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      partR2: partitioning R 2 in generalized linear mixed models

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          Abstract

          The coefficient of determination R 2 quantifies the amount of variance explained by regression coefficients in a linear model. It can be seen as the fixed-effects complement to the repeatability R (intra-class correlation) for the variance explained by random effects and thus as a tool for variance decomposition. The R 2 of a model can be further partitioned into the variance explained by a particular predictor or a combination of predictors using semi-partial (part) R 2 and structure coefficients, but this is rarely done due to a lack of software implementing these statistics. Here, we introduce partR2, an R package that quantifies part R 2 for fixed effect predictors based on (generalized) linear mixed-effect model fits. The package iteratively removes predictors of interest from the model and monitors the change in the variance of the linear predictor. The difference to the full model gives a measure of the amount of variance explained uniquely by a particular predictor or a set of predictors. partR2 also estimates structure coefficients as the correlation between a predictor and fitted values, which provide an estimate of the total contribution of a fixed effect to the overall prediction, independent of other predictors. Structure coefficients can be converted to the total variance explained by a predictor, here called ‘inclusive’ R 2, as the square of the structure coefficients times total R 2. Furthermore, the package reports beta weights (standardized regression coefficients). Finally, partR2 implements parametric bootstrapping to quantify confidence intervals for each estimate. We illustrate the use of partR2 with real example datasets for Gaussian and binomial GLMMs and discuss interactions, which pose a specific challenge for partitioning the explained variance among predictors.

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          Fitting Linear Mixed-Effects Models Usinglme4

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            A general and simple method for obtainingR2from generalized linear mixed-effects models

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              Climatologies at high resolution for the earth’s land surface areas

              High-resolution information on climatic conditions is essential to many applications in environmental and ecological sciences. Here we present the CHELSA (Climatologies at high resolution for the earth’s land surface areas) data of downscaled model output temperature and precipitation estimates of the ERA-Interim climatic reanalysis to a high resolution of 30 arc sec. The temperature algorithm is based on statistical downscaling of atmospheric temperatures. The precipitation algorithm incorporates orographic predictors including wind fields, valley exposition, and boundary layer height, with a subsequent bias correction. The resulting data consist of a monthly temperature and precipitation climatology for the years 1979–2013. We compare the data derived from the CHELSA algorithm with other standard gridded products and station data from the Global Historical Climate Network. We compare the performance of the new climatologies in species distribution modelling and show that we can increase the accuracy of species range predictions. We further show that CHELSA climatological data has a similar accuracy as other products for temperature, but that its predictions of precipitation patterns are better.
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                Author and article information

                Contributors
                Journal
                PeerJ
                PeerJ
                peerj
                peerj
                PeerJ
                PeerJ Inc. (San Diego, USA )
                2167-8359
                25 May 2021
                2021
                : 9
                : e11414
                Affiliations
                [1 ]Institute of Ecology and Evolution, Friedrich-Schiller Universität Jena , Jena, Germany
                [2 ]Institute of Evolutionary Biology, University of Edinburgh , Edinburgh, United Kingdom
                [3 ]Evolution & Ecology Research Centre and School of Biological, Earth and Environmental Sciences, University of New South Wales , Sydney, Australia
                Article
                11414
                10.7717/peerj.11414
                8162244
                34113487
                2ea4db65-84bd-4058-b823-3758e0a72371
                ©2021 Stoffel et al.

                This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, reproduction and adaptation in any medium and for any purpose provided that it is properly attributed. For attribution, the original author(s), title, publication source (PeerJ) and either DOI or URL of the article must be cited.

                History
                : 28 July 2020
                : 15 April 2021
                Funding
                Funded by: German Research Foundation (DFG)
                Award ID: INST 215/543-1
                Award ID: 396782608
                Funded by: ARC Discovery Project
                Award ID: DP180100818
                Martin A. Stoffel and Holger Schielzeth were supported by the German Research Foundation (DFG) as part of the SFB TRR 212 (NC 3) (funding INST 215/543-1, 396782608). Shinichi Nakagawa was supported by the ARC Discovery Project grant (DP180100818). The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.
                Categories
                Animal Behavior
                Computational Biology
                Ecology
                Statistics
                Computational Science

                semi-partial coefficient of determination,generalized linear mixed-effects models,variance component analysis,structure coefficients,r2,parametric bootstrapping,partitioning r2,r-square

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