TIGHT UPPER CONFIDENCE LIMITS FROM DISCRETE DATA |
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Authors: | Paul Kabaila Chris J. Lloyd |
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Affiliation: | School of Statistical Science, La Trobe University, Bundoora, VIC 3083;email:;Dept of Statistics, University of Hong Kong, Pokfulam, Hong Kong. |
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Abstract: | Consider the problem of finding an upper 1 –α confidence limit for a scalar parameter of interest ø in the presence of a nuisance parameter vector θ when the data are discrete. Approximate upper limits T may be found by approximating the relevant unknown finite sample distribution by its limiting distribution. Such approximate upper limits typically have coverage probabilities below, sometimes far below, 1 –α for certain values of (θ, ø). This paper remedies that defect by shifting the possible values t of T so that they are as small as possible subject both to the minimum coverage probability being greater than or equal to 1 –α, and to the shifted values being in the same order as the unshifted ts. The resulting upper limits are called ‘tight’. Under very weak and easily checked regularity conditions, a formula is developed for the tight upper limits. |
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Keywords: | Upper confidence limit discrete data tight upper limit |
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