scholarly journals Application of deep reinforcement learning in stock trading strategies and stock forecasting

Computing ◽  
2019 ◽  
Vol 102 (6) ◽  
pp. 1305-1322 ◽  
Author(s):  
Yuming Li ◽  
Pin Ni ◽  
Victor Chang
2020 ◽  
Vol 538 ◽  
pp. 142-158 ◽  
Author(s):  
Xing Wu ◽  
Haolei Chen ◽  
Jianjia Wang ◽  
Luigi Troiano ◽  
Vincenzo Loia ◽  
...  

2020 ◽  
Author(s):  
Xiao-Yang Liu ◽  
Hongyang Yang ◽  
Qian Chen ◽  
Runjia Zhang ◽  
Liuqing Yang ◽  
...  

2012 ◽  
pp. 467-478 ◽  
Author(s):  
David E. Allen ◽  
Robert J. Powell ◽  
Abhay K. Singh

Genetic algorithms (GAs) are a powerful search technique. The use of genetic algorithms (GAs) will help in the development of better trading systems. The genetic algorithms (GAs) help the researcher to explore various combinations of trading rules or their parameters, which the human mind is unable to find. This chapter explains genetic algorithms (GAs) in brief and gives insight on how they find better trading strategies. Some of the manual trading strategies are good in nature. Genetic algorithms (GAs) only addition to them. Interfacing genetic algorithms (GAs) with stock trading systems or developing a combined model requires a large degree of imagination and creativity. It is an art not a scientific invention. Genetic algorithms (GAs) make use of computers to find various interesting trading systems.


Complexity ◽  
2019 ◽  
Vol 2019 ◽  
pp. 1-20 ◽  
Author(s):  
Taewook Kim ◽  
Ha Young Kim

Many researchers have tried to optimize pairs trading as the numbers of opportunities for arbitrage profit have gradually decreased. Pairs trading is a market-neutral strategy; it profits if the given condition is satisfied within a given trading window, and if not, there is a risk of loss. In this study, we propose an optimized pairs-trading strategy using deep reinforcement learning—particularly with the deep Q-network—utilizing various trading and stop-loss boundaries. More specifically, if spreads hit trading thresholds and reverse to the mean, the agent receives a positive reward. However, if spreads hit stop-loss thresholds or fail to reverse to the mean after hitting the trading thresholds, the agent receives a negative reward. The agent is trained to select the optimum level of discretized trading and stop-loss boundaries given a spread to maximize the expected sum of discounted future profits. Pairs are selected from stocks on the S&P 500 Index using a cointegration test. We compared our proposed method with traditional pairs-trading strategies which use constant trading and stop-loss boundaries. We find that our proposed model is trained well and outperforms traditional pairs-trading strategies.


2020 ◽  
Vol 34 (02) ◽  
pp. 2128-2135
Author(s):  
Yang Liu ◽  
Qi Liu ◽  
Hongke Zhao ◽  
Zhen Pan ◽  
Chuanren Liu

In recent years, considerable efforts have been devoted to developing AI techniques for finance research and applications. For instance, AI techniques (e.g., machine learning) can help traders in quantitative trading (QT) by automating two tasks: market condition recognition and trading strategies execution. However, existing methods in QT face challenges such as representing noisy high-frequent financial data and finding the balance between exploration and exploitation of the trading agent with AI techniques. To address the challenges, we propose an adaptive trading model, namely iRDPG, to automatically develop QT strategies by an intelligent trading agent. Our model is enhanced by deep reinforcement learning (DRL) and imitation learning techniques. Specifically, considering the noisy financial data, we formulate the QT process as a Partially Observable Markov Decision Process (POMDP). Also, we introduce imitation learning to leverage classical trading strategies useful to balance between exploration and exploitation. For better simulation, we train our trading agent in the real financial market using minute-frequent data. Experimental results demonstrate that our model can extract robust market features and be adaptive in different markets.


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