Article ID Journal Published Year Pages File Type
7547566 Journal of Statistical Planning and Inference 2016 23 Pages PDF
Abstract
The asymptotic validity of a resampling method for two sequential processes constructed from non-degenerate U-statistics is established under mixing conditions. The resampling schemes, referred to as dependent multiplier bootstraps, result from an adaptation of the seminal approach of Gombay and Horváth (2002) to mixing sequences. The proofs exploit recent results of Dehling and Wendler (2010b) on degenerate U-statistics. A data-driven procedure for estimating a key bandwidth parameter involved in the resampling schemes is also suggested, making the use of the studied dependent multiplier bootstraps fully automatic. The derived results are applied to the construction of confidence intervals and to test for change-point detection. For such applications, Monte Carlo experiments suggest that the use of the proposed resampling approaches can have advantages over that of estimated asymptotic distributions.
Related Topics
Physical Sciences and Engineering Mathematics Applied Mathematics
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