Estimation Variances for Estimators of Product Densities and Pair Correlation Functions of Planar Point Processes
نویسنده
چکیده
Approximations of the estimation variances of kernel estimators of the pair correlation function and the product density of a planar Poisson process are given. Furthermore, a heuristic approximation of the estimation variance of an estimator of the pair correlation function of a "general" planar point process is suggested. All formulae have been tested by simulation experiments.
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