Beyond boundaries: a location-based toolkit for quantifying group dynamics in diverse contexts.

IF 3.4 2区 心理学 Q1 PSYCHOLOGY, EXPERIMENTAL
Seth Elkin-Frankston, James McIntyre, Tad T Brunyé, Aaron L Gardony, Clifford L Hancock, Meghan P O'Donovan, Victoria G Bode, Eric L Miller
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Abstract

Existing toolkits for analyzing movement dynamics in animal ecology primarily focus on individual or group behavior in habitats without predefined boundaries, while methods for studying human activity often cater to bounded environments, such as team sports played on defined fields. This leaves a gap in tools for modeling and analyzing human group dynamics in large-scale, unbounded, or semi-constrained environments. Examples of such contexts include tourist groups, cycling teams, search and rescue teams, and military units. To address this issue, we survey existing methods and metrics for characterizing individual and collective movement in humans and animals. Using a rich GPS dataset from groups of military personnel engaged in a foot march, we develop a comprehensive, general-purpose toolkit for quantifying group dynamics using location-based metrics during goal-directed movement in open environments. This toolkit includes a repository of Python functions for extracting and analyzing movement data, integrating cognitive factors such as decision-making, situational awareness, and group coordination. By extending location-based analytics to non-traditional domains, this toolkit enhances the understanding of collective movement, group behavior, and emergent properties shaped by cognitive processes. To demonstrate its practical utility, we present a use case utilizing metrics derived from the foot march data to predict group performance during a subsequent strategic and tactical exercise, highlighting the influence of cognitive and decision-making behaviors on team effectiveness.

现有的动物生态学运动动态分析工具包主要集中在没有预定边界的栖息地中的个体或群体行为,而研究人类活动的方法通常是针对有边界的环境,如在确定场地上进行的团队运动。这就使得在大规模、无边界或半受约束环境中模拟和分析人类群体动态的工具成为空白。这类环境的例子包括旅游团队、自行车队、搜救队和军事单位。为了解决这个问题,我们调查了现有的用于描述人类和动物个体和集体运动的方法和指标。利用参与徒步行军的军事人员群体的丰富 GPS 数据集,我们开发了一个全面、通用的工具包,用于在开放环境中以目标为导向的运动过程中使用基于位置的指标量化群体动态。该工具包包括一个 Python 函数库,用于提取和分析运动数据,并整合决策、态势感知和群体协调等认知因素。通过将基于位置的分析扩展到非传统领域,该工具包增强了对集体运动、群体行为以及由认知过程形成的突发特性的理解。为了展示其实际效用,我们介绍了一个使用案例,利用从徒步行军数据中得出的指标来预测随后的战略战术演习中的团体表现,突出了认知和决策行为对团队效率的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.80
自引率
7.30%
发文量
96
审稿时长
25 weeks
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