2014
DOI: 10.1111/2041-210x.12306
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Power analysis for generalized linear mixed models in ecology and evolution

Abstract: ‘Will my study answer my research question?’ is the most fundamental question a researcher can ask when designing a study, yet when phrased in statistical terms – ‘What is the power of my study?’ or ‘How precise will my parameter estimate be?’ – few researchers in ecology and evolution (EE) try to answer it, despite the detrimental consequences of performing under- or over-powered research. We suggest that this reluctance is due in large part to the unsuitability of simple methods of power analysis (broadly de… Show more

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Cited by 177 publications
(189 citation statements)
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References 38 publications
(79 reference statements)
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“…Statistical power was calculated using simulated priming data produced by the sim.glmm package [39] in R [40]. For our simulated data set we assumed 15 repetitions per prime type (active, passive, baseline; see below).…”
Section: Methodsmentioning
confidence: 99%
“…Statistical power was calculated using simulated priming data produced by the sim.glmm package [39] in R [40]. For our simulated data set we assumed 15 repetitions per prime type (active, passive, baseline; see below).…”
Section: Methodsmentioning
confidence: 99%
“…For tests using the dichotomous EPDS depression risk measure, we drew on our observed data and estimated fixed and random effect parameter values to derive power estimates using a simulation-based approach in R as described by Johnson, Barry, Ferguson, and Müller (2015). Effect size ( f 2 ) estimates along with sample size and alpha values were entered into G*Power to arrive at estimates of the observed power for each test involving continuous outcomes.…”
Section: Resultsmentioning
confidence: 99%
“…Statistical power is one of a range of possible criteria used to inform the indicator selection and prioritisation process (Herzog et al, 2012;OECD, 2001;Sommerville et al, 2011). With recent advances in computational power and software, there is no excuse not to deploy and integrate power analyses into design and decision making to reduce the risk of potentially dreadful loss of efficiency, direct costs and opportunity costs (Field et al, 2007;Green and MacLeod, 2015;Johnson et al, 2015;Raffaelli and Moller, 2000). Knowing when there is enough evidence to change farming practice would also be very valuable, as experimentation can be expensive and can have several indirect costs (including the opportunity costs of not learning fast enough).…”
Section: Prioritising Indicators For Development and Implementationmentioning
confidence: 99%
“…This is often technically and logistically challenging, especially when treatment impacts vary from site to site (Raudenbush and Liu, 2000) and/or resources are limited (Lindenmayer and Likens, 2010;Magurran et al, 2010). Careful planning and executing of sophisticated analyses of monitoring data are recommended for identifying: cost-effective and robust designs (Field et al, 2007;Geijzendorffer et al, 2015;Johnson et al, 2015); monitoring efforts that have no realistic chance of detecting relevant changes, and options for improving them (Collen and Nicholson, 2014;Field et al, 2007;Legg and Nagy, 2006); and trade-offs between spatial and temporal replication (Rhodes and Jonz en, 2011;Urquhart et al, 1998).…”
Section: Introductionmentioning
confidence: 99%
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