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Block Bootstrapping for Kernel Density Estimators under ψ-Weak Dependence
Authors:Eunju Hwang
Institution:1. Department of Applied Statistics, Gachon University, Seongham, Korea;2. Department of Statistics, Ewha University, Seoul, Korea
Abstract:Block bootstrap methods are applied to kernel-type density estimator and its derivatives for ψ-weakly dependent processes. Nonparametric density estimation is discussed via moving block bootstrap (MBB) and disjoint block bootstrap (DBB). Asymptotic validity is proved for MBB and DBB. A Monte-Carlo experiment compares confidence intervals based on MBB and DBB with an existing method based on normal approximation (NA) in terms of serial correlation, dynamic asymmetry, and conditional heteroscedasticity. The experiment shows that, in cases of substantial serial correlation, MBB and DBB perform better than NA and, in the other cases, MBB and DBB perform as good as NA.
Keywords:Disjoint block bootstrap  Kernel density estimator  Moving block bootstrap  nonlinear time series  Weak dependence
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