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A study of transfer of information in animal collectives using deep learning tools.

Francisco Romero-FerreroFrancisco J H HerasDean RanceGonzalo G de Polavieja
Published in: Philosophical transactions of the Royal Society of London. Series B, Biological sciences (2023)
We studied how the interactions among animals in a collective allow for the transfer of information. We performed laboratory experiments to study how zebrafish in a collective follow a subset of trained animals that move towards a light when it turns on because they expect food at that location. We built some deep learning tools to distinguish from video which are the trained and the naïve animals and to detect when each animal reacts to the light turning on. These tools gave us the data to build a model of interactions that we designed to have a balance between transparency and accuracy. The model finds a low-dimensional function that describes how a naïve animal weights neighbours depending on focal and neighbour variables. According to this low-dimensional function, neighbour speed plays an important role in the interactions. Specifically, a naïve animal weights more a neighbour in front than to the sides or behind, and more so the faster the neighbour is moving; and if the neighbour moves fast enough, the differences coming from the neighbour's relative position largely disappear. From the lens of decision-making, neighbour speed acts as confidence measure about where to go. This article is part of a discussion meeting issue 'Collective behaviour through time'.
Keyphrases
  • deep learning
  • decision making
  • machine learning
  • resistance training
  • healthcare
  • artificial intelligence
  • electronic health record
  • risk assessment
  • climate change
  • body composition