Centre for Complexity Science, University of Warwick, Coventry CV4 7AL, United Kingdom.
Centre for Complexity Science, University of Warwick, Coventry CV4 7AL, United Kingdom;
Proc Natl Acad Sci U S A. 2019 Jul 30;116(31):15362-15367. doi: 10.1073/pnas.1822069116. Epub 2019 Jul 17.
Collective motion is found in various animal systems, active suspensions, and robotic or virtual agents. This is often understood by using high-level models that directly encode selected empirical features, such as coalignment and cohesion. Can these features be shown to emerge from an underlying, low-level principle? We find that they emerge naturally under future state maximization (FSM). Here, agents perceive a visual representation of the world around them, such as might be recorded on a simple retina, and then move to maximize the number of different visual environments that they expect to be able to access in the future. Such a control principle may confer evolutionary fitness in an uncertain world by enabling agents to deal with a wide variety of future scenarios. The collective dynamics that spontaneously emerge under FSM resemble animal systems in several qualitative aspects, including cohesion, coalignment, and collision suppression, none of which are explicitly encoded in the model. A multilayered neural network trained on simulated trajectories is shown to represent a heuristic mimicking FSM. Similar levels of reasoning would seem to be accessible under animal cognition, demonstrating a possible route to the emergence of collective motion in social animals directly from the control principle underlying FSM. Such models may also be good candidates for encoding into possible future realizations of artificial "intelligent" matter, able to sense light, process information, and move.
集体运动存在于各种动物系统、主动悬浮体以及机器人或虚拟代理中。这通常通过使用高级模型来理解,这些模型直接编码了选定的经验特征,如共线和内聚。这些特征能否从底层的低层次原则中显现出来?我们发现,它们在未来状态最大化(FSM)下自然出现。在这里,代理感知到他们周围世界的视觉表示,例如可能在简单的视网膜上记录的视觉表示,然后移动以最大化他们期望在未来能够访问的不同视觉环境的数量。这种控制原则可以通过使代理能够应对各种未来场景,在不确定的世界中赋予进化适应性。在 FSM 下自发出现的集体动力学在几个定性方面与动物系统相似,包括内聚、共线和碰撞抑制,这些都没有在模型中明确编码。在模拟轨迹上训练的多层神经网络被证明可以代表一种启发式的 FSM 模拟。在动物认知下似乎也可以获得类似的推理水平,这表明了直接从 FSM 底层控制原则出发,社交动物中集体运动的出现可能是一条途径。这种模型也可能是未来实现人工“智能”物质的良好候选者,能够感知光线、处理信息和移动。