School of Psychological Science, University of Bristol, Bristol, United Kingdom.
PLoS Biol. 2024 Jun 6;22(6):e3002644. doi: 10.1371/journal.pbio.3002644. eCollection 2024 Jun.
Homing pigeons (Columba livia) navigate by solar and magnetic compass, and fly home in idiosyncratic but stable routes when repeatedly released from the same location. However, when experienced pigeons fly alongside naive counterparts, their path is altered. Over several generations of turnover (pairs in which the most experienced individual is replaced with a naive one), pigeons show cumulative improvements in efficiency. Here, I show that such cumulative route improvements can occur in a much simpler system by using agent-based simulation. Artificial agents are in silico entities that navigate with a minimal cognitive architecture of goal-direction (they know roughly where the goal is), social proximity (they seek proximity to others and align headings), route memory (they recall landmarks with increasing precision), and continuity (they avoid erratic turns). Agents' behaviour qualitatively matched that of pigeons, and quantitatively fitted to pigeon data. My results indicate that naive agents benefitted from being paired with experienced agents by following their previously established route. Importantly, experienced agents also benefitted from being paired with naive agents due to regression to the goal: naive agents were more likely to err towards the goal from the perspective of experienced agents' memorised paths. This subtly biased pairs in the goal direction, resulting in intergenerational improvements of route efficiency. No cumulative improvements were evident in control studies in which agents' goal-direction, social proximity, or memory were lesioned. These 3 factors are thus necessary and sufficient for cumulative route improvements to emerge, even in the absence of sophisticated communication or thought.
家鸽(Columba livia)通过太阳和磁场罗盘导航,当从同一地点反复放飞时,它们会以独特但稳定的路线飞回家。然而,当经验丰富的鸽子与天真的鸽子一起飞行时,它们的路线会发生改变。在几代的更替中(最有经验的个体被一个天真的个体取代的配对),鸽子的效率会逐渐提高。在这里,我通过基于代理的模拟展示了这种累积的路线改进也可以在一个更简单的系统中发生。人工代理是一种虚拟实体,它们的导航具有最小的认知结构,包括目标导向(它们大致知道目标在哪里)、社交接近(它们寻求与他人接近并调整航向)、路线记忆(它们越来越精确地回忆地标)和连续性(它们避免不稳定的转弯)。代理的行为在定性上与鸽子的行为相匹配,在定量上与鸽子的数据相匹配。我的结果表明,由于遵循之前建立的路线,天真的代理从与经验丰富的代理配对中受益。重要的是,由于回归目标,经验丰富的代理也从与天真的代理配对中受益:天真的代理更有可能从经验丰富的代理记忆路径的角度错误地朝着目标前进。这微妙地使配对偏向于目标方向,从而导致路线效率的代际提高。在控制研究中,没有明显的累积改进,这些研究中的代理的目标导向、社交接近或记忆受到了损伤。因此,即使没有复杂的沟通或思考,这 3 个因素也是出现累积路线改进的必要和充分条件。