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Statistical inference / Bayesian statistics / Statistical theory / Estimation theory / Probability distributions / Coalescent theory / Bias of an estimator / Mixture model / Bayesian inference / Monte Carlo method / Maximum likelihood estimation / Marginal likelihood
Date: 2014-11-18 16:59:28
Statistical inference
Bayesian statistics
Statistical theory
Estimation theory
Probability distributions
Coalescent theory
Bias of an estimator
Mixture model
Bayesian inference
Monte Carlo method
Maximum likelihood estimation
Marginal likelihood

Improving the Accuracy of Demographic and Molecular Clock Model Comparison While Accommodating Phylogenetic Uncertainty Guy Baele,*,1 Philippe Lemey,1 Trevor Bedford,2 Andrew Rambaut,2 Marc A. Suchard,3,4,5 and Alexander

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