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ST-Trader: A Spatial-Temporal Deep Neural Network for Modeling Stock Market Movement

机译:St-Trader:一种用于股票市场运动的空间深度神经网络

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摘要

Stocks that are fundamentally connected with each other tend to move together. Considering such common trends is believed to benefit stock movement forecasting tasks. However, such signals are not trivial to model because the connections among stocks are not physically presented and need to be estimated from volatile data. Motivated by this observation, we propose a framework that incorporates the inter-connection of firms to forecast stock prices. To effectively utilize a large set of fundamental features, we further design a novel pipeline. First, we use variational autoencoder (VAE) to reduce the dimension of stock fundamental information and then cluster stocks into a graph structure (fundamentally clustering). Second, a hybrid model of graph convolutional network and long-short term memory network (GCN-LSTM) with an adjacency graph matrix (learnt from VAE) is proposed for graph-structured stock market forecasting. Experiments on minute-level U.S. stock market data demonstrate that our model effectively captures both spatial and temporal signals and achieves superior improvement over baseline methods. The proposed model is promising for other applications in which there is a possible but hidden spatial dependency to improve time-series prediction.
机译:彼此基本上联系的股票往往会一起移动。考虑到这种共同趋势被认为有利于股票移动预测任务。然而,这种信号对模型并不差异,因为库存之间的连接不是物理上呈现,并且需要从挥发性数据估计。这种观察的动机,我们提出了一个框架,该框架将公司的互连融入股票价格。为了有效利用大量的基本功能,我们进一步设计了一种新型管道。首先,我们使用变分Autalencoder(VAE)来减少储蓄基本信息的维度,然后将群体群体群体放入图形结构(基本上集群)中。其次,提出了具有邻接图矩阵(从VAE学习)的图形卷积网络和长短期内存网络(GCN-LSTM)的混合模型,用于图形结构股票市场预测。微小级美国股票市场数据的实验表明,我们的模型有效地捕获了空间和时间信号,并通过基线方法实现了卓越的改进。所提出的模型对于其他应用是有可能但隐藏的空间依赖性来提高时间序列预测的其他应用。

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