Anatomy of Leadership in Collective Behaviour
Joshua Garland, Andrew M. Berdahl, Jie Sun, Erik Bollt

TL;DR
This paper develops a comprehensive framework to understand leadership in collective animal behavior, emphasizing its multifaceted nature and providing models for better inference of leadership roles.
Contribution
It introduces an anatomy of leadership, identifying key components and offering a general mathematical framework for analyzing leadership in collective systems.
Findings
Proposes a multifaceted taxonomy of leadership components
Develops toy models to test leadership inference methods
Highlights the complexity of leadership beyond binary classifications
Abstract
Understanding the mechanics behind the coordinated movement of mobile animal groups (collective motion) provides key insights into their biology and ecology, while also yielding algorithms for bio-inspired technologies and autonomous systems. It is becoming increasingly clear that many mobile animal groups are composed of heterogeneous individuals with differential levels and types of influence over group behaviors. The ability to infer this differential influence, or leadership, is critical to understanding group functioning in these collective animal systems. Due to the broad interpretation of leadership, many different measures and mathematical tools are used to describe and infer "leadership", e.g., position, causality, influence, information flow. But a key question remains: which, if any, of these concepts actually describes leadership? We argue that instead of asserting a single…
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