Monte Carlo Approximations of the Quantiles of a Sample Statistic |
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Authors: | Tak K Mak Fassil Nebebe |
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Institution: | 1. Department of Decision Sciences and M.I.S., JMSB , Concordia University , Montreal , Quebec , Canada takmak@alcor.concordia.ca;3. Department of Decision Sciences and M.I.S., JMSB , Concordia University , Montreal , Quebec , Canada |
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Abstract: | We consider in this article the problem of numerically approximating the quantiles of a sample statistic for a given population, a problem of interest in many applications, such as bootstrap confidence intervals. The proposed Monte Carlo method can be routinely applied to handle complex problems that lack analytical results. Furthermore, the method yields estimates of the quantiles of a sample statistic of any sample size though Monte Carlo simulations for only two optimally selected sample sizes are needed. An analysis of the Monte Carlo design is performed to obtain the optimal choices of these two sample sizes and the number of simulated samples required for each sample size. Theoretical results are presented for the bias and variance of the numerical method proposed. The results developed are illustrated via simulation studies for the classical problem of estimating a bivariate linear structural relationship. It is seen that the size of the simulated samples used in the Monte Carlo method does not have to be very large and the method provides a better approximation to quantiles than those based on an asymptotic normal theory for skewed sampling distributions. |
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Keywords: | Bootstrap Computer intensive methods Monte Carlo simulation Quantile approximation |
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