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Main Authors: Fangnon, Dieu-Donne, Meli, Armandine Sorel Kouyim, Mbingui, Verlon Roel, Negho, Phanie Dianelle, Djaha, Regis Konan Marcel, Seknewna, Lema Logamou
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2505.07660
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author Fangnon, Dieu-Donne
Meli, Armandine Sorel Kouyim
Mbingui, Verlon Roel
Negho, Phanie Dianelle
Djaha, Regis Konan Marcel
Seknewna, Lema Logamou
author_facet Fangnon, Dieu-Donne
Meli, Armandine Sorel Kouyim
Mbingui, Verlon Roel
Negho, Phanie Dianelle
Djaha, Regis Konan Marcel
Seknewna, Lema Logamou
contents Artificial intelligence (AI) has demonstrated remarkable success across various applications. In light of this trend, the field of automated trading has developed a keen interest in leveraging AI techniques to forecast the future prices of financial assets. This interest stems from the need to address trading challenges posed by the inherent volatility and dynamic nature of asset prices. However, crafting a flawless strategy becomes a formidable task when dealing with assets characterized by intricate and ever-changing price dynamics. To surmount these formidable challenges, this research employs an innovative rule-based strategy approach to train Deep Reinforcement Learning (DRL). This application is carried out specifically in the context of trading Bitcoin (BTC) and Ripple (XRP). Our proposed approach hinges on the integration of Deep Q-Network, Double Deep Q-Network, Dueling Deep Q-learning networks, alongside the Advantage Actor-Critic algorithms. Each of them aims to yield an optimal policy for our application. To evaluate the effectiveness of our Deep Reinforcement Learning (DRL) approach, we rely on portfolio wealth and the trade signal as performance metrics. The experimental outcomes highlight that Duelling and Double Deep Q-Network outperformed when using XRP with the increasing of the portfolio wealth. All codes are available in this \href{https://github.com/VerlonRoelMBINGUI/RL_Final_Projects_AMMI2023}{\color{blue}Github link}.
format Preprint
id arxiv_https___arxiv_org_abs_2505_07660
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A comparative study of Bitcoin and Ripple cryptocurrencies trading using Deep Reinforcement Learning algorithms
Fangnon, Dieu-Donne
Meli, Armandine Sorel Kouyim
Mbingui, Verlon Roel
Negho, Phanie Dianelle
Djaha, Regis Konan Marcel
Seknewna, Lema Logamou
Computational Engineering, Finance, and Science
Artificial intelligence (AI) has demonstrated remarkable success across various applications. In light of this trend, the field of automated trading has developed a keen interest in leveraging AI techniques to forecast the future prices of financial assets. This interest stems from the need to address trading challenges posed by the inherent volatility and dynamic nature of asset prices. However, crafting a flawless strategy becomes a formidable task when dealing with assets characterized by intricate and ever-changing price dynamics. To surmount these formidable challenges, this research employs an innovative rule-based strategy approach to train Deep Reinforcement Learning (DRL). This application is carried out specifically in the context of trading Bitcoin (BTC) and Ripple (XRP). Our proposed approach hinges on the integration of Deep Q-Network, Double Deep Q-Network, Dueling Deep Q-learning networks, alongside the Advantage Actor-Critic algorithms. Each of them aims to yield an optimal policy for our application. To evaluate the effectiveness of our Deep Reinforcement Learning (DRL) approach, we rely on portfolio wealth and the trade signal as performance metrics. The experimental outcomes highlight that Duelling and Double Deep Q-Network outperformed when using XRP with the increasing of the portfolio wealth. All codes are available in this \href{https://github.com/VerlonRoelMBINGUI/RL_Final_Projects_AMMI2023}{\color{blue}Github link}.
title A comparative study of Bitcoin and Ripple cryptocurrencies trading using Deep Reinforcement Learning algorithms
topic Computational Engineering, Finance, and Science
url https://arxiv.org/abs/2505.07660