Mining and modeling complex leadership-followership dynamics of movement data
Chainarong Amornbunchornvej, Tanya Y. Berger-Wolf

TL;DR
This paper introduces a novel computational framework to mine and model the dynamic leadership-followership patterns in movement data, enhancing understanding of collective behavior in social animals and humans.
Contribution
It formalizes new computational problems and extends an existing leadership inference framework to analyze leadership dynamics in movement datasets.
Findings
Framework outperforms baseline in simulated datasets
Successfully applied to baboon movement data
Enables generation of testable hypotheses about leadership dynamics
Abstract
Leadership and followership are essential parts of collective decision and organization in social animals, including humans. In nature, relationships of leaders and followers are dynamic and vary with context or temporal factors. Understanding dynamics of leadership and followership, such as how leaders and followers change, emerge, or converge, allows scientists to gain more insight into group decision-making and collective behavior in general. However, given only data of individual activities, it is challenging to infer the dynamics of leaders and followers. In this paper, we focus on mining and modeling frequent patterns of leading and following. We formalize new computational problems and propose a framework that can be used to address several questions regarding group movement. We use the leadership inference framework, mFLICA, to infer the time series of leaders and their factions…
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Taxonomy
MethodsA Framework for Leader Identification in Coordinated Activity
