Quantifying inter- and intra-population niche variability using hierarchical bayesian stable isotope mixing models
about
Estimating the diets of animals using stable isotopes and a comprehensive Bayesian mixing modelEffects of demineralization on the stable isotope analysis of bone samplesUtilization of ancient permafrost carbon in headwaters of Arctic fluvial networksPredicting species' vulnerability in a massively perturbed system: the fishes of Lake Turkana, KenyaMerging resource availability with isotope mixing models: the role of neutral interaction assumptionsSeasonal and individual variation in the use of rail-associated food attractants by grizzly bears (Ursus arctos) in a national park.Reappraisal of the Trophic Ecology of One of the World's Most Threatened Spheniscids, the African Penguin.Fine-scale behavioural differences distinguish resource use by ecomorphs in a closed ecosystem.Source partitioning using stable isotopes: coping with too much variation.Comparing isotopic niche widths among and within communities: SIBER - Stable Isotope Bayesian Ellipses in R.A hypothesis-testing framework for studies investigating ontogenetic niche shifts using stable isotope ratiosUsing stable isotope analysis to understand the migration and trophic ecology of northeastern Pacific white sharks (Carcharodon carcharias).Pre-partum diet of adult female bearded seals in years of contrasting ice conditions.Estimating niche width using stable isotopes in the face of habitat variability: a modelling case study in the marine environmentIsotopic niche mirrors trophic niche in a vertebrate island invader.The marine side of a terrestrial carnivore: intra-population variation in use of allochthonous resources by arctic foxes.Inference of cross-level interaction between genes and contextual factors in a matched case-control metabolic syndrome study: a Bayesian approachIndividual diet has sex-dependent effects on vertebrate gut microbiota.Bayesian estimation of predator diet composition from fatty acids and stable isotopes.Experimentally derived δ¹³C and δ¹⁵N discrimination factors for gray wolves and the impact of prior information in Bayesian mixing modelsIsotopic niche variation in a higher trophic level ectotherm: highlighting the role of succulent plants in desert food webs.A Fatty Acid Based Bayesian Approach for Inferring Diet in Aquatic Consumers.Sensitivity of fluvial sediment source apportionment to mixing model assumptions: A Bayesian model comparison.Effects of sexual dimorphism and landscape composition on the trophic behavior of Greater Prairie-Chicken.Mercury in gray wolves (Canis lupus) in Alaska: increased exposure through consumption of marine prey.Non-reliance of metazoans on stromatolite-forming microbial mats as a food resource.Incorporating temporally dynamic baselines in isotopic mixing models.Detrital shadows: estuarine food web connectivity depends on fluvial influence and consumer feeding mode.Unifying error structures in commonly used biotracer mixing models.The application of Bayesian hierarchical models to quantify individual diet specialization.Biological impacts of local vs. regional land use on a small tributary of the Seine River (France): insights from a food web approach based on stable isotopes.Specialized morphology corresponds to a generalist diet: linking form and function in smashing mantis shrimp crustaceans.Technical note: A linear model for predicting δ13 Cprotein.Diet-tissue stable isotope (Δ(13)C and Δ(15)N) discrimination factors for multiple tissues from terrestrial reptiles.Beyond simple linear mixing models: process-based isotope partitioning of ecological processes.Terrestrial, benthic, and pelagic resource use in lakes: results from a three-isotope Bayesian mixing model.Evaluating δ(15)N-body size relationships across taxonomic levels using hierarchical models.More than a corridor: use of a main stem stream as supplemental foraging habitat by a brook trout metapopulation.Species versus guild level differentiation revealed across the annual cycle by isotopic niche examination.Grazer responses to variable macroalgal resource conditions facilitate habitat structuring.
P2860
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P2860
Quantifying inter- and intra-population niche variability using hierarchical bayesian stable isotope mixing models
description
2009 nî lūn-bûn
@nan
2009 թուականին հրատարակուած գիտական յօդուած
@hyw
2009 թվականին հրատարակված գիտական հոդված
@hy
2009年の論文
@ja
2009年論文
@yue
2009年論文
@zh-hant
2009年論文
@zh-hk
2009年論文
@zh-mo
2009年論文
@zh-tw
2009年论文
@wuu
name
Quantifying inter- and intra-p ...... n stable isotope mixing models
@ast
Quantifying inter- and intra-p ...... n stable isotope mixing models
@en
Quantifying inter- and intra-p ...... n stable isotope mixing models
@en-gb
Quantifying inter- and intra-p ...... n stable isotope mixing models
@nl
type
label
Quantifying inter- and intra-p ...... n stable isotope mixing models
@ast
Quantifying inter- and intra-p ...... n stable isotope mixing models
@en
Quantifying inter- and intra-p ...... n stable isotope mixing models
@en-gb
Quantifying inter- and intra-p ...... n stable isotope mixing models
@nl
altLabel
Quantifying Inter- and Intra-P ...... n Stable Isotope Mixing Models
@en
prefLabel
Quantifying inter- and intra-p ...... n stable isotope mixing models
@ast
Quantifying inter- and intra-p ...... n stable isotope mixing models
@en
Quantifying inter- and intra-p ...... n stable isotope mixing models
@en-gb
Quantifying inter- and intra-p ...... n stable isotope mixing models
@nl
P2093
P2860
P3181
P1433
P1476
Quantifying inter- and intra-p ...... n stable isotope mixing models
@en
P2093
Brice X Semmens
Chris T Darimont
Eric J Ward
Jonathan W Moore
P2860
P3181
P356
10.1371/JOURNAL.PONE.0006187
P407
P577
2009-01-01T00:00:00Z