Computing confidence intervals for log-concave densities

Computational Statistics & Data Analysis(2014)

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摘要
In Balabdaoui, Rufibach, and Wellner (2009), pointwise asymptotic theory was developed for the nonparametric maximum likelihood estimator of a log-concave density. Here, the practical aspects of their results are explored. Namely, the theory is used to develop pointwise confidence intervals for the true log-concave density. To do this, the quantiles of the limiting process are estimated and various ways of estimating the nuisance parameter appearing in the limit are studied. The finite sample size behavior of these estimated confidence intervals is then studied via a simulation study of the empirical coverage probabilities.
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关键词
empirical coverage probability,pointwise asymptotic theory,log-concave density,estimated confidence interval,pointwise confidence interval,practical aspect,nonparametric maximum likelihood estimator,finite sample size behavior,true log-concave density,computing confidence interval,nuisance parameter,maximum likelihood,confidence interval
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