2006
DOI: 10.2193/0022-541x(2006)70[324:sdatfc]2.0.co;2
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Study Designs and Tests for Comparing Resource Use and Availability II

Abstract: We review 87 articles published in the Journal of Wildlife Management from 2000 to 2004 to assess the current state of practice in the design and analysis of resource selection studies. Articles were classified into 4 study designs. In design 1, data are collected at the population level because individual animals are not identified. Individual animal selection may be assessed in designs 2 and 3. In design 2, use by each animal is recorded, but availability (or nonuse) is measured only at the population level.… Show more

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Cited by 323 publications
(193 citation statements)
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“…Biologists saw responses from spring rooster crowing counts (crows/ stop doubled), roadside surveys of broods in August (young/mile increased by 400%), and spring and summer rural mail carrier surveys (pheasants/100 km doubled) during the period of time in which land under CRP contract in our study area was disturbed through mid-contract management (S. Taylor, unpublished data). Recently, biologists have debated the use of compositional analysis for analyzing habitat preference (Thomas andTaylor 2006, Bingham et al 2007). Our results, using both discrete choice and compositional analysis to compare brood-site preference, did not differ in habitat preference rankings.…”
Section: Discussionmentioning
confidence: 99%
“…Biologists saw responses from spring rooster crowing counts (crows/ stop doubled), roadside surveys of broods in August (young/mile increased by 400%), and spring and summer rural mail carrier surveys (pheasants/100 km doubled) during the period of time in which land under CRP contract in our study area was disturbed through mid-contract management (S. Taylor, unpublished data). Recently, biologists have debated the use of compositional analysis for analyzing habitat preference (Thomas andTaylor 2006, Bingham et al 2007). Our results, using both discrete choice and compositional analysis to compare brood-site preference, did not differ in habitat preference rankings.…”
Section: Discussionmentioning
confidence: 99%
“…Candidate models were selected a priori to assess whether the ALS variables improved the predictive ability of the RSFs, either directly by quantifying cover, or through better forage estimates. Coefficients of the exponential RSFs were estimated from use-availability data in a mixed-effects logistic regression (design III data; Thomas and Taylor 2006) with moose ID as a random intercept (Gillies et al 2006). Mixedeffect logistic regressions were fitted using the library 'lme4' (Bates et al 2012) implemented in R (R Development Core Team 2011).…”
Section: Moose Habitat Selection Analysismentioning
confidence: 99%
“…Animals providing more data had more weight in the estimates of coefficients and standard errors for the final model (Thomas and Taylor 2006). To estimate standard errors (SEs) and 90 % confidence intervals (CIs) for model coefficients, we bootstrapped data from the individual animals 500 times (Manly 2007).…”
Section: Data Analysesmentioning
confidence: 99%
“…To estimate standard errors (SEs) and 90 % confidence intervals (CIs) for model coefficients, we bootstrapped data from the individual animals 500 times (Manly 2007). Bootstrapping individuals treated the animal as the experimental unit and ensured that we were estimating the correct error for population level selection (Thomas and Taylor 2006). Percentile-based CIs were reported, and coefficients with 90 % CIs that did not encompass 0.0 were considered statistically significant (α=0.10).…”
Section: Data Analysesmentioning
confidence: 99%