ALERTA-Net: A Temporal Distance-Aware Recurrent Networks for Stock
Movement and Volatility Prediction
- URL: http://arxiv.org/abs/2310.18706v1
- Date: Sat, 28 Oct 2023 13:31:39 GMT
- Title: ALERTA-Net: A Temporal Distance-Aware Recurrent Networks for Stock
Movement and Volatility Prediction
- Authors: Shengkun Wang, YangXiao Bai, Kaiqun Fu, Linhan Wang, Chang-Tien Lu,
Taoran Ji
- Abstract summary: We harness the power of social media data, a rich source of public sentiment, to enhance the accuracy of stock market predictions.
We pioneer an approach that integrates sentiment analysis, macroeconomic indicators, search engine data, and historical prices within a multi-attention deep learning model.
We showcase the state-of-the-art performance of our proposed model using a dataset, specifically curated by us, for predicting stock market movements and volatility.
- Score: 20.574163667057476
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: For both investors and policymakers, forecasting the stock market is
essential as it serves as an indicator of economic well-being. To this end, we
harness the power of social media data, a rich source of public sentiment, to
enhance the accuracy of stock market predictions. Diverging from conventional
methods, we pioneer an approach that integrates sentiment analysis,
macroeconomic indicators, search engine data, and historical prices within a
multi-attention deep learning model, masterfully decoding the complex patterns
inherent in the data. We showcase the state-of-the-art performance of our
proposed model using a dataset, specifically curated by us, for predicting
stock market movements and volatility.
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