Evolving privacy: Drift parameter estimation for discretely observed i.i.d. diffusion processes under LDP

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Abstract

The problem of estimating a parameter in the drift coefficient is addressed for N discretely observed independent and identically distributed stochastic differential equations (SDEs). This is done considering additional constraints, wherein only public data can be published and used for inference. The concept of local differential privacy (LDP) is formally introduced for a system of stochastic differential equations. The objective is to estimate the drift parameter by proposing a contrast function based on a pseudo-likelihood approach. A suitably scaled Laplace noise is incorporated to meet the privacy requirements. Our key findings encompass the derivation of explicit conditions tied to the privacy level. Under these conditions, we establish the consistency and asymptotic normality of the associated estimator. Notably, the convergence rate is intricately linked to the privacy level, and in some situations may be completely different from the case where privacy constraints are ignored. Our results hold true as the discretization step approaches zero and the number of processes N tends to infinity.

Original languageEnglish
Article number104557
JournalStochastic Processes and their Applications
Volume181
DOIs
Publication statusPublished - 1 Mar 2025

Keywords

  • Convergence rate
  • High frequency data
  • Local differential privacy
  • Parameter drift estimation
  • Privacy for processes

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