Asymptotic results and statistical procedures for time-changed Lévy
processes sampled at hitting times
We provide asymptotic results and develop high frequency statistical procedures for time-changed L\évy processes sampled at random instants. The sampling times are given by first hitting times of symmetric barriers whose distance with respect to the starting point is equal to . This setting can be seen as a first step towards a model for tick-by-tick financial data allowing for large jumps. For a wide class of L\évy processes, we introduce a renormalization depending on , under which the L\évy process converges in law to an -stable process as goes to . The convergence is extended to moments of hitting times and overshoots. In particular, these results allow us to construct consistent estimators of the time change and of the Blumenthal-Getoor index of the underlying L\évy process. Convergence rates and a central limit theorem are established under additional assumptions.
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