Kernel estimation of quantile sensitivities

Kernel estimation of quantile sensitivities

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Article ID: iaor200970181
Country: United States
Volume: 56
Issue: 6
Start Page Number: 511
End Page Number: 525
Publication Date: Sep 2009
Journal: Naval Research Logistics
Authors: ,
Abstract:

Quantiles, also known as value-at-risks in the financial industry, are important measures of random performances. Quantile sensitivities provide information on how changes in input parameters affect output quantiles. They are very useful in risk management. In this article, we study the estimation of quantile sensitivities using stochastic simulation. We propose a kernel estimator and prove that it is consistent and asymptotically normally distributed for outputs from both terminating and steady-state simulations. The theoretical analysis and numerical experiments both show that the kernel estimator is more efficient than the batching estimator of Hong 9.

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