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NCTS Probability Seminar
 
13:00 - 13:50, August 5, 2025 (Tuesday)
Room 505, Cosmology Building, NTU
(臺灣大學次震宇宙館 505室)
Data-Driven Merton’s Strategies via Policy Randomization
Xunyu Zhou (Columbia University)

Abstract
We study Merton’s expected utility maximization problem in an incomplete market, characterized by a factor process in addition to the stock price process, where all the model primitives are unknown. The agent under consideration is a price taker who has access only to the stock and factor value processes and the instantaneous volatility. We propose an auxiliary problem in which the agent can invoke policy randomization according to a specific class of Gaussian distributions, and prove that the mean of its optimal Gaussian policy solves the original Merton problem. With randomized policies, we are in the realm of continuous-time reinforcement learning (RL) recently developed in Wang et al. (2020) and Jia and Zhou (2022a,b, 2023), enabling us to solve the auxiliary problem in a data-driven way without having to estimate the model primitives. Specifically, we establish a policy improvement theorem based on which we design both online and offline actor–critic RL algorithms for learning Merton’s strategies. A key insight from this study is that RL in general and policy randomization in particular are useful beyond the purpose for exploration – they can be employed as a technical tool to solve a problem that cannot be otherwise solved by mere deterministic policies. At last, we carry out both simulation and empirical studies in a stochastic volatility environment to demonstrate the decisive outperformance of the devised RL algorithms in comparison to the conventional model-based, plug-in method. Joint work with Min Dai, Yuchao Dong and Yanwei Jia.
 
Organizers: Shang-Yuan Shiu (NCU), Jhih-Huang Li (NTU), Wai Kit Lam (NTU)


 

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