DOI: 10.58837/chula.the.2022.95
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Multi-agent deep reinforcement learning for cryptocurrency trading

Kittiwin Kumlungmak

Abstract: Reinforcement learning has emerged as a promising approach for enhancing profitability in cryptocurrency trading. However, the inherent volatility of the market, especially during bearish periods, poses significant challenges in this domain. Existing literature addresses this issue through the adoption of single-agent techniques such as deep Q-network (DQN), advantage actor-critic (A2C), and proximal policy optimization (PPO), or their ensembles. Despite these efforts, the mechanisms employed to mitigate losse… Show more

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