Importance sampling on coalescent histories. II: subdivided population models

Citation
De Iorio, Maria et C. Griffiths, Robert, Importance sampling on coalescent histories. II: subdivided population models, Advances in applied probability , 36(1), 2004, pp. 434-454
ISSN journal
00018678
Volume
36
Issue
1
Year of publication
2004
Pages
434 - 454
Database
ACNP
SICI code
Abstract
De lorio and Griffith (2004) developed a new method of constructing sequential importance-sampling proposal distributions on coalescent histories of a sample of genes for computing the likelihood of a type configuration of genes in the sample by simulation. The method is based on approximating the diffusion-process generator describing the distribution of population gene frequencies, leading to an approximate sample distribution and finally to importance-sampling proposal distributions. This paper applies that method to construct an importance-sampling algorithm for computing the likelihood of samples of genes in subdivided population models. The importance-sampling technique of Stephens and Donnelly (2000) is thus extended to models with a Markov chain mutation mechanism between gene types and migration of genes between subpopulations. An algorithm for computing the likelihood of a sample configuration of genes from a subdivided population in an infinitely-many-alleles model of mutation is derived, extending Ewens's (1972) sampling formula in a single population. Likelihood calculation and ancestral inference in gene trees constructed from DNA sequences under the infinitely-many-sites model are also studied. The Griffiths-Tavare method of likelihood calculation in gene trees of Bahlo and Griffiths (2000) is improved for subdivided populations.