POT-flavored estimator of Pickands dependence function

02/11/2022
by   Nan Zou, et al.
0

This work proposes an estimator with both Peak-Over-Threshold and Block-Maxima flavors, uses it to estimate the Pickands dependence function of bivariate time series, and illustrates how it brings down the asymptotic bias and the overall mean squared error.

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