Bayesian stable isotope mixing models
File Type:
PDFItem Type:
Journal ArticleDate:
2013Access:
OpenAccessCitation:
Parnell, A.C., Phillips, D.L., Bearhop, S., Semmens, B.X., Ward, E.J., Moore, J.W., Jackson, A.L. & Inger, R., Bayesian stable isotope mixing models, Environmetrics, 24, 6, 2013, 387 - 399Download Item:
Abstract:
In this paper, we review recent advances in stable isotope mixing models (SIMMs) and place them into an overarching Bayesian statistical framework, which allows for several useful extensions. SIMMs are used to quantify the proportional contributions of various sources to a mixture. The most widely used application is quantifying the diet of organisms based on the food sources they have been observed to consume. At the centre of the multivariate statistical model we propose is a compositional mixture of the food sources corrected for various metabolic factors. The compositional component of our model is based on the isometric log-ratio transform. Through this transform, we can apply a range of time series and non-parametric smoothing relationships. We illustrate our models with three case studies based on real animal dietary behaviour.
Sponsor
Grant Number
Higher Education Authority (HEA) PRTLI Cycle 4
Author's Homepage:
http://people.tcd.ie/jacksoanhttp://people.tcd.ie/djkelly
Description:
PUBLISHED
Author: Jackson, Andrew; Kelly, David
Type of material:
Journal ArticleCollections
Series/Report no:
Environmetrics24
6
Availability:
Full text availableKeywords:
stable isotope mixing modelsSubject (TCD):
Smart & Sustainable Planet , Anthropogenic Impact on ecosystems , Biodiversity and Conservation , Ecology , Environmental Impacts, Interactions , Wetland EcosystemsDOI:
http://dx.doi.org/10.1002/env.2221Metadata
Show full item recordLicences: