Deep Cross-modal Information Fusion Network for Stock Trend Prediction

Stock trend prediction, as a classic and challenging task, can help traders make trading decisions for greater returns.Recently, deep learning related models have achieved obvious performance improvement on this task.However, most of the current deep learning related works only leverage the historic...

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Veröffentlicht in:Ji suan ji ke xue 2023-01, Vol.50 (5), p.128
Hauptverfasser: Cheng, Haiyang, Zhang, Jianxin, Sun, Qisen, Zhang, Qiang, Wei, Xiaopeng
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Sprache:chi
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Zusammenfassung:Stock trend prediction, as a classic and challenging task, can help traders make trading decisions for greater returns.Recently, deep learning related models have achieved obvious performance improvement on this task.However, most of the current deep learning related works only leverage the historical data on stock price to complete the trend prediction, which cannot capture the market dynamics other than price indicators, thus having an accuracy limitation to a certain extent.To this end, this paper combines social media texts with stock historical price information, and proposes a novel deep cross-modal information fusion network(DCIFNet) for stock trend prediction.DCIFNet first utilizes temporal convolution operations to encode stock prices and twitter texts, so that each element can have sufficient knowledge of its neighborhood elements.Then, the results are fed into a transformer-based cross-modal fusion structure to fuse stock prices and important information in Twitter texts more effectively.Finally, a
ISSN:1002-137X