fastSTRUCTURE: Variational Inference of Population Structure in Large SNP Data Sets
Stanford University · University of Illinois Chicago · +2 more institutions
Abstract
Tools for estimating population structure from genetic data are now used in a wide variety of applications in population genetics. However, inferring population structure in large modern data sets imposes severe computational challenges. Here, we develop efficient algorithms for approximate inference of the model underlying the STRUCTURE program using a variational Bayesian framework. Variational methods pose the problem of computing relevant posterior distributions as an optimization problem, allowing us to build on recent advances in optimization theory to develop fast inference tools. In addition, we propose useful heuristic scores to identify the number of populations represented in a data set and a new…
Citation impact
- FWCI
- 54.42
- Percentile
- 100%
- References
- 39
Authors
3Topics & keywords
- Biology
- Inference
- Genetics
- SNP
- Population
- Computational biology
- Population structure
- Population genetics