We consider a set of sample counts obtained by sampling arbitrary fractions of a finite volume containing an homogeneously dispersed population of identical objects. We report a Bayesian derivation of the posterior probability distribution of the population size using a binomial likelihood and non-conjugate, discrete uniform priors under sampling with or without replacement. Our derivation yields a computationally feasible formula that can prove useful in a variety of statistical problems involving absolute quantification under uncertainty. We implemented our algorithm in the R package dupiR and compared it with a previously proposed Bayesian method based on a Gamma prior. As a showcase, we demonstrate that our inference framework can be us...
We consider the following problem: estimate the size of a population marked with serial numbers afte...
We consider the following problem: estimate the size of a population marked with serial numbers afte...
In this article, we describe a Bayesian approach for the estimation of probability distribution of a...
We consider a set of sample counts obtained by sampling arbitrary fractions of a finite volume conta...
<div><p>We consider a set of sample counts obtained by sampling arbitrary fractions of a finite volu...
We consider a set of sample counts obtained by sampling arbitrary fractions of a finite volume conta...
We consider a set of sample counts obtained by sampling arbitrary fractions of a finite volume conta...
We consider the following problem: estimate the size of a population marked with serial numbers afte...
We consider the following problem: estimate the size of a population marked with serial numbers afte...
We consider the following problem: estimate the size of a population marked with serial numbers afte...
This package implements a Bayesian approach to infer population sizes from count data. The package t...
This package implements a Bayesian approach to infer population sizes from count data. The package t...
We consider the following problem: estimate the size of a population marked with serial numbers afte...
We consider the following problem: estimate the size of a population marked with serial numbers afte...
We consider the following problem: estimate the size of a population marked with serial numbers afte...
We consider the following problem: estimate the size of a population marked with serial numbers afte...
We consider the following problem: estimate the size of a population marked with serial numbers afte...
In this article, we describe a Bayesian approach for the estimation of probability distribution of a...
We consider a set of sample counts obtained by sampling arbitrary fractions of a finite volume conta...
<div><p>We consider a set of sample counts obtained by sampling arbitrary fractions of a finite volu...
We consider a set of sample counts obtained by sampling arbitrary fractions of a finite volume conta...
We consider a set of sample counts obtained by sampling arbitrary fractions of a finite volume conta...
We consider the following problem: estimate the size of a population marked with serial numbers afte...
We consider the following problem: estimate the size of a population marked with serial numbers afte...
We consider the following problem: estimate the size of a population marked with serial numbers afte...
This package implements a Bayesian approach to infer population sizes from count data. The package t...
This package implements a Bayesian approach to infer population sizes from count data. The package t...
We consider the following problem: estimate the size of a population marked with serial numbers afte...
We consider the following problem: estimate the size of a population marked with serial numbers afte...
We consider the following problem: estimate the size of a population marked with serial numbers afte...
We consider the following problem: estimate the size of a population marked with serial numbers afte...
We consider the following problem: estimate the size of a population marked with serial numbers afte...
In this article, we describe a Bayesian approach for the estimation of probability distribution of a...