An attractive nonparametric method to detect change-points sequentially is to apply control charts based on kernel smoothers. Recently, the strong convergence of the associated normed delay associated with such a sequential stopping rule has been studied under sequences of out-of-control models. Kernel smoothers employ a kernel function to downweight past data. Since kernel functions with values in the unit interval are sufficient for that task, we study the problem to optimize the asymptotic normed delay over a class of kernels ensuring that restriction and certain additional moment constraints. We apply the key theorem to discuss several important examples where explicit solutions exist to illustrate that the results are applicable.
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Requires Authentication UnlicensedNP-Optimal Kernels for Nonparametric Sequential Detection RulesLicensedMarch 10, 2010
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Requires Authentication UnlicensedAvailability Formulas and Performance Measures for Separable Degradable NetworksLicensedMarch 10, 2010
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Requires Authentication UnlicensedBayesian Predictions for Exponentially Distributed Failure Times With One Change-PointLicensedMarch 10, 2010
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Requires Authentication UnlicensedBayes Inference Problems in Failure-Repair ProcessesLicensedMarch 10, 2010
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Requires Authentication UnlicensedForecasting of Categorical Time Series Using a Regression ModelLicensedMarch 10, 2010
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Requires Authentication UnlicensedEstimation of a Threshold-Value in the Context of Air Pollution and HealthLicensedMarch 10, 2010
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Requires Authentication UnlicensedEstimation of the Jump-Point in a Hazard FunctionLicensedMarch 10, 2010
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Requires Authentication UnlicensedDistributions of the Estimated Process Capability Index CpkLicensedMarch 10, 2010