New methods for species distribution models (SDMs) utilise presence–absence (PA) data to correct the sampling bias of presence‐only (PO) data in a spatial point process setting. These have been shown to improve species estimates when both datasets are large and dense. However, is a PA dataset that is smaller and patchier than hitherto examined able to do the same? Furthermore, when both datasets are relatively small, is there enough information contained within them to produce a useful estimate of species’ distributions? These attributes are common in many applications. A stochastic simulation was conducted to assess the ability of a pooled data SDM to estimate the distribution of species from inc...
International audience1. Building reliable species distribution models (SDMs) from presence-only inf...
A wide range of modelling algorithms is used by ecologists, conservation practitioners, and others t...
Species distribution modelling (SDM) has become an essential method in ecology ...
New methods for species distribution models (SDMs) utilise presence–absence (PA) data to correct the...
1. New methods for species distribution models (SDMs) utilise presence‐absence (PA) data to correct ...
Species distribution models are popular and widely applied ecological tools. Recent increases in dat...
Aim Integrated species distribution modelling has emerged as a useful tool for ecologists to exploit...
Digitized species occurrence data provide an unprecedented source of information for ecologists and ...
Species distribution models that only require presence data provide potentially inaccurate results d...
Two main sources of data for species distribution models (SDMs) are site-occupancy (SO) data from pl...
Species distribution models (SDMs) are widely used to predict and study distributions of species. Ma...
Species distribution models (SDMs) are widely used to predict and study distributions of species. Ma...
Species distribution models (SDMs) are an important tool in biogeography and ecology and are widely ...
Aim: Large databases of species records such as those generated through citizen science projects, ar...
Aim Species Distribution Models (SDM) can be used to predict the location of unknown populations fro...
International audience1. Building reliable species distribution models (SDMs) from presence-only inf...
A wide range of modelling algorithms is used by ecologists, conservation practitioners, and others t...
Species distribution modelling (SDM) has become an essential method in ecology ...
New methods for species distribution models (SDMs) utilise presence–absence (PA) data to correct the...
1. New methods for species distribution models (SDMs) utilise presence‐absence (PA) data to correct ...
Species distribution models are popular and widely applied ecological tools. Recent increases in dat...
Aim Integrated species distribution modelling has emerged as a useful tool for ecologists to exploit...
Digitized species occurrence data provide an unprecedented source of information for ecologists and ...
Species distribution models that only require presence data provide potentially inaccurate results d...
Two main sources of data for species distribution models (SDMs) are site-occupancy (SO) data from pl...
Species distribution models (SDMs) are widely used to predict and study distributions of species. Ma...
Species distribution models (SDMs) are widely used to predict and study distributions of species. Ma...
Species distribution models (SDMs) are an important tool in biogeography and ecology and are widely ...
Aim: Large databases of species records such as those generated through citizen science projects, ar...
Aim Species Distribution Models (SDM) can be used to predict the location of unknown populations fro...
International audience1. Building reliable species distribution models (SDMs) from presence-only inf...
A wide range of modelling algorithms is used by ecologists, conservation practitioners, and others t...
Species distribution modelling (SDM) has become an essential method in ecology ...