A Novel Distributed Representation of News (DRNews) for Stock Market
Predictions
- URL: http://arxiv.org/abs/2005.11706v2
- Date: Sun, 15 May 2022 06:21:41 GMT
- Title: A Novel Distributed Representation of News (DRNews) for Stock Market
Predictions
- Authors: Ye Ma, Lu Zong, Peiwan Wang
- Abstract summary: A novel Distributed Representation of News (DRNews) model is developed and applied in deep learning-based stock market predictions.
DRNews creates news vectors that describe both the semantic information and potential linkages among news events.
The attention mechanism suggests that short-term stock trend and stock market crises both receive influences from daily news.
- Score: 4.963115946610032
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: In this study, a novel Distributed Representation of News (DRNews) model is
developed and applied in deep learning-based stock market predictions. With the
merit of integrating contextual information and cross-documental knowledge, the
DRNews model creates news vectors that describe both the semantic information
and potential linkages among news events through an attributed news network.
Two stock market prediction tasks, namely the short-term stock movement
prediction and stock crises early warning, are implemented in the framework of
the attention-based Long Short Term-Memory (LSTM) network. It is suggested that
DRNews substantially enhances the results of both tasks comparing with five
baselines of news embedding models. Further, the attention mechanism suggests
that short-term stock trend and stock market crises both receive influences
from daily news with the former demonstrates more critical responses on the
information related to the stock market {\em per se}, whilst the latter draws
more concerns on the banking sector and economic policies.
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