中文

Social-spatial dependencies for learning visual navigation

神经与进化计算 2026-07-08 v1

摘要

Navigation for social organisms rarely is a fully independent activity. Group structure and dynamics, as well as embodied interactions, critically influence useful behavior. Individual neural network controlled agents are trained to navigate in different social contexts, where social dependence and behavioral strategy learned is determined by relative task performance and spatial effect. Increasing high quality social information drives phase transitions from individual to following navigational strategy, and to collision avoidance in response to a crowded foraging patch. Predictable, nonstationary environmental dynamics drive behavioral hybridization between individual and social navigation, far and near the patch. Our findings challenge the approach of only inspecting individual behavior for social organisms and highlight the importance of taking a bottom-up approach in understanding how organisms behave.

引用

@article{arxiv.2607.07460,
  title  = {Social-spatial dependencies for learning visual navigation},
  author = {Patrick Govoni and Pawel Romanczuk},
  journal= {arXiv preprint arXiv:2607.07460},
  year   = {2026}
}