We propose a parametric model for a bivariate stable Lévy process based on a
Lévy copula as a dependence model.We estimate the parameters of the full bivariate
model by maximum likelihood estimation. As an observation scheme we assume that
we observe all jumps larger than some ε> 0 and base our statistical analysis on the
resulting compound Poisson process. We derive the Fisher information matrix and
prove asymptotic normality of all estimates, when the truncation point ε tends to
0. A simulation study investigates the loss of efficiency because of the truncation.
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We propose a parametric model for a bivariate stable Lévy process based on a
Lévy copula as a dependence model.We estimate the parameters of the full bivariate
model by maximum likelihood estimation. As an observation scheme we assume that
we observe all jumps larger than some ε> 0 and base our statistical analysis on the
resulting compound Poisson process. We derive the Fisher information matrix and
prove asymptotic normality of all estimates, when the truncation point ε tends to
0. A sim...
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