Model selection and parameter inference in phylogenetics using nested sampling
收藏DataONE2020-06-30 更新2025-07-19 收录
下载链接:
https://search.dataone.org/view/sha256:812961f9262ee5a5e330aaaa7a0a49d89f21f3e13fcfd1edec9e71be5c8274af
下载链接
链接失效反馈官方服务:
资源简介:
Bayesian inference methods rely on numerical algorithms for both model selection and parameter inference. In general, these algorithms require a high computational effort to yield reliable estimates. One of the major challenges in phylogenetics is the estimation of the marginal likelihood. This quantity is commonly used for comparing different evolutionary models, but its calculation, even for simple models, incurs high computational cost. Another interesting challenge relates to the estimation of the posterior distribution. Often, long Markov chains are required to get sufficient samples to carry out parameter inference, especially for tree distributions. In general, these problems are addressed separately by using different procedures. Nested sampling (NS) is a Bayesian computation algorithm which provides the means to estimate marginal likelihoods together with their uncertainties, and to sample from the posterior distribution at no extra cost. The methods currently used in phy...
创建时间:
2025-07-04



