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  • Search: subject:"Bivariate negative-binomial distribution"
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Subject
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Bivariate negative-binomial distribution 2 Count time series 2 Diagnostic tests 2 Iterated thinning 2 NB-IINAR(1) model 2 Stein identity 2 bivariate negative binomial distribution 2 Bivariate negative binomial distribution 1 Bivariate negative binomial generalized linear models (BIVARNB GLM) 1 Characterization 1 Power series distribution 1 bivariate count data analysis 1 bivariate gamma type GLM 1 composite likelihood 1 parametric bootstrap 1 phylogeny 1 substitution rate 1 α-monotonicity 1
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Undetermined 3 Free 2
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Article 5
Type of publication (narrower categories)
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Article 2
Language
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Undetermined 3 English 2
Author
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Aleksandrov, Boris 2 Faymonville, Maxime 2 Jentsch, Carsten 2 Nik, Simon 2 Weiß, Christian H. 2 Deng, Ling 1 Iwasaki, Masakazu 1 Moore, Dirk 1 Sreehari, M. 1 Tsubaki, Hiroe 1
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Metrika 2 Journal of Applied Statistics 1 Statistical Applications in Genetics and Molecular Biology 1 Statistics & Probability Letters 1
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RePEc 3 EconStor 2
Showing 1 - 5 of 5
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Modelling and diagnostic tests for Poisson and negative-binomial count time series
Aleksandrov, Boris; Weiß, Christian H.; Nik, Simon; … - In: Metrika 87 (2023) 7, pp. 843-887
When modelling unbounded counts, their marginals are often assumed to follow either Poisson (Poi) or negative binomial (NB) distributions. To test such null hypotheses, we propose goodness-of-fit (GoF) tests based on statistics relying on certain moment properties. By contrast to most approaches...
Persistent link: https://www.econbiz.de/10015198562
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Modelling and diagnostic tests for Poisson and negative-binomial count time series
Aleksandrov, Boris; Weiß, Christian H.; Nik, Simon; … - In: Metrika 87 (2023) 7, pp. 843-887
When modelling unbounded counts, their marginals are often assumed to follow either Poisson (Poi) or negative binomial (NB) distributions. To test such null hypotheses, we propose goodness-of-fit (GoF) tests based on statistics relying on certain moment properties. By contrast to most approaches...
Persistent link: https://www.econbiz.de/10015400903
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A characterization of the bivariate negative binomial distribution via α-monotonicity
Sreehari, M. - In: Statistics & Probability Letters 82 (2012) 3, pp. 433-437
We obtain a characterization result for the bivariate negative binomial distribution by using arguments based on …
Persistent link: https://www.econbiz.de/10011039875
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Composite Likelihood Modeling of Neighboring Site Correlations of DNA Sequence Substitution Rates
Deng, Ling; Moore, Dirk - In: Statistical Applications in Genetics and Molecular Biology 8 (2009) 1, pp. 6-6
Sequence data from a series of homologous DNA segments from related organisms are typically polymorphic at many sites, and these polymorphisms are the result of evolutionary processes. Such data may be used to estimate the substitution rates as well as the variability of these rates. Careful...
Persistent link: https://www.econbiz.de/10005246482
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Bivariate Negative Binomial Generalized Linear Models for Environmental Count Data
Iwasaki, Masakazu; Tsubaki, Hiroe - In: Journal of Applied Statistics 33 (2006) 9, pp. 909-923
dependent structure with indices of dispersion. In this paper we first derive a new bivariate negative binomial distribution as …
Persistent link: https://www.econbiz.de/10005492084
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