We explore the estimation of uncertainty in evolutionary parameters using a recently devised approach for resampling entire additive genetic variance–covariance 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 co...
Genetic variances and covariances, summarised in G matrices, are key determinants of the course of a...
Accurate and fast estimation of genetic parameters that underlie quantitative traits using mixed lin...
Evolutionary constraint results from the interaction between the distribution of available genetic v...
We explore the estimation of uncertainty in evolutionary parameters using a recently devised approac...
In an Expectation-Maximization type Restricted Maximum Likelihood (REML) procedure, the estimation...
The additive genetic variance–covariance matrix (G) summarizes the multivariate genetic relationship...
The additive genetic variance-covariance matrix (G) summarizes the multivariate genetic relationship...
Predicting the responses to natural selection is one of the key goals of evolutionary biology. Two o...
Residual Maximum Likelihood (REML) analysis is the most widely used method to estimate variance comp...
International audienceIn an Expectation-Maximization type Restricted Maximum Likelihood (REML) proce...
Not AvailableResidual Maximum Likelihood (REML) analysis is the most widely used method to estimate ...
MBM is supported by a University Research Fellowship from the Royal Society (London). KM is supporte...
We study variance estimation and associated confidence intervals for parameters characterizing genet...
We estimated mutational variance-covariance matrices, M, for wing shape and size in two genotypes of...
The distribution of genetic variance in multivariate phenotypes is characterized by the empirical sp...
Genetic variances and covariances, summarised in G matrices, are key determinants of the course of a...
Accurate and fast estimation of genetic parameters that underlie quantitative traits using mixed lin...
Evolutionary constraint results from the interaction between the distribution of available genetic v...
We explore the estimation of uncertainty in evolutionary parameters using a recently devised approac...
In an Expectation-Maximization type Restricted Maximum Likelihood (REML) procedure, the estimation...
The additive genetic variance–covariance matrix (G) summarizes the multivariate genetic relationship...
The additive genetic variance-covariance matrix (G) summarizes the multivariate genetic relationship...
Predicting the responses to natural selection is one of the key goals of evolutionary biology. Two o...
Residual Maximum Likelihood (REML) analysis is the most widely used method to estimate variance comp...
International audienceIn an Expectation-Maximization type Restricted Maximum Likelihood (REML) proce...
Not AvailableResidual Maximum Likelihood (REML) analysis is the most widely used method to estimate ...
MBM is supported by a University Research Fellowship from the Royal Society (London). KM is supporte...
We study variance estimation and associated confidence intervals for parameters characterizing genet...
We estimated mutational variance-covariance matrices, M, for wing shape and size in two genotypes of...
The distribution of genetic variance in multivariate phenotypes is characterized by the empirical sp...
Genetic variances and covariances, summarised in G matrices, are key determinants of the course of a...
Accurate and fast estimation of genetic parameters that underlie quantitative traits using mixed lin...
Evolutionary constraint results from the interaction between the distribution of available genetic v...