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Limitations of using surrogates for behaviour classification of accelerometer data: refining methods using random forest models in Caprids.

Eleanor R DickinsonJoshua P TwiningRory WilsonPhilip A StephensJennie WestanderNikki MarksDavid M Scantlebury
Published in: Movement ecology (2021)
We demonstrate methods to refine the use of random forest models to classify behaviours of both captive and free-living animal species. We suggest there are two main reasons for reduced accuracy when using a domestic counterpart to predict the behaviour of a wild species in captivity; domestication leading to morphological differences and the terrain of the environment in which the animals were observed. We also identify limitations when behaviour is predicted in individuals that are not used to train models. Our results demonstrate that biologging device calibration needs to be conducted using: (i) with similar conspecifics, and (ii) in an area where they can perform behaviours on terrain that reflects that of species in the wild.
Keyphrases
  • genetic diversity
  • climate change
  • physical activity
  • machine learning
  • deep learning
  • big data
  • high speed