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      Comparison of Bayesian and numerical optimization-based diet estimation on herbivorous zooplankton

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          Abstract

          Consumer diet estimation with biotracer-based mixing models provides valuable information about trophic interactions and the dynamics of complex ecosystems. Here, we assessed the performance of four Bayesian and three numerical optimization-based diet estimation methods for estimating the diet composition of herbivorous zooplankton using consumer fatty acid (FA) profiles and resource library consisting of the results of homogeneous diet feeding experiments. The method performance was evaluated in terms of absolute errors, central probability interval checks, the success in identifying the primary resource in the diet, and the ability to detect the absence of resources in the diet. Despite occasional large inconsistencies, all the methods were able to identify the primary resource most of the time. The numerical optimization method QFASA using χ 2 (QFASA-CS) or Kullback­–Leibler (QFASA-KL) distance measures had the smallest absolute errors, most frequently found the primary resource, and adequately detected the absence of resources. While the Bayesian methods usually performed well, some of the methods produced ambiguous results and some had much longer computing times than QFASA. Therefore, we recommend using QFASA-CS or QFASA-KL. Our systematic tests showed that FA models can be used to accurately estimate complex dietary mixtures in herbivorous zooplankton.

          This article is part of the theme issue ‘The next horizons for lipids as ‘trophic biomarkers': evidence and significance of consumer modification of dietary fatty acids'.

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          The No‐U‐Turn sampler: adaptively setting path lengths in Hamiltonian Monte Carlo

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            R: A language and environment for statistical computing (3.4.4.)

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              Author and article information

              Contributors
              (View ORCID Profile)
              Journal
              Philosophical Transactions of the Royal Society B: Biological Sciences
              Phil. Trans. R. Soc. B
              The Royal Society
              0962-8436
              1471-2970
              August 03 2020
              June 15 2020
              August 03 2020
              : 375
              : 1804
              : 20190651
              Affiliations
              [1 ]Department of Biological and Environmental Science, University of Jyväskylä, Jyväskylä, Finland
              Article
              10.1098/rstb.2019.0651
              46b6ebe2-80fd-40ce-a6c8-17179c860501
              © 2020

              https://royalsociety.org/-/media/journals/author/Licence-to-Publish-20062019-final.pdf

              https://royalsociety.org/journals/ethics-policies/data-sharing-mining/

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