Financial trading has been widely analyzed for decades with market participants and academics always looking for advanced methods to improve trading performance. Deep reinforcement learning (DRL), a recently reinvigorated method with significant success in multiple domains, still has to show its benefit in the financial markets. We use a deep Q-network (DQN) to design long-short trading strategies for futures contracts. The state space consists of volatility-normalized daily returns, with buying or selling being the reinforcement learning action and the total reward defined as the cumulative profits from our actions. Our trading strategy is trained and tested both on real and simulated price series and we compare the results with an index b...
Is there an informational gain by training a Deep Reinforcement Learning agent for automated stock t...
Can we train a stock trading bot that can take decisions in high-entropy envi- ronments like stock m...
The increasing complexity and dynamical property in stock markets are key challenges of the financia...
This paper presents a Double Deep Q-Network algorithm for trading single assets, namely the E-mini S...
Deep reinforcement learning is recognised as an advantageous solution to automated stock trading. It...
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...
Deep reinforcement learning (DRL) has achieved significant results in many machine learning (ML) ben...
An algorithm that can learn an optimal policy to execute trade profitable is any market participant’...
Forecasting the behavior of the stock market is a classic but difficult topic, one that has attracte...
The emergence and advancements in Deep learning and Artificial Intelligence have been disruptive for...
Reinforcement Learning (RL) based machine trading attracts a rich profusion of interest. However, in...
In this study, the potential of using Reinforcement Learning for Portfolio Optimization is investiga...
In this study, the potential of using Reinforcement Learning for Portfolio Optimization is investiga...
The increasing complexity and dynamical property in stock markets are key challenges of the financia...
Is there an informational gain by training a Deep Reinforcement Learning agent for automated stock t...
Can we train a stock trading bot that can take decisions in high-entropy envi- ronments like stock m...
The increasing complexity and dynamical property in stock markets are key challenges of the financia...
This paper presents a Double Deep Q-Network algorithm for trading single assets, namely the E-mini S...
Deep reinforcement learning is recognised as an advantageous solution to automated stock trading. It...
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...
Deep reinforcement learning (DRL) has achieved significant results in many machine learning (ML) ben...
An algorithm that can learn an optimal policy to execute trade profitable is any market participant’...
Forecasting the behavior of the stock market is a classic but difficult topic, one that has attracte...
The emergence and advancements in Deep learning and Artificial Intelligence have been disruptive for...
Reinforcement Learning (RL) based machine trading attracts a rich profusion of interest. However, in...
In this study, the potential of using Reinforcement Learning for Portfolio Optimization is investiga...
In this study, the potential of using Reinforcement Learning for Portfolio Optimization is investiga...
The increasing complexity and dynamical property in stock markets are key challenges of the financia...
Is there an informational gain by training a Deep Reinforcement Learning agent for automated stock t...
Can we train a stock trading bot that can take decisions in high-entropy envi- ronments like stock m...
The increasing complexity and dynamical property in stock markets are key challenges of the financia...