价值的预测优于其他基准模型,如HAN和层次混合注意网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep Learning Model for Dimensional ValenceArousal Intensity Prediction in Stock Market
This paper proposes a dimensional valence-arousal method to define sentiment status in the stock market. In the past, many kinds of research have focused on the valence sentiment on stock messages because it represents the stock trend such as upward and downward. In this case, if the stock price jumps or collapses (positive/negative trend) in the short term, the investor will necessarily need to immediately trade at this moment, but some case is not. Therefore, the valence-arousal method can be used to define the trend intensity and trading intensity for a stock message of the stock market. In order to obtain a powerful prediction model to learn the intensity of trend and trading of a stock message that we propose a keyword-based attention network into Hierarchical Attention Networks (HAN), namely HKAN model, to learn the relation between dimensional sentiments (trend and trading) and stock messages. The experimental results show that our proposed HKAN model for stock VA prediction has outperformed other baseline models such as HAN and Hierarchical Hybrid Attention Networks.
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