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Central Limit Theorems for the Non‐Parametric Estimation of Time‐Changed Lévy Models
Authors:JOSÉ E FIGUEROA‐LÓPEZ
Institution:Department of Statistics, Purdue University
Abstract:Abstract. Let {Zt}t 0 be a Lévy process with Lévy measure ν and let inline image be a random clock, where g is a non‐negative function and inline image is an ergodic diffusion independent of Z. Time‐changed Lévy models of the form inline image are known to incorporate several important stylized features of asset prices, such as leptokurtic distributions and volatility clustering. In this article, we prove central limit theorems for a type of estimators of the integral parameter β(?):=∫?(x)ν(dx), valid when both the sampling frequency and the observation time‐horizon of the process get larger. Our results combine the long‐run ergodic properties of the diffusion process inline image with the short‐term ergodic properties of the Lévy process Z via central limit theorems for martingale differences. The performance of the estimators are illustrated numerically for Normal Inverse Gaussian process Z and a Cox–Ingersoll–Ross process inline image.
Keywords:high‐frequency sampling inference    vy processes  non‐parametric estimation  stochastic volatility  time‐changed Lé  vy models
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