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Jane Elith

Researcher at University of Melbourne

Publications -  106
Citations -  51224

Jane Elith is an academic researcher from University of Melbourne. The author has contributed to research in topics: Environmental niche modelling & Population. The author has an hindex of 65, co-authored 104 publications receiving 41554 citations. Previous affiliations of Jane Elith include Helmholtz Centre for Environmental Research - UFZ.

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Collinearity: a review of methods to deal with it and a simulation study evaluating their performance

TL;DR: It was found that methods specifically designed for collinearity, such as latent variable methods and tree based models, did not outperform the traditional GLM and threshold-based pre-selection and the value of GLM in combination with penalised methods and thresholds when omitted variables are considered in the final interpretation.
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Species Distribution Models: Ecological Explanation and Prediction Across Space and Time

TL;DR: Species distribution models (SDMs) as mentioned in this paper are numerical tools that combine observations of species occurrence or abundance with environmental estimates, and are used to gain ecological and evolutionary insights and to predict distributions across landscapes, sometimes requiring extrapolation in space and time.
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A working guide to boosted regression trees

TL;DR: This study provides a working guide to boosted regression trees (BRT), an ensemble method for fitting statistical models that differs fundamentally from conventional techniques that aim to fit a single parsimonious model.
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A statistical explanation of MaxEnt for ecologists

TL;DR: A new statistical explanation of MaxEnt is described, showing that the model minimizes the relative entropy between two probability densities defined in covariate space, which is likely to be a more accessible way to understand the model than previous ones that rely on machine learning concepts.