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News-Driven Stock Prediction With Attention-Based Noisy Recurrent State Transition

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arxiv 2004.01878 v1 pith:CX42QD3E submitted 2020-04-04 cs.CL

News-Driven Stock Prediction With Attention-Based Noisy Recurrent State Transition

classification cs.CL
keywords stockmodelmovementnews-drivenpredictionrecurrentstateevents
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We consider direct modeling of underlying stock value movement sequences over time in the news-driven stock movement prediction. A recurrent state transition model is constructed, which better captures a gradual process of stock movement continuously by modeling the correlation between past and future price movements. By separating the effects of news and noise, a noisy random factor is also explicitly fitted based on the recurrent states. Results show that the proposed model outperforms strong baselines. Thanks to the use of attention over news events, our model is also more explainable. To our knowledge, we are the first to explicitly model both events and noise over a fundamental stock value state for news-driven stock movement prediction.

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