期权交易的深度学习:端到端方法

Wee Ling Tan, Stephen Roberts, Stefan Zohren
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引用次数: 0

摘要

我们介绍了一种利用高度可扩展和数据驱动的机器学习算法来制定期权交易策略的新方法。传统的方法往往需要对基础市场动态或期权定价模型的假设进行规范,而我们的模型从根本上摆脱了对这些先决条件的需求,直接学习从市场数据到最优交易信号的非难映射。通过对标准普尔 100 指数(S&P 100)上市股票十多年的期权合约进行回溯测试,我们证明,与现有的基于规则的交易策略相比,根据我们的端到端方法训练的深度学习模型在风险调整后的性能方面有显著提高。我们发现,在模型中加入成交量正则化,可以在交易成本过高的情况下进一步提高性能。
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Deep Learning for Options Trading: An End-To-End Approach
We introduce a novel approach to options trading strategies using a highly scalable and data-driven machine learning algorithm. In contrast to traditional approaches that often require specifications of underlying market dynamics or assumptions on an option pricing model, our models depart fundamentally from the need for these prerequisites, directly learning non-trivial mappings from market data to optimal trading signals. Backtesting on more than a decade of option contracts for equities listed on the S&P 100, we demonstrate that deep learning models trained according to our end-to-end approach exhibit significant improvements in risk-adjusted performance over existing rules-based trading strategies. We find that incorporating turnover regularization into the models leads to further performance enhancements at prohibitively high levels of transaction costs.
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