Reinforcement Learning Pair Trading: A Dynamic Scaling approach
Cryptocurrency is a cryptography-based digital asset with extremely volatile prices. Around $70 billion worth of crypto-currency is traded daily on exchanges. Trading crypto-currency is difficult due to the inherent volatility of the crypto-market. In this work, we want to test the hypothesis: "...
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Zusammenfassung: | Cryptocurrency is a cryptography-based digital asset with extremely volatile
prices. Around $70 billion worth of crypto-currency is traded daily on
exchanges. Trading crypto-currency is difficult due to the inherent volatility
of the crypto-market. In this work, we want to test the hypothesis: "Can
techniques from artificial intelligence help with algorithmically trading
cryptocurrencies?". In order to address this question, we combine Reinforcement
Learning (RL) with pair trading. Pair trading is a statistical arbitrage
trading technique which exploits the price difference between statistically
correlated assets. We train reinforcement learners to determine when and how to
trade pairs of cryptocurrencies. We develop new reward shaping and
observation/action spaces for reinforcement learning. We performed experiments
with the developed reinforcement learner on pairs of BTC-GBP and BTC-EUR data
separated by 1-minute intervals (n = 263,520). The traditional non-RL pair
trading technique achieved an annualised profit of 8.33%, while the proposed
RL-based pair trading technique achieved annualised profits from 9.94% -
31.53%, depending upon the RL learner. Our results show that RL can
significantly outperform manual and traditional pair trading techniques when
applied to volatile markets such as cryptocurrencies. |
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DOI: | 10.48550/arxiv.2407.16103 |