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Data from: A hidden Markov model to identify and adjust for selection bias: an example involving mixed migration strategies
负责人:
关键词:
winter severity;Bayesian;white-tailed deer;Migration;state-space;partially observed state;latent variable;1991-2006;Odocoileus virginianus
DOI:
doi:10.5061/dryad.4430n
摘要:
s, and in ecology, telemetry studies with significant habitat-induced probabilities of missed locations. This problem can be overcome by modeling selection
Data from: A novel Bayesian method for inferring and interpreting the dynamics of adaptive landscapes from phylogenetic comparative data
负责人:
关键词:
Macroevolution;Reversible-jump models;Ornstein-Uhlenbeck models;Comparative Methods;Bayou
DOI:
doi:10.5061/dryad.t342m
摘要:
phylogenetic comparative methods. Widely used Ornstein-Uhlenbeck (OU) models can describe an adaptive process of divergence and selection. However, inference of the dynamics
Data from: Demographic model selection using random forests and the site frequency spectrum
负责人:
关键词:
ABC;Haplotrema vancouverense;phylogeography;Landscape Genetics;Invertebrates
DOI:
doi:10.5061/dryad.2j27b
摘要:
to next-generation sequencing (NGS) data sets. We implement here several improvements to overcome these difficulties. We use a Random Forest (RF) classifier for model selection
Data from: ABC inference of multi-population divergence with admixture from unphased population genomic data
负责人:
关键词:
gene flow;phylogeography;approximate Bayesian computation (ABC);Biorhiza pallida;Next Generation Sequencing;speciation
DOI:
doi:10.5061/dryad.80m5b
摘要:
t are now attainable from non-model taxa through current genomic sequencing technologies. We develop and test an ABC framework for model selection and parameter estimati
Data from: Motion analysis of non-model organisms using a hierarchical model: influence of setup enclosure dimensions on gait parameters of Swinhoe
负责人:
关键词:
generalized linear model;Bayesian statistics;PyMC3;None;Motion analysis;Tamiops swinhoei;Python
DOI:
doi:10.5061/dryad.10rn5
摘要:
ce of researchers to intuitively select an enclosure with dimensions assumed as “non-constraining”. Hierarchical models can easily be designed to cope with limited
Data from: Bridging inter- and intraspecific trait evolution with a hierarchical Bayesian approach
负责人:
关键词:
intraspecific variance;comparative phylogenetics;Macroevolution;Markov chain Monte Carlo;JIVE;hierarchical Bayesian model;niche breadth
DOI:
doi:10.5061/dryad.n4vp0
摘要:
of trait evolution by accounting for both trait mean and variance. Here, we present a model of phenotypic trait evolution using a hierarchical Bayesian approach tha
Data from: Accurate genomic prediction of Coffea canephora in multiple environments using whole-genome statistical models
负责人:
Garcia, Antonio
关键词:
Genotype-by-sequencing
DOI:
doi:10.5061/dryad.1139fm7
摘要:
the Bayesian methods showed a modest improvement over other methods, at the cost of more computation time. As expected, predicti
Data from: Bayesian methods outperform parsimony but at the expense of precision in the estimation of phylogeny from discrete morphological data
负责人:
关键词:
Likelihood;morphology;parsimony;Bayesian;phylogenetics
DOI:
doi:10.5061/dryad.10qf3
摘要:
s. This difference in the accuracy and precision of parsimony and Bayesian approaches to topology estimation needs to be considered when selecting a method
Data from: Human visual exploration reduces uncertainty about the sensed world
负责人:
关键词:
salience;working memory;Bayesian;attention;active inference
DOI:
doi:10.5061/dryad.ph104
摘要:
d Bayesian model comparison to compare Markov decision process (MDP) models of scan-paths that did - and did not - contain the epistemic, uncertainty-resolving imperatives
Data from: pLARmEB: integration of least angle regression with empirical Bayes for multilocus genome-wide association studies
负责人:
关键词:
DOI:
doi:10.5061/dryad.sk652
摘要:
matrix as polygenic background control. The selected SNPs in multilocus model were further detected for their association with the trait by empirical Bayes

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