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Provedor de dados:  ArchiMer
País:  France
Título:  "M2B" package in R: Deriving multiple variables from movement data to predict behavioural states with random forests
Autores:  Thiebault, Andrea
Dubroca, Laurent
Mullers, Ralf H. E.
Tremblay, Yann
Pistorius, Pierre A.
Data:  2018-06
Ano:  2018
Palavras-chave:  Cape gannet
Fisheries
GPS
Local enhancement
Machine learning
Onboard observers
Social interactions
Video cameras
Resumo:  1. The behaviour of individuals affect their distributions and is therefore fundamental in determining ecological patterns. While, the direct observation of behaviour is often limited due to logistical constraints, collection of movement data has been greatly facilitated through the development of bio-logging. Movement data obtained through tracking instrumentation may potentially constitute a relevant proxy to infer behaviour. 2. To infer behaviour from movement data is a key focus within the "movement ecology" discipline. Statistical learning constitutes a number of methods that can be used to assess the link between given variables from a fully informed training dataset and then predict the values on a non-informed variable. We chose the random forest algorithm for its high prediction accuracy and its ease of implementation. The strength of random forest partly lies in its ability to handle a very large number of variables. Our methodology is accordingly based on the derivation of multiple predictor variables from movement data over various temporal scales, to capture as much information as possible from changes and variations in movement. 3. The methodology is described in four steps, using examples on foraging seabirds and fishing vessels for illustration. The models showed very high prediction accuracy (92%-97%), thereby confirming the influence of behaviour on movement decisions and demonstrating the ability to derive multiple variables from movement data to predict behaviour with random forests. 4. The codes developed for this methodology are published in the "M2B" (Movement to Behaviour) R package, available at https://CRAN.R-project.org/package=m2b. They can be used and adapted to datasets where movement was sampled from a wide range of taxa, sampling schemes or tracking devices. Observations are needed for a subset of the data, but once the model is trained, it can be used on any dataset with similar movement data.
Tipo:  Text
Idioma:  Inglês
Identificador:  https://archimer.ifremer.fr/doc/00445/55683/57354.pdf

https://archimer.ifremer.fr/doc/00445/55683/57355.pdf

https://archimer.ifremer.fr/doc/00445/55683/57356.pdf

DOI:10.1111/2041-210X.12989

https://archimer.ifremer.fr/doc/00445/55683/
Editor:  Wiley
Formato:  application/pdf
Fonte:  Methods In Ecology And Evolution (2041-210X) (Wiley), 2018-06 , Vol. 9 , N. 6 , P. 1548-1555
Direitos:  2018 The Authors. Methods in Ecology and Evolution © 2018 British Ecological Society

info:eu-repo/semantics/openAccess

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