[2509.09105] Long memory score-driven models as approximations for rough Ornstein-Uhlenbeck processes

Abhiram's bookmarks 2025-09-11

Summary:

This paper investigates the continuous-time limit of score-driven models with long memory. By extending score-driven models to incorporate infinite-lag structures with coefficients exhibiting heavy-tailed decay, we establish their weak convergence, under appropriate scaling, to fractional Ornstein-Uhlenbeck processes with Hurst parameter H<1/2. When score-driven models are used to characterize the dynamics of volatility, they serve as discrete-time approximations for rough volatility. We present several examples, including EGARCH(∞) whose limits give rise to a new class of rough volatility models. Building on this framework, we carry out numerical simulations and option pricing analyses, offering new tools for rough volatility modeling and simulation.

Link:

https://arxiv.org/abs/2509.09105

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llm score models search investment options

Date tagged:

09/11/2025, 22:56

Date published:

09/11/2025, 18:56