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J Fish Biol ; 98(3): 865-869, 2021 Mar.
Article in English | MEDLINE | ID: mdl-33058201

ABSTRACT

In this study we present the first attempt at modelling the feeding behaviour of whale sharks using a machine learning analytical method. A total of eight sharks were monitored with tri-axial accelerometers and their foraging behaviours were visually observed. Our results highlight that the random forest model is a valid and robust approach to predict the feeding behaviour of the whale shark. In conclusion this novel approach exposes the practicality of this method to serve as a conservation tool and the capability it offers in monitoring potential disturbances of the species.


Subject(s)
Conservation of Natural Resources/methods , Feeding Behavior/physiology , Machine Learning , Sharks/physiology , Animals
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