Informative and misinformative interactions in a school of fish

Emanuele Crosato*, Li Jiang, Valentin Lecheval, Joseph T. Lizier, X. Rosalind Wang, Pierre Tichit, Guy Theraulaz, Mikhail Prokopenko

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

44 Citations (Scopus)
162 Downloads (Pure)

Abstract

Quantifying distributed information processing is crucial to understanding collective motion in animal groups. Recent studies have begun to apply rigorous methods based on information theory to quantify such distributed computation. Following this perspective, we use transfer entropy to quantify dynamic information flows locally in space and time across a school of fish during directional changes around a circular tank, i.e., U-turns. This analysis reveals peaks in information flows during collective U-turns and identifies two different flows: an informative flow (positive transfer entropy) from fish that have already turned to fish that are turning, and a misinformative flow (negative transfer entropy) from fish that have not turned yet to fish that are turning. We also reveal that the information flows are related to relative position and alignment between fish and identify spatial patterns of information and misinformation cascades. This study offers several methodological contributions and we expect further application of these methodologies to reveal intricacies of self-organisation in other animal groups and active matter in general.

Original languageEnglish
Pages (from-to)283-305
Number of pages23
JournalSwarm intelligence
Volume12
Issue number4
DOIs
Publication statusPublished - Dec-2018

Keywords

  • Collective animal behaviour
  • Collective motion
  • Fish interactions
  • Information dynamics
  • TRANSFER ENTROPY
  • COLLECTIVE BEHAVIOR
  • ANIMAL GROUPS
  • DYNAMICS
  • AGGREGATION
  • NETWORKS
  • FLOCKS
  • FLIGHT
  • RULES
  • MODEL

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