ND-SMPF: A Noisy Deep Neural Network Fusion Framework for Stock Price Movement Prediction

Author(s):  
Farnoush Ronaghi ◽  
Mohammad Salimibeni ◽  
Farnoosh Naderkhani ◽  
Arash Mohammadi
2015 ◽  
Vol 30 (2) ◽  
pp. 26-33 ◽  
Author(s):  
Wenping Zhang ◽  
Chunping Li ◽  
Yunming Ye ◽  
Wenjie Li ◽  
Eric W.T. Ngai

2011 ◽  
Vol 2 (3) ◽  
pp. 1-18 ◽  
Author(s):  
Ming-Chih Lin ◽  
Anthony J. T. Lee ◽  
Rung-Tai Kao ◽  
Kuo-Tay Chen

Author(s):  
Wei Li ◽  
Ruihan Bao ◽  
Keiko Harimoto ◽  
Deli Chen ◽  
Jingjing Xu ◽  
...  

Stock movement prediction is a hot topic in the Fintech area. Previous works usually predict the price movement in a daily basis, although the market impact of news can be absorbed much shorter, and the exact time is hard to estimate. In this work, we propose a more practical objective to predict the overnight stock movement between the previous close price and the open price. As no trading operation occurs after market close, the market impact of overnight news will be reflected by the overnight movement. One big obstacle for such task is the lacking of data, in this work we collect and publish the overnight stock price movement dataset of Reuters Financial News. Another challenge is that the stocks in the market are not independent, which is omitted by previous works. To make use of the connection among stocks, we propose a LSTM Relational Graph Convolutional Network (LSTM-RGCN) model, which models the connection among stocks with their correlation matrix. Extensive experiment results show that our model outperforms the baseline models. Further analysis shows that the introduction of the graph enables our model to predict the movement of stocks that are not directly associated with news as well as the whole market, which is not available in most previous methods.


2021 ◽  
Author(s):  
Xin Jin

This paper presents a framework of imitating the price behavior of the underlying stock for reinforcement learning option price. We use accessible features of the equities pricing data to construct a non-deterministic Markov decision process for modeling stock price behavior driven by principal investor's decision making. However, low signal-to-noise ratio and instability that appear immanent in equity markets pose challenges to determine the state transition (price change) after executing an action (principal investor's decision) as well as decide an action based on current state (spot price). In order to conquer these challenges, we resort to a Bayesian deep neural network for computing the predictive distribution of the state transition led by an action. Additionally, instead of exploring a state-action relationship to formulate a policy, we seek for an episode based visible-hidden state-action relationship to probabilistically imitate principal investor's successive decision making. Our algorithm then maps imitative principal investor's decisions to simulated stock price paths by a Bayesian deep neural network. Eventually the optimal option price is reinforcement learned through maximizing the cumulative risk-adjusted return of a dynamically hedged portfolio over simulated price paths of the underlying.


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