使用深度强化学习的加密货币交易代理

Uwais Suliman, Terence L. van Zyl, A. Paskaramoorthy
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引用次数: 0

摘要

加密货币是由区块链网络监控和组织的点对点数字资产。价格预测一直是各种机器学习算法的一个重要焦点,特别是在加密货币方面。这项工作解决了交易者面临的短期利润最大化的挑战。该研究提出了一种用于加密货币市场交易的深度强化学习算法Duelling DQN。该环境旨在模拟实际交易行为,观察历史价格走势并对实时价格采取行动。提出的算法在比特币、以太坊和莱特币上进行了测试。各自的投资组合回报被用作衡量算法相对于买入并持有基准的表现的指标,买入并持有的表现优于Duelling DQN代理产生的结果。
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Cryptocurrency Trading Agent Using Deep Reinforcement Learning
Cryptocurrencies are peer-to-peer digital assets monitored and organised by a blockchain network. Price prediction has been a significant focus point with various machine learning algorithms, especially concerning cryptocurrency. This work addresses the challenge faced by traders of short-term profit maximisation. The study presents a deep reinforcement learning algorithm to trade in cryptocurrency markets, Duelling DQN. The environment has been designed to simulate actual trading behaviour, observing historical price movements and taking action on real-time prices. The proposed algorithm was tested with Bitcoin, Ethereum, and Litecoin. The respective portfolio returns are used as a metric to measure the algorithm's performance against the buy-and-hold benchmark, with the buy-and-hold outperforming the results produced by the Duelling DQN agent.
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