Collective Animal Behavior from Bayesian Estimation and Probability Matching
Alfonso P\'erez-Escudero, Gonzalo G. de Polavieja

TL;DR
This paper presents a probabilistic model based on Bayesian estimation and matching to explain collective decision-making in animals, linking individual probabilistic reasoning to group behavior patterns.
Contribution
It introduces a first-principles model that derives social interaction rules from Bayesian estimation and probability matching, applicable to animal collectives.
Findings
Model reproduces observed collective patterns in sticklebacks
Simple interaction rules depend on two reliability parameters
Provides a framework connecting estimation and collective behavior
Abstract
Animals living in groups make movement decisions that depend, among other factors, on social interactions with other group members. Our present understanding of social rules in animal collectives is mainly based on empirical fits to observations, with less emphasis in obtaining first-principles approaches that allow their derivation. Here we show that patterns of collective decisions can be derived from the basic ability of animals to make probabilistic estimations in the presence of uncertainty. We build a decision-making model with two stages: Bayesian estimation and probabilistic matching. In the first stage, each animal makes a Bayesian estimation of which behavior is best to perform taking into account personal information about the environment and social information collected by observing the behaviors of other animals. In the probability matching stage, each animal chooses a…
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