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Original Articles

On a data-dependent choice of the tuning parameter appearing in certain goodness-of-fit tests

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Pages 3276-3288 | Received 13 Jun 2014, Accepted 19 Sep 2014, Published online: 09 Oct 2014
 

Abstract

We propose a data-dependent method for choosing the tuning parameter appearing in many recently developed goodness-of-fit test statistics. The new method, based on the bootstrap, is applicable to a class of distributions for which the null distribution of the test statistic is independent of unknown parameters. No data-dependent choice for this parameter exists in the literature; typically, a fixed value for the parameter is chosen which can perform well for some alternatives, but poorly for others. The performance of the new method is investigated by means of a Monte Carlo study, employing three tests for exponentiality. It is found that the Monte Carlo power of these tests, using the data-dependent choice, compares favourably to the maximum achievable power for the tests calculated over a grid of values of the tuning parameter.

AMS Subject Classification:

Acknowledgements

The authors thank the associate editors and an anonymous referee for comments that led to an improved paper.

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