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ibis.iSDM submission #35

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38 changes: 38 additions & 0 deletions inst/extdata/packages/ibisiSDM.yaml
Original file line number Diff line number Diff line change
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name: ibis.iSDM
title: An Integrated model for BiodIversity distribution projectionS
version: 0.1.0
author: "Martin Jung, Maximilian Hesselbarth"
maintainer: Martin Jung <[email protected]>
cran: no
repository: https://github.com/iiasa/ibis.iSDM
description: "The ibis.iSDM package provides a series of convenience functions
to fit integrated Species Distribution Models (iSDMs). With integrated models
we generally refer to SDMs that incorporate information from different
biodiversity datasets, external parameters such as priors or offsets with
respect to certain variables and regions. It is highly modular and contains
several helper functions to facilitate model inference and projection, as well as
wrappers to other existing models."
occ_acquisition: no
occ_cleaning: yes
data_integration: yes
env_collinearity: yes
env_process: yes
bias: yes
study_region: yes
backg_sample: yes
data_partitioning: no
mod_fit: yes
mod_tuning: yes
mod_ensemble: yes
mod_stack: yes
mod_evaluate: yes
mod_multispecies: no
mod_mechanistic: yes
pred_general: yes
pred_extrapolation: yes
pred_inspect: yes
post_processing: yes
gui: no
metadata: yes
manuscript_citation: "Jung, M. (2023). An integrated species distribution modelling framework for heterogeneous biodiversity data. Ecological Informatics, 102127."
manuscript_doi: "10.1016/j.ecoinf.2023.102127"
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