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Open AccessJournal ArticleDOI

Kullback-Leibler information as a basis for strong inference in ecological studies

Kenneth P. Burnham, +1 more
- 12 Apr 2001 - 
- Vol. 28, Iss: 2, pp 111-119
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TLDR
An information-theoretic paradigm for analysis of ecological data, based on Kullback–Leibler information, that is an extension of likelihood theory and avoids the pitfalls of null hypothesis testing is described.
Abstract
We describe an information-theoretic paradigm for analysis of ecological data, based on Kullback–Leibler information, that is an extension of likelihood theory and avoids the pitfalls of null hypothesis testing. Information-theoretic approaches emphasise a deliberate focus on the a priori science in developing a set of multiple working hypotheses or models. Simple methods then allow these hypotheses (models) to be ranked from best to worst and scaled to reflect a strength of evidence using the likelihood of each model (gi), given the data and the models in the set (i.e. L(gi | data)). In addition, a variance component due to model-selection uncertainty is included in estimates of precision. There are many cases where formal inference can be based on all the models in the a priori set and this multi-model inference represents a powerful, new approach to valid inference. Finally, we strongly recommend inferences based on a priori considerations be carefully separated from those resulting from some form of data dredging. An example is given for questions related to age- and sex-dependent rates of tag loss in elephant seals (Mirounga leonina).

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Citations
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AIC model selection and multimodel inference in behavioral ecology: some background, observations, and comparisons

TL;DR: The information-theoretic (I-T) approaches to valid inference are outlined including a review of some simple methods for making formal inference from all the hypotheses in the model set (multimodel inference).
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Evaluating resource selection functions

TL;DR: A form of k -fold cross validation for evaluating prediction success is proposed for presence/available RSF models, which involves calculating the correlation between RSF ranks and area-adjusted frequencies for a withheld sub-sample of data.
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A brief guide to model selection, multimodel inference and model averaging in behavioural ecology using Akaike’s information criterion.

TL;DR: Akaike’s information criterion is provided, using recent examples from the behavioural ecology literature, a simple introductory guide to AIC: what it is, how and when to apply it and what it achieves.
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AIC model selection using Akaike weights

TL;DR: It is demonstrated that AIC values can be easily transformed to so-called Akaike weights, which can be directly interpreted as conditional probabilities for each model.
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