利用分布式价值函数进行金融市场估值、增强特征创建和改进交易算法

Colin D. Grab
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引用次数: 0

摘要

虽然将强化学习应用于金融市场的研究主要集中在寻找最优行为上,但值得认识到的是,强化学习回报 $G_t$ 和状态价值函数本身也很有意义,并且在资产评估中扮演着关键角色。对 $G_t$ 分布的准确、可信的估算为做出更明智的决策和更优化的行为提供了竞争优势。在这里,我们将预测知识和深度强化学习的思想结合起来,引入了一个名为 CDG-Model 的新型模型系列,从而建立了一个高度灵活的框架和直观的方法,并将对基础分布的假设降至最低。这些模型允许将典型的金融建模陷阱(如交易成本、滑移和其他可能的成本或收益)无缝集成到模型计算中。它们可应用于任何类型的交易策略或资产类别。所引入的框架可为单一资产和投资组合的市场估值、策略比较以及市场时机的改进提供具体的商业价值。它们可以对现有或新交易算法的性能产生积极影响,并加强其学习过程。从科学的角度来看,它们很有意义,并开辟了未来研究的多个领域。我们在真实市场数据上进行了初步实施和测试。虽然结果很有希望,但应用稳健的统计框架来评估一般模型仍然是一个挑战,需要进一步研究。
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Exploiting Distributional Value Functions for Financial Market Valuation, Enhanced Feature Creation and Improvement of Trading Algorithms
While research of reinforcement learning applied to financial markets predominantly concentrates on finding optimal behaviours, it is worth to realize that the reinforcement learning returns $G_t$ and state value functions themselves are of interest and play a pivotal role in the evaluation of assets. Instead of focussing on the more complex task of finding optimal decision rules, this paper studies and applies the power of distributional state value functions in the context of financial market valuation and machine learning based trading algorithms. Accurate and trustworthy estimates of the distributions of $G_t$ provide a competitive edge leading to better informed decisions and more optimal behaviour. Herein, ideas from predictive knowledge and deep reinforcement learning are combined to introduce a novel family of models called CDG-Model, resulting in a highly flexible framework and intuitive approach with minimal assumptions regarding underlying distributions. The models allow seamless integration of typical financial modelling pitfalls like transaction costs, slippage and other possible costs or benefits into the model calculation. They can be applied to any kind of trading strategy or asset class. The frameworks introduced provide concrete business value through their potential in market valuation of single assets and portfolios, in the comparison of strategies as well as in the improvement of market timing. They can positively impact the performance and enhance the learning process of existing or new trading algorithms. They are of interest from a scientific point-of-view and open up multiple areas of future research. Initial implementations and tests were performed on real market data. While the results are promising, applying a robust statistical framework to evaluate the models in general remains a challenge and further investigations are needed.
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