The many success stories of reinforcement learning (RL) and deep learning (DL) techniques have raised interest in their use for detecting patterns and generating constant profits from financial markets. In this paper, we combine deep reinforcement learning (DRL) with a transformer network to develop a decision transformer architecture for online trading. We use data from the Saudi Stock Exchange (Tadawul), one of the largest liquid stock exchanges globally. Specifically, we use the indices of four firms: Saudi Telecom Company, Al-Rajihi Banking and Investment, Saudi Electricity Company, and Saudi Basic Industries Corporation. To ensure the robustness and risk management of the proposed model, we consider seven reward functions: the Sortino ...
This research applies a deep reinforcement learning technique, Deep Q-network, to a stock market pai...
Algorithmic trading allows investors to avoid emotional and irrational trading decisions and helps t...
Trading strategies to maximize profits by tracking and responding to dynamic stock market variations...
Deep reinforcement learning is recognised as an advantageous solution to automated stock trading. It...
Presently, the volatile and dynamic aspects of stock prices are significant research challenges for ...
In this paper, we examine reinforment learning methods and their sutability for use in stock trading...
There are several automated stock trading programs using reinforcement learning, one of which is an ...
The thesis focuses on exploiting imperfections on the stock market by utilizing state-of-the-art lea...
Can we train a stock trading bot that can take decisions in high-entropy envi- ronments like stock m...
An algorithm that can learn an optimal policy to execute trade profitable is any market participant’...
In the past decade, the application of deep reinforcement learning (DRL) in portfolio management has...
Deep reinforcement learning (DRL) has achieved significant results in many machine learning (ML) ben...
Financial trading has been widely analyzed for decades with market participants and academics always...
The adoption of computer-aided stock trading methods is gaining popularity in recent years, mainly b...
This research applies a deep reinforcement learning technique, Deep Q-network, to a stock market pai...
This research applies a deep reinforcement learning technique, Deep Q-network, to a stock market pai...
Algorithmic trading allows investors to avoid emotional and irrational trading decisions and helps t...
Trading strategies to maximize profits by tracking and responding to dynamic stock market variations...
Deep reinforcement learning is recognised as an advantageous solution to automated stock trading. It...
Presently, the volatile and dynamic aspects of stock prices are significant research challenges for ...
In this paper, we examine reinforment learning methods and their sutability for use in stock trading...
There are several automated stock trading programs using reinforcement learning, one of which is an ...
The thesis focuses on exploiting imperfections on the stock market by utilizing state-of-the-art lea...
Can we train a stock trading bot that can take decisions in high-entropy envi- ronments like stock m...
An algorithm that can learn an optimal policy to execute trade profitable is any market participant’...
In the past decade, the application of deep reinforcement learning (DRL) in portfolio management has...
Deep reinforcement learning (DRL) has achieved significant results in many machine learning (ML) ben...
Financial trading has been widely analyzed for decades with market participants and academics always...
The adoption of computer-aided stock trading methods is gaining popularity in recent years, mainly b...
This research applies a deep reinforcement learning technique, Deep Q-network, to a stock market pai...
This research applies a deep reinforcement learning technique, Deep Q-network, to a stock market pai...
Algorithmic trading allows investors to avoid emotional and irrational trading decisions and helps t...
Trading strategies to maximize profits by tracking and responding to dynamic stock market variations...