We exploit a suitable moment-based reparametrization of the Poisson mixtures distributions for developing classical and Bayesian inference for the unknown size of a finite population in the presence of count data. Here we put particular emphasis on suitable mappings between ordinary moments and recurrence coefficients that will allow us to implement standard maximization routines and MCMC routines in a more convenient parameter space. We assess the comparative performance of our approach in real data applications and in a simulation study
ABSTRACT: Population size estimation is relevant to social and ecological sciences. Exhaustive manua...
We introduce a new Bayesian non-parametric method based on Dirichlet process mixtures for estimating...
In many fields of study scientists are interested in estimating the number of unobserved classes. ...
We review some recent approaches that have been used to address the difficult problem of estimating ...
Estimation of a population size by means of capture-recapture techniques is an important problem occ...
Estimation of a population size by means of capture-recapture techniques is an important problem occ...
This article is about modeling count data with zero truncation. A parametric count density family is...
Regression models for count data are usually based on the Poisson distribution. This thesis is conce...
Our motivating application stems from surveys of natural populations and is characterized by large s...
Estimating the size of an elusive target population is of prominent interest in many areas in the li...
The N-mixture model is widely used to estimate the abundance of a population in the presence of unkn...
The use of mixture models for estimating the size of an elusive population when capture rates vary a...
The use of mixture models for estimating the size of an elusive population when capture rates vary a...
The method of moments (MM) has been widely used for parametric estimation, as it is often computatio...
Population size estimation with discrete or nonparametric mixture models is considered, and reliable...
ABSTRACT: Population size estimation is relevant to social and ecological sciences. Exhaustive manua...
We introduce a new Bayesian non-parametric method based on Dirichlet process mixtures for estimating...
In many fields of study scientists are interested in estimating the number of unobserved classes. ...
We review some recent approaches that have been used to address the difficult problem of estimating ...
Estimation of a population size by means of capture-recapture techniques is an important problem occ...
Estimation of a population size by means of capture-recapture techniques is an important problem occ...
This article is about modeling count data with zero truncation. A parametric count density family is...
Regression models for count data are usually based on the Poisson distribution. This thesis is conce...
Our motivating application stems from surveys of natural populations and is characterized by large s...
Estimating the size of an elusive target population is of prominent interest in many areas in the li...
The N-mixture model is widely used to estimate the abundance of a population in the presence of unkn...
The use of mixture models for estimating the size of an elusive population when capture rates vary a...
The use of mixture models for estimating the size of an elusive population when capture rates vary a...
The method of moments (MM) has been widely used for parametric estimation, as it is often computatio...
Population size estimation with discrete or nonparametric mixture models is considered, and reliable...
ABSTRACT: Population size estimation is relevant to social and ecological sciences. Exhaustive manua...
We introduce a new Bayesian non-parametric method based on Dirichlet process mixtures for estimating...
In many fields of study scientists are interested in estimating the number of unobserved classes. ...