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Data from: Bayesian total-evidence dating reveals the recent crown radiation of penguins
负责人:
关键词:
divergence times;MCMC;phylogenetics;birth-death process;calibration
DOI:
doi:10.5061/dryad.44pf8
摘要:
l occurrence dates. We incorporate the FBD model and a model of morphological trait evolution into a Bayesian total-evidence approach to dating species
Data from: How do foragers decide when to leave a patch? A test of alternative models under natural and experimental conditions
负责人:
Marshall, Harry H.
关键词:
Bayesian-updating habitat predictability learning marginal value theorem primate patch-departure-rules
DOI:
doi:10.5061/dryad.3vt0s
摘要:
-departure rules predicted by fixed-rule, pMVT, Bayesian-updating and learning models against one another, using patch residency times recorded from 54
Fully Bayesian Analysis of RNA-seq Counts for the Detection of Gene Expression Heterosis
负责人:
关键词:
Genetics Molecular Biology Biotechnology 69999 Biological Sciences not elsewhere classified 19999 Mathematical Sciences not elsewhere classified 110309 Infectious Diseases Plant Biology
DOI:
doi:10.6084/m9.figshare.6949499
摘要:
distributions for p-values under these null hypotheses. Thus, we develop a general hierarchical model for count data and a fully Bayesian analysis in which an efficient
Data from: Identifying drivers of spatial variation in occupancy with limited replication camera trap data
负责人:
关键词:
occupancy model;Bayesian modeling;Serengeti;camera trap
DOI:
doi:10.5061/dryad.34kb373
摘要:
nt ecological quantities. These models account for imperfect detection using a latent variable to distinguish between true presence/absence and observed
Data from: Total-evidence dating under the fossilized birth-death process
负责人:
关键词:
Bayesian phylogenetic inference;relaxed clock;MCMC;birth-death process;total-evidence dating;tree prior
DOI:
doi:10.5061/dryad.26820
摘要:
s been used to model speciation, extinction and fossilization rates that can vary over time in a piecewise manner. So far, sampling of extant and fossil taxa
Data from: Causal reasoning in rats' behaviour systems
负责人:
关键词:
Bayesian networks;Rattus norvegicus;cognitive modelling;causal reasoning;behaviour systems;Causal Model Theory
DOI:
doi:10.5061/dryad.20h4r
摘要:
e assumptions, with formal help from Bayesian Networks, self-production of the Tone should reduce expectation of alternative causes, including Light, and thei
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:
s computing time than Bayesian hierarchical generalized linear model, efficient mixed model association (EMMA) and least angle regression plus empirical Bayes
Data from: Penalized likelihood methods improve parameter estimates in occupancy models
负责人:
关键词:
penalized likelihood;boundary estimates;maximum likelihood;summer 2011;occupancy modeling;detection probability;parameter estimation
DOI:
doi:10.5061/dryad.t40f2
摘要:
in ridge regression and Bayesian approaches, and we compare them to a penalty developed for occupancy models in prior work. 3. We examine the bias, varia
Data from: Assessing parameter identifiability in phylogenetic models using Data Cloning
负责人:
关键词:
Data Cloning;Bayesian estimation in Phylogenetics;Parameter Identifiability;maximum likelihood
DOI:
doi:10.5061/dryad.rr6400b4
摘要:
ty while investigating complex modeling scenarios, where getting closed-form expressions in a probabilistic study is complicated. Furthermore, here we also show how DC
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:
in non-model systems. Inferential tools for historical demography given these datasets are, at present, underdeveloped. In particular, approximate Bayesian

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