Zero-information limit of a collective olfactory search model
Francesco Boccardo, Simone Di Marino, Agnese Seminara

TL;DR
This paper investigates how agents in a collective search can optimize their behavior without olfactory cues by balancing private exploration and social imitation, revealing an optimal trust parameter that enhances search efficiency.
Contribution
It introduces a minimal model demonstrating the existence of an optimal trust parameter for collective search without olfactory information, linking social imitation to search efficiency.
Findings
An optimal trust parameter exists even without olfactory cues.
Optimality depends on initial conditions and target location.
The model predicts trust levels for cohesive groups.
Abstract
We address the problem of how individuals can integrate efficiently their private behavior with information provided by others within a group. To this end, we consider the model of collective search introduced in [https://doi.org/10.1103/PhysRevE.102.012402], under a minimal setting with no olfactory information. Agents combine a private exploratory behavior and a social imitation consisting in aligning to their neighbors, and weigh the two contributions with a single ``trust" parameter that controls their relative influence. We find that an optimal trust parameter exists even in the absence of olfactory information, as was observed in the original model. Optimality is dictated by the need to explore the minimal region of space that contains the target. An optimal trust parameter emerges from this constraint because it it tunes imitation, which induces a collective mechanism of inertia…
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Taxonomy
TopicsDistributed Control Multi-Agent Systems · Diffusion and Search Dynamics · Evolutionary Game Theory and Cooperation
