International audienceSequential importance sampling algorithms have been defined to estimate likelihoods in models of ancestral population processes. However, these algorithms are based on features of the models with constant population size, and become inefficient when the population size varies in time, making likelihood-based inferences difficult in many demographic situations. In this work, we modify a previous sequential importance sampling algorithm to improve the efficiency of the likelihood estimation. Our procedure is still based on features of the model with constant size, but uses a resampling technique with a new resampling probability distribution depending on the pairwise composite likelihood. We tested our algorithm, called...
For prudent wildlife management based on population dynamics models, it is important to incorporate ...
Abstract: This paper develops the important distinction between tilted and simple importance samplin...
International audienceAn importance sampling algorithm for computing the likelihood of a sample of g...
International audienceSequential importance sampling algorithms have been defined to estimate likeli...
International audience• Model: The population evolves under a Wright-Fisher model. Hence, the sample...
Motivated by the statistical inference problem in population genetics, we present a general sequent...
Motivated by the statistical inference problem in population genetics, we present a new sequential i...
De Iorio and Griffiths (2004) developed a new method of constructing sequential importance-sampling ...
Importance sampling (IS) is a well-known Monte Carlo method, widely used to approximate a distributi...
The problem we consider is that of generating representative point sets from a distribution known up...
A resampling technique for probability-proportional-to size sampling designs is proposed. It is ess...
In this talk, we discuss the general problem of generating representative point sets from a distribu...
International audienceInference of demographic parameters using importance sampling on coalescence h...
. The Adaptive Multiple Importance Sampling algorithm is aimed at an optimal recycling of past simul...
This article introduces a new general method for genealogical inference that samples independent gen...
For prudent wildlife management based on population dynamics models, it is important to incorporate ...
Abstract: This paper develops the important distinction between tilted and simple importance samplin...
International audienceAn importance sampling algorithm for computing the likelihood of a sample of g...
International audienceSequential importance sampling algorithms have been defined to estimate likeli...
International audience• Model: The population evolves under a Wright-Fisher model. Hence, the sample...
Motivated by the statistical inference problem in population genetics, we present a general sequent...
Motivated by the statistical inference problem in population genetics, we present a new sequential i...
De Iorio and Griffiths (2004) developed a new method of constructing sequential importance-sampling ...
Importance sampling (IS) is a well-known Monte Carlo method, widely used to approximate a distributi...
The problem we consider is that of generating representative point sets from a distribution known up...
A resampling technique for probability-proportional-to size sampling designs is proposed. It is ess...
In this talk, we discuss the general problem of generating representative point sets from a distribu...
International audienceInference of demographic parameters using importance sampling on coalescence h...
. The Adaptive Multiple Importance Sampling algorithm is aimed at an optimal recycling of past simul...
This article introduces a new general method for genealogical inference that samples independent gen...
For prudent wildlife management based on population dynamics models, it is important to incorporate ...
Abstract: This paper develops the important distinction between tilted and simple importance samplin...
International audienceAn importance sampling algorithm for computing the likelihood of a sample of g...