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Source Partitioning Using Stable Isotopes: Coping with Too Much Variation
Authors:Andrew C. Parnell  Richard Inger  Stuart Bearhop  Andrew L. Jackson
Affiliation:1. School of Mathematical Sciences, University College Dublin, Dublin, Ireland.; 2. Centre for Ecology and Conservation, School of Biosciences, University of Exeter, Penryn, Cornwall, United Kingdom.; 3. Department of Zoology, School of Natural Sciences, Trinity College Dublin, Dublin, Ireland.;University of Bristol, United Kingdom
Abstract:

Background

Stable isotope analysis is increasingly being utilised across broad areas of ecology and biology. Key to much of this work is the use of mixing models to estimate the proportion of sources contributing to a mixture such as in diet estimation.

Methodology

By accurately reflecting natural variation and uncertainty to generate robust probability estimates of source proportions, the application of Bayesian methods to stable isotope mixing models promises to enable researchers to address an array of new questions, and approach current questions with greater insight and honesty.

Conclusions

We outline a framework that builds on recently published Bayesian isotopic mixing models and present a new open source R package, SIAR. The formulation in R will allow for continued and rapid development of this core model into an all-encompassing single analysis suite for stable isotope research.
Keywords:
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