Estimating sampling error of evolutionary statistics based on genetic covariance matrices using maximum likelihood
收藏DataONE2020-06-30 更新2025-06-14 收录
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We explore the estimation of uncertainty in evolutionary parameters using a recently devised approach for resampling entire additive genetic varianceâcovariance matrices (G). Large-sample theory shows that maximum-likelihood estimates (including restricted maximum likelihood, REML) asymptotically have a multivariate normal distribution, with covariance matrix derived from the inverse of the information matrix, and mean equal to the estimated G. This suggests that sampling estimates of G from this distribution can be used to assess the variability of estimates of G, and of functions of G. We refer to this as the REML-MVN method. This has been implemented in the mixed-model program WOMBAT. Estimates of sampling variances from REML-MVN were compared to those from the parametric bootstrap and from a Bayesian Markov chain Monte Carlo (MCMC) approach (implemented in the R package MCMCglmm). We apply each approach to evolvability statistics previously estimated for a large, 20-dimensional data...
创建时间:
2025-06-13



