2020
DOI: 10.1111/2041-210x.13523
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Incorporating time into the traditional correlational distributional modelling framework: A proof‐of‐concept using the Wood Thrush Hylocichla mustelina

Abstract: Detailed spatio‐temporal information about geographic distributions of species is critical for biodiversity analyses in conservation and planning. Traditional correlative modelling approaches use species observational data in model calibration and testing in a time‐averaged framework. This method averages environmental values through time to yield a single environmental value for each location. Although valuable for exploring distributions of species at a broad level, this averaging is one of myriad factors im… Show more

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Cited by 23 publications
(28 citation statements)
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“…Relatively recent winter sightings (after 2002) are very limited, with many of the older sightings observed in winter or south of the SIE being excluded from current models due to the lack of concurrent environmental data. Although the recognition that temporal sampling bias can result in environmental bias that may affect the model reliability, limited studies have investigated methods for correcting for the effect of temporal sampling bias (Ingenloff et al, 2020). It is challenging to correct for temporal sampling bias in the current data, as the problem is not the imbalanced sightings across time (e.g., higher sampling in summer than in winter), but the almost lack of sampling efforts from mid-March to mid-December (Supplementary Figure 1), particularly from high latitudes.…”
Section: Sighting Data Paucity and Spatiotemporal Biasesmentioning
confidence: 99%
“…Relatively recent winter sightings (after 2002) are very limited, with many of the older sightings observed in winter or south of the SIE being excluded from current models due to the lack of concurrent environmental data. Although the recognition that temporal sampling bias can result in environmental bias that may affect the model reliability, limited studies have investigated methods for correcting for the effect of temporal sampling bias (Ingenloff et al, 2020). It is challenging to correct for temporal sampling bias in the current data, as the problem is not the imbalanced sightings across time (e.g., higher sampling in summer than in winter), but the almost lack of sampling efforts from mid-March to mid-December (Supplementary Figure 1), particularly from high latitudes.…”
Section: Sighting Data Paucity and Spatiotemporal Biasesmentioning
confidence: 99%
“…It is also possible that differences between subpopulation niches are a result of assigning annual temperature values to presences that only occurred seasonally (or monthly) across the edges of the distribution (i.e., areas of vagrancy, Ingenloff and Peterson 2021). This is particularly relevant for highly mobile species like N. cepedianus that undertake large‐scale movements and show marked migratory patterns (Barnett et al 2011; Williams et al 2012; De Wysiecki et al 2020).…”
Section: Discussionmentioning
confidence: 99%
“…Due to the temporal aspect of the hypotheses tested here, I used a phenological approach to generating pseudoabsences (Ingenloff & Peterson, 2021 ). Briefly, for each species, I calculated the number of observations falling within each month.…”
Section: Methodsmentioning
confidence: 99%
“…For example, ENMs can identify areas at risk of invasion under future climates (Gong et al, 2020 ; Kistner‐Thomas, 2019 ) or identify high‐priority conservation targets (Garzon et al, 2021 ), which is critically important as the ranges of many threatened species might collapse in the near future (Lemoine, 2015 ). One shortcoming is that ENMs rarely account for phenology (Ingenloff & Peterson, 2021 ); many simply use mean annual temperature or precipitation (Booth et al, 2014 ; Title & Bemmels, 2018 ). The use of models that incorporate annual trends might miss spatiotemporal shifts in distribution because habitat suitability can change within a given year (Martinez‐Meyer et al, 2004 ).…”
Section: Introductionmentioning
confidence: 99%
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