Conditionally Elicitable Dynamic Risk Measures for Deep Reinforcement Learning

IF 1.4 4区 经济学 Q3 BUSINESS, FINANCE
Anthony Coache, Sebastian Jaimungal, Álvaro Cartea
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引用次数: 0

Abstract

We propose a novel framework to solve risk-sensitive reinforcement learning problems where the agent optimizes time-consistent dynamic spectral risk measures. Based on the notion of conditional elicitability, our methodology constructs (strictly consistent) scoring functions that are used as penalizers in the estimation procedure. Our contribution is threefold: we (i) devise an efficient approach to estimate a class of dynamic spectral risk measures with deep neural networks, (ii) prove that these dynamic spectral risk measures may be approximated to any arbitrary accuracy using deep neural networks, and (iii) develop a risk-sensitive actor-critic algorithm that uses full episodes and does not require any additional nested transitions. We compare our conceptually improved reinforcement learning algorithm with the nested simulation approach and illustrate its performance in two settings: statistical arbitrage and portfolio allocation on both simulated and real data.
深度强化学习的条件可引出动态风险度量
我们提出了一个新的框架来解决风险敏感强化学习问题,其中智能体优化时间一致的动态频谱风险度量。基于条件可获得性的概念,我们的方法构建了(严格一致的)评分函数,这些函数在估计过程中用作惩罚。我们的贡献有三个方面:我们(i)设计了一种有效的方法来使用深度神经网络估计一类动态频谱风险度量,(ii)证明这些动态频谱风险度量可以使用深度神经网络近似于任意精度,以及(iii)开发了一种风险敏感的演员-评论家算法,该算法使用完整的情节,不需要任何额外的嵌套转换。我们将概念上改进的强化学习算法与嵌套模拟方法进行比较,并说明其在两种设置下的性能:统计套利和在模拟和真实数据上的投资组合配置。
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来源期刊
SIAM Journal on Financial Mathematics
SIAM Journal on Financial Mathematics MATHEMATICS, INTERDISCIPLINARY APPLICATIONS-
CiteScore
2.30
自引率
10.00%
发文量
52
期刊介绍: SIAM Journal on Financial Mathematics (SIFIN) addresses theoretical developments in financial mathematics as well as breakthroughs in the computational challenges they encompass. The journal provides a common platform for scholars interested in the mathematical theory of finance as well as practitioners interested in rigorous treatments of the scientific computational issues related to implementation. On the theoretical side, the journal publishes articles with demonstrable mathematical developments motivated by models of modern finance. On the computational side, it publishes articles introducing new methods and algorithms representing significant (as opposed to incremental) improvements on the existing state of affairs of modern numerical implementations of applied financial mathematics.
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