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Multinomial N‐mixture models for removal sampling

Linda M. Haines

Biometrics, 2020, vol. 76, issue 2, 540-548

Abstract: Multinomial N‐mixture models are commonly used to fit data from a removal sampling protocol. If the mixing distribution is negative binomial, the distribution of the counts does not appear to have been identified, and practitioners approximate the requisite likelihood by placing an upper bound on the embedded infinite sum. In this paper, the distribution which underpins the multinomial N‐mixture model with a negative binomial mixing distribution is shown to belong to the broad class of multivariate negative binomial distributions. Specifically, the likelihood can be expressed in closed form as the product of conditional and marginal likelihoods and the information matrix shown to be block diagonal. As a consequence, the nature of the maximum likelihood estimates of the unknown parameters and their attendant standard errors can be examined and tests of the hypothesis of the Poisson against the negative binomial mixing distribution formulated. In addition, appropriate multinomial N‐mixture models for data sets which include zero site totals can also be constructed. Two illustrative examples are provided.

Date: 2020
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https://doi.org/10.1111/biom.13147

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