MCTG:Multi-frequency continuous-share trading algorithm with GARCH based
on deep reinforcement learning
- URL: http://arxiv.org/abs/2105.03625v1
- Date: Sat, 8 May 2021 08:00:56 GMT
- Title: MCTG:Multi-frequency continuous-share trading algorithm with GARCH based
on deep reinforcement learning
- Authors: Zhishun Wang, Wei Lu, Kaixin Zhang, Tianhao Li, Zixi Zhao
- Abstract summary: We propose an algorithm called the Multi-frequency Continuous-share Trading algorithm with GARCH (MCTG) to solve the problems above.
The latter with a continuous action space of the reinforcement learning algorithm is used to solve the problem of trading stock shares.
Experiments in different industries of Chinese stock market show our method achieves more extra profit comparing with basic DRL methods and bench model.
- Score: 5.1727003187913665
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Making profits in stock market is a challenging task for both professional
institutional investors and individual traders. With the development
combination of quantitative trading and reinforcement learning, more trading
algorithms have achieved significant gains beyond the benchmark model Buy&Hold
(B&H). There is a certain gap between these algorithms and the real trading
decision making scenarios. On the one hand, they only consider trading signals
while ignoring the number of transactions. On the other hand, the information
level considered by these algorithms is not rich enough, which limits the
performance of these algorithms. Thus, we propose an algorithm called the
Multi-frequency Continuous-share Trading algorithm with GARCH (MCTG) to solve
the problems above, which consists of parallel network layers and deep
reinforcement learning. The former is composed of three parallel network
layers, respectively dealing with different frequencies (five minute, one day,
one week) data, and day level considers the volatilities of stocks. The latter
with a continuous action space of the reinforcement learning algorithm is used
to solve the problem of trading stock shares. Experiments in different
industries of Chinese stock market show our method achieves more extra profit
comparing with basic DRL methods and bench model.
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