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Deep attention networks reveal the rules of collective motion in zebrafish

机译:深度关注网络揭示了斑马鱼中集体运动规则

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摘要

A variety of simple models has been proposed to understand the collective motion of animals. These models can be insightful but may lack important elements necessary to predict the motion of each individual in the collective. Adding more detail increases predictability but can make models too complex to be insightful. Here we report that deep attention networks can obtain a model of collective behavior that is simultaneously predictive and insightful thanks to an organization in modules. When using simulated trajectories, the model recovers the ground-truth interaction rule used to generate them, as well as the number of interacting neighbours. For experimental trajectories of large groups of 60-100 zebrafish, Danio rerio, the model obtains that interactions between pairs can approximately be described as repulsive, attractive or as alignment, but only when moving slowly. At high velocities, interactions correspond only to alignment or alignment mixed with repulsion at close distances. The model also shows that each zebrafish decides where to move by aggregating information from the group as a weighted average over neighbours. Weights are higher for neighbours that are close, in a collision path or moving faster in frontal and lateral locations. The network also extracts that the number of interacting individuals is dynamical and typically in the range 8-22, with 1-10 more important ones. Our results suggest that each animal decides by dynamically selecting information from the collective.
机译:已经提出了各种简单的模型来了解动物的集体运动。这些模型可能是有洞察力的,但可能缺乏预测集体中每个人的运动所需的重要因素。添加更多细节会提高可预测性,但可以使模型过于复杂,无法解决洞察力。在这里,我们报告说,深入关注网络可以获得集体行为的模型,这对模块中的组织同时预测和富有洞察力。使用模拟轨迹时,该模型恢复用于生成它们的地面真实的交互规则,以及交互邻居的数量。对于大型60-100颗斑马鱼的实验轨迹,Danio Rerio,该模型获得了对之间的相互作用近似可以被描述为排斥,有吸引力或对准,但仅在缓慢移动时。在高速度下,相互作用仅对应于在近距离的排斥中的对准或对准。该模型还表明,每个斑马鱼决定通过将组的信息作为邻居的加权平均聚合到群体中来移动的位置。邻近的重量较高,靠近碰撞路径或在正面和横向位置移动更快。该网络还提取交流个体的数量是动态的,通常在8-22范围内,具有1-10个更重要的。我们的结果表明,每只动物通过动态选择来自集体的信息来决定。

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