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Asymmetric Kernel Density Estimation Based on Grouped Data with Applications to Loss Model.

COMMUNICATIONS IN STATISTICS-SIMULATION AND COMPUTATION(2014)

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摘要
We consider asymmetric kernel estimates based on grouped data. We propose an iterated scheme for constructing such an estimator and apply an iterated smoothed bootstrap approach for bandwidth selection. We compare our approach with competing methods in estimating actuarial loss models using both simulations and data studies. The simulation results show that with this new method, the estimated density from grouped data matches the true density more closely than with competing approaches.
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关键词
Asymmetric kernel,Grouped data,Loss model
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