Ecology and Evolution (Mar 2019)

A comparison of techniques for classifying behavior from accelerometers for two species of seabird

  • Allison Patterson,
  • Hugh Grant Gilchrist,
  • Lorraine Chivers,
  • Scott Hatch,
  • Kyle Elliott

DOI
https://doi.org/10.1002/ece3.4740
Journal volume & issue
Vol. 9, no. 6
pp. 3030 – 3045

Abstract

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Abstract The behavior of many wild animals remains a mystery, as it is difficult to quantify behavior of species that cannot be easily followed throughout their daily or seasonal movements. Accelerometers can solve some of these mysteries, as they collect activity data at a high temporal resolution (98% for murres, and 89% and 93% for kittiwakes during incubation and chick rearing, respectively. Variable selection showed that classification accuracy did not improve with more than two (kittiwakes) or three (murres) variables. We conclude that simple methods of behavioral classification can be as accurate for classifying basic behaviors as more complex approaches, and that identifying suitable accelerometer metrics is more important than using a particular classification method when the objective is to develop a daily activity or energy budget. Highly accurate daily activity budgets can be generated from accelerometer data using multiple methods and a small number of accelerometer metrics; therefore, identifying a suitable behavioral classification method should not be a barrier to using accelerometers in studies of seabird behavior and ecology.

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