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Deep Attentive Learning for Stock Movement Prediction From Social Media Text and Company Correlations

机译:社交媒体文本和公司相关性的股票运动预测深入学习

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In the financial domain, risk modeling and profit generation heavily rely on the sophisticated and intricate stock movement prediction task. Stock forecasting is complex, given the stochastic dynamics and non-stationary behavior of the market. Stock movements are influenced by varied factors beyond the conventionally studied historical prices, such as social media and correlations among stocks. The rising ubiquity of online content and knowledge mandates an exploration of models that factor in such multimodal signals for accurate stock forecasting. We introduce an architecture that achieves a potent blend of chaotic temporal signals from financial data, social media, and inter-stock relationships via a graph neural network in a hierarchical temporal fashion. Through experiments on real-world S&P 500 index data and English tweets, we show the practical applicability of our model as a tool for investment decision making and trading.
机译:在金融领域,风险建模和利润依赖于复杂和复杂的股票运动预测任务。鉴于市场随机动力和市场的非静止行为,股票预测很复杂。库存运动受到超出常规研究历史价格的不同因素的影响,例如股票之间的社交媒体和相关性。在线内容和知识的繁荣令人兴奋的是,对于准确的股票预测,这种多峰信号中的模型的模型探索。我们介绍了一种架构,实现了通过分层时间方式通过图形神经网络从金融数据,社交媒体和股票交际关系中实现有效混乱的混沌时间信号。通过对现实世界标准普尔500指数数据和英文推文的实验,我们将我们的模型作为投资决策和交易的工具表现出实际适用性。

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