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2013
DOI: 10.1371/journal.pone.0079295
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Predicting the Distribution Pattern of Small Carnivores in Response to Environmental Factors in the Western Ghats

Abstract: Due to their secretive habits, predicting the pattern of spatial distribution of small carnivores has been typically challenging, yet for conservation management it is essential to understand the association between this group of animals and environmental factors. We applied maximum entropy modeling (MaxEnt) to build distribution models and identify environmental predictors including bioclimatic variables, forest and land cover type, topography, vegetation index and anthropogenic variables for six small carniv… Show more

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Cited by 61 publications
(47 citation statements)
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References 29 publications
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“…We compared 18 MaxEnt models to determine differences in the two datasets concerning the environmental and infrastructure covariates that explain the distribution of values. We used the permutation importance metric to understand the contribution of each covariate to the MaxEnt model, which contrary to the per cent contribution, does not depend on the order in which the covariates are entered into the model (Kalle, Ramesh, Qureshi, & Sankar, 2013). The MaxEnt models for all values in each dataset indicate that the location of values in Flickr was mainly explained by distance to motorized access, while the location of values in the PPGIS dataset was determined primarily by distance to mountain tops, glaciers and trails (Table 1).…”
Section: Resultsmentioning
confidence: 99%
“…We compared 18 MaxEnt models to determine differences in the two datasets concerning the environmental and infrastructure covariates that explain the distribution of values. We used the permutation importance metric to understand the contribution of each covariate to the MaxEnt model, which contrary to the per cent contribution, does not depend on the order in which the covariates are entered into the model (Kalle, Ramesh, Qureshi, & Sankar, 2013). The MaxEnt models for all values in each dataset indicate that the location of values in Flickr was mainly explained by distance to motorized access, while the location of values in the PPGIS dataset was determined primarily by distance to mountain tops, glaciers and trails (Table 1).…”
Section: Resultsmentioning
confidence: 99%
“…We used the terrain function in Program R package raster (Hijmans 2016) to calculate slope, roughness (the difference between the maximum and minimum elevation value of a cell and its surrounding neighbors), and aspect. We transformed aspect to a continuous variable between zero and one by taking the absolute value of degrees after normalization (McCune et al 2002;Kalle et al 2013). This transformed aspect depicts incident radiation, but can be interpreted as ''southness'' because the value approaches zero at northerly aspects and one at southerly aspects.…”
Section: Environmental Variablesmentioning
confidence: 99%
“…However, some other species show close affinity with human habitation. For example, scrubland close and areas close to human habitation supports occurrence of Jungle cat (Felis chaus) [27,28,29]. Maharjan et al [30] highlighted distance from settlement area play a significant role in predicting the distribution of common leopard in the Shivpuri Nagarjun National Park, Nepal.…”
Section: Discussionmentioning
confidence: 99%