Simulation experiments are used widely throughout evolutionary biology and bioinformatics to compare models, promote methods, and test hypotheses. The biggest practical constraint on simulation experiments is the computational demand, particularly as the number of parameters increases. Given the extraordinary success of Monte Carlo methods for conducting inference in phylogenetics, and indeed throughout the sciences, we investigate ways in which Monte Carlo framework can be used to carry out simulation experiments more efficiently. The key idea is to sample parameter values for the experiments, rather than iterate through them exhaustively. Exhaustive analyses become completely infeasible when the number of parameters gets too large, wherea...
Phylogenetic comparative methods may fail to produce meaningful results when either the underlying m...
Phylogenetic comparative methods may fail to produce meaningful results when either the underlying m...
Monte Carlo methods have emerged as standard tools to do Bayesian statistical inference for sophisti...
Simulation experiments are used widely throughout evolutionary biology and bioinformatics to compare...
Simulation experiments are used widely throughout evolutionary biology and bioinformatics to compare...
Abstract.—Simulation experiments are usedwidely throughout evolutionary biology andbioinformatics to...
Abstract.—Simulation experiments are usedwidely throughout evolutionary biology andbioinformatics to...
Simulation experiments are used widely throughout evolutionary biology and bioinformatics to compare...
Abstract. — Simulation Experiments are used widely throughout evolutionary biology and bioinformatic...
Simulations often involve the use of model parameters which are unknown or uncertain. For this reaso...
Population genetics is a discipline within the biological sciences that is concerned with the change...
We observe n sequences at each of m sites, and assume that they have evolved from an ancestral seque...
We observe n sequences at each of m sites and assume that they have evolved from an ancestral sequen...
Abstract.—Biologists often compare average phenotypes of groups of species defined cladis-tically or...
Phylogenetic comparative methods may fail to produce meaningful results when either the underlying m...
Phylogenetic comparative methods may fail to produce meaningful results when either the underlying m...
Phylogenetic comparative methods may fail to produce meaningful results when either the underlying m...
Monte Carlo methods have emerged as standard tools to do Bayesian statistical inference for sophisti...
Simulation experiments are used widely throughout evolutionary biology and bioinformatics to compare...
Simulation experiments are used widely throughout evolutionary biology and bioinformatics to compare...
Abstract.—Simulation experiments are usedwidely throughout evolutionary biology andbioinformatics to...
Abstract.—Simulation experiments are usedwidely throughout evolutionary biology andbioinformatics to...
Simulation experiments are used widely throughout evolutionary biology and bioinformatics to compare...
Abstract. — Simulation Experiments are used widely throughout evolutionary biology and bioinformatic...
Simulations often involve the use of model parameters which are unknown or uncertain. For this reaso...
Population genetics is a discipline within the biological sciences that is concerned with the change...
We observe n sequences at each of m sites, and assume that they have evolved from an ancestral seque...
We observe n sequences at each of m sites and assume that they have evolved from an ancestral sequen...
Abstract.—Biologists often compare average phenotypes of groups of species defined cladis-tically or...
Phylogenetic comparative methods may fail to produce meaningful results when either the underlying m...
Phylogenetic comparative methods may fail to produce meaningful results when either the underlying m...
Phylogenetic comparative methods may fail to produce meaningful results when either the underlying m...
Monte Carlo methods have emerged as standard tools to do Bayesian statistical inference for sophisti...