Local optimization-based statistical inference
classification
📊 stat.ME
keywords
approachbootstrapconfidenceintervalslocaloptimization-basedstatisticalalgorithms
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This paper introduces a local optimization-based approach to test statistical hypotheses and to construct confidence intervals. This approach can be viewed as an extension of bootstrap, and yields asymptotically valid tests and confidence intervals as long as there exist consistent estimators of unknown parameters. We present simple algorithms including a neighborhood bootstrap method to implement the approach. Several examples in which theoretical analysis is not easy are presented to show the effectiveness of the proposed approach.
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