Model Selection is a key part of many ecological studies, with Akaike's Information Criterion (AIC) being by far the most commonly used technique for this purpose. Typically, a number of candidate models are defined a priori and ranked according to their expected out-of-sample performance. Model selection, however, only assesses the relative performance of the models and, as pointed out in a recent paper, a large proportion of ecology papers that use model selection do not assess the absolute fit of the 'best' model. In this paper, it is argued that assessing the absolute fit of the 'best' model alone does not go far enough. This is because a model that appears to perform well under model selection is also likely to appear to perform well u...
This data set was used in a study of the prevalence of uninformative parameters in model selection s...
We argue that model selection uncertainty should be fully incorporated into statistical inference wh...
Despite recent papers on problems associated with full-model and stepwise regression, their use is s...
Model Selection is a key part of many ecological studies, with Akaike’s Information Criterion (AIC) ...
Ecologists are increasingly applying model selection to their data analyses, primarily to compare re...
Information-theoretic approaches to model selection, such as Akaike's information criterion (AIC) an...
<p>Shown are information criteria for fit of models including the fixed and random effects of (A) <i...
Research in applied ecology provides scientific evidence to guide conservation policy and management...
Recently, researchers in several areas of ecology and evolution have begun to change the way in whic...
Summary 1. The ability to identify key ecological processes is important when solving applied prob...
Occupancy models are a vital tool for ecologists studying the patterns and drivers of species occurr...
1. Ecological count data typically exhibit complexities such as overdispersion and zero‐inflation, a...
In ecology, model selection is important for making sure that models used for conservation and manag...
Distribution models are used to predict the likelihood of occurrence or abundance of a species at lo...
In the wildlife literature there has been some recent criticism of statistical significance testing....
This data set was used in a study of the prevalence of uninformative parameters in model selection s...
We argue that model selection uncertainty should be fully incorporated into statistical inference wh...
Despite recent papers on problems associated with full-model and stepwise regression, their use is s...
Model Selection is a key part of many ecological studies, with Akaike’s Information Criterion (AIC) ...
Ecologists are increasingly applying model selection to their data analyses, primarily to compare re...
Information-theoretic approaches to model selection, such as Akaike's information criterion (AIC) an...
<p>Shown are information criteria for fit of models including the fixed and random effects of (A) <i...
Research in applied ecology provides scientific evidence to guide conservation policy and management...
Recently, researchers in several areas of ecology and evolution have begun to change the way in whic...
Summary 1. The ability to identify key ecological processes is important when solving applied prob...
Occupancy models are a vital tool for ecologists studying the patterns and drivers of species occurr...
1. Ecological count data typically exhibit complexities such as overdispersion and zero‐inflation, a...
In ecology, model selection is important for making sure that models used for conservation and manag...
Distribution models are used to predict the likelihood of occurrence or abundance of a species at lo...
In the wildlife literature there has been some recent criticism of statistical significance testing....
This data set was used in a study of the prevalence of uninformative parameters in model selection s...
We argue that model selection uncertainty should be fully incorporated into statistical inference wh...
Despite recent papers on problems associated with full-model and stepwise regression, their use is s...