Genome-Wide Regression and Prediction with the BGLR Statistical Package
Colegio de Postgraduados · University of Alabama · +1 more institution
Abstract
Many modern genomic data analyses require implementing regressions where the number of parameters (p, e.g., the number of marker effects) exceeds sample size (n). Implementing these large-p-with-small-n regressions poses several statistical and computational challenges, some of which can be confronted using Bayesian methods. This approach allows integrating various parametric and nonparametric shrinkage and variable selection procedures in a unified and consistent manner. The BGLR R-package implements a large collection of Bayesian regression models, including parametric variable selection and shrinkage methods and semiparametric procedures (Bayesian reproducing kernel Hilbert spaces regressions, RKHS). The…
Citation impact
- FWCI
- 34.19
- Percentile
- 100%
- References
- 52
Authors
2Topics & keywords
- Categorical variable
- Computer science
- Bayesian probability
- Computational statistics
- Data mining
- R package
- Nonparametric statistics
- Parametric statistics