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  • Search: subject:"empirical probability generating function"
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Bivariate Poisson distribution 1 Bootstrap distribution estimator 1 Consistency against fixed alternatives 1 Empirical probability generating function 1 Goodness-of-fit 1 Katz laws 1 Local alternatives 1 compound Poisson distribution 1 empirical probability generating function 1 goodness-of-fit test 1
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Article 2
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Jiménez-Gamero, M. 1 Meintanis, Simos 1 Novoa-Muñoz, F. 1
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Journal of Applied Statistics 1 Metrika 1
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RePEc 2
Showing 1 - 2 of 2
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Testing for the bivariate Poisson distribution
Novoa-Muñoz, F.; Jiménez-Gamero, M. - In: Metrika 77 (2014) 6, pp. 771-793
several Cramér–von Mises type tests based on the empirical probability generating function. They are consistent against fixed …
Persistent link: https://www.econbiz.de/10010995193
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New inference procedures for generalized Poisson distributions
Meintanis, Simos - In: Journal of Applied Statistics 35 (2008) 7, pp. 751-762
A common feature for compound Poisson and Katz distributions is that both families may be viewed as generalizations of the Poisson law. In this paper, we present a unified approach in testing the fit to any distribution belonging to either of these families. The test involves the probability...
Persistent link: https://www.econbiz.de/10005458236
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