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December 2000 Minimal sufficient statistics in location-scale parameter models
Lutz Mattner
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Bernoulli 6(6): 1121-1134 (December 2000).

Abstract

Let f be a probability density on the real line, let n be any positive integer, and assume the condition (R) that logf is locally integrable with respect to Lebesgue measure. Then either logf is almost everywhere equal to a polynomial of degree less than n, or the order statistic of n independent and identically distributed observations from the location-scale parameter model generated by f is minimal sufficient. It follows, subject to (R) and n≥3, that a complete sufficient statistic exists in the normal case only. Also, for f with (R) infinitely divisible but not normal, the order statistic is always minimal sufficient for the corresponding location-scale parameter model. The proof of the main result uses a theorem on the harmonic analysis of translation- and dilation-invariant function spaces, attributable to Leland (1968) and Schwartz (1947).

Citation

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Lutz Mattner. "Minimal sufficient statistics in location-scale parameter models." Bernoulli 6 (6) 1121 - 1134, December 2000.

Information

Published: December 2000
First available in Project Euclid: 5 April 2004

zbMATH: 1067.62503
MathSciNet: MR1809738

Keywords: characterization , complete sufficient statistics , Equivariance , exponential family, independence , infinitely divisible distribution , mean periodic functions , normal distribution , order statistics , transformation model

Rights: Copyright © 2000 Bernoulli Society for Mathematical Statistics and Probability

Vol.6 • No. 6 • December 2000
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