On confidence intervals centered on bootstrap smoothed estimators

03/14/2019
by   Paul Kabaila, et al.
0

We assess the performance, in terms of coverage probability and expected length, of confidence intervals centered on the bootstrap smoothed (bagged) estimator, for two nested linear regression models, with unknown error variance, and model selection using a preliminary t test.

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