Smooth Skyride through a Rough Skyline: Bayesian Coalescent-Based Inference of Population Dynamics
University of Washington · University of California, Los Angeles
Abstract
Kingman's coalescent process opens the door for estimation of population genetics model parameters from molecular sequences. One paramount parameter of interest is the effective population size. Temporal variation of this quantity characterizes the demographic history of a population. Because researchers are rarely able to choose a priori a deterministic model describing effective population size dynamics for data at hand, nonparametric curve-fitting methods based on multiple change-point (MCP) models have been developed. We propose an alternative to change-point modeling that exploits Gaussian Markov random fields to achieve temporal smoothing of the effective population size in a Bayesian framework. The main…
Citation impact
- FWCI
- 11.88
- Percentile
- 100%
- References
- 49
Authors
3Topics & keywords
- Population
- Coalescent theory
- Markov chain Monte Carlo
- Population size
- Markov chain
- Bayesian probability
- Smoothing
- Inference