TY - JOUR
T1 - New methods for bias correction at endpoints and boundaries
AU - Hall, Peter
AU - Park, Byeong U.
PY - 2002/10
Y1 - 2002/10
N2 - We suggest two new, translation-based methods for estimating and correcting for bias when estimating the edge of a distribution. The first uses an empirical translation applied to the argument of the kernel, in order to remove the main effects of the asymmetries that are inherent when constructing estimators at boundaries. Placing the translation inside the kernel is in marked contrast to traditional approaches, such as the use of high-order kernels, which are related to the jackknife and, in effect, apply the translation outside the kernel. Our approach has the advantage of producing bias estimators that, while enjoying a high order of accuracy, are guaranteed to respect the sign of bias. Our second method is a new bootstrap technique. It involves translating an initial boundary estimate toward the body of the dataset, constructing repeated boundary estimates from data that lie below the respective translations, and employing averages of the resulting empirical bias approximations to estimate the bias of the original estimator. The first of the two methods is most appropriate in univariate cases, and is studied there; the second approach may be used to bias-correct estimates of boundaries of multivariate distributions, and is explored in the bivariate case.
AB - We suggest two new, translation-based methods for estimating and correcting for bias when estimating the edge of a distribution. The first uses an empirical translation applied to the argument of the kernel, in order to remove the main effects of the asymmetries that are inherent when constructing estimators at boundaries. Placing the translation inside the kernel is in marked contrast to traditional approaches, such as the use of high-order kernels, which are related to the jackknife and, in effect, apply the translation outside the kernel. Our approach has the advantage of producing bias estimators that, while enjoying a high order of accuracy, are guaranteed to respect the sign of bias. Our second method is a new bootstrap technique. It involves translating an initial boundary estimate toward the body of the dataset, constructing repeated boundary estimates from data that lie below the respective translations, and employing averages of the resulting empirical bias approximations to estimate the bias of the original estimator. The first of the two methods is most appropriate in univariate cases, and is studied there; the second approach may be used to bias-correct estimates of boundaries of multivariate distributions, and is explored in the bivariate case.
KW - Bias estimation
KW - Bootstrap
KW - Curve estimation
KW - Free disposal hull estimator
KW - Frontier estimation
KW - Kernel methods
KW - Nonparametric density estimation
KW - Productivity analysis
KW - Translation
UR - http://www.scopus.com/inward/record.url?scp=0036432738&partnerID=8YFLogxK
U2 - 10.1214/aos/1035844983
DO - 10.1214/aos/1035844983
M3 - Article
SN - 0090-5364
VL - 30
SP - 1460
EP - 1479
JO - Annals of Statistics
JF - Annals of Statistics
IS - 5
ER -