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Collective Animal Behavior from Bayesian Estimation and Probability Matching

机译:贝叶斯估计和概率匹配的集体动物行为

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摘要

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 behavior with a probability equal to the Bayesian-estimated probability that this behavior is the most appropriate one. This model derives very simple rules of interaction in animal collectives that depend only on two types of reliability parameters, one that each animal assigns to the other animals and another given by the quality of the non-social information. We test our model by obtaining theoretically a rich set of observed collective patterns of decisions in three-spined sticklebacks, Gasterosteus aculeatus, a shoaling fish species. The quantitative link shown between probabilistic estimation and collective rules of behavior allows a better contact with other fields such as foraging, mate selection, neurobiology and psychology, and gives predictions for experiments directly testing the relationship between estimation and collective behavior.
机译:居住在群体中的动物做出的运动决策取决于其他因素,取决于与其他群体成员的社交互动。我们目前对动物集体中的社会规则的理解主要基于对观察的经验拟合,而较少强调获得允许其衍生的第一性原理。在这里,我们表明,集体决策的模式可以源自动物在不确定性情况下做出概率估计的基本能力。我们建立一个分两个阶段的决策模型:贝叶斯估计和概率匹配。在第一阶段,每只动物都要考虑到有关环境的个人信息以及通过观察其他动物的行为而收集的社会信息,从而对最佳行为进行贝叶斯估计。在概率匹配阶段,每只动物选择一种行为的概率等于该行为是最合适的贝叶斯估计概率。该模型在动物群体中得出非常简单的交互规则,该规则仅取决于两种类型的可靠性参数,一种由每只动物分配给其他动物,另一种由非社交信息的质量给出。我们通过从理论上获得一组丰富的,观察到的集体决策模式来测试我们的模型,该决策模式是三刺棘背鱼Gasterosteus aculeatus(一种暗生鱼类)。概率估计与行为集体规则之间的定量联系可以更好地与觅食,配偶选择,神经生物学和心理学等其他领域联系,并为直接测试估计与集体行为之间关系的实验提供预测。

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