BEHAVE: A Hybrid AI Framework for Real-Time Modeling of Collective Human Dynamics
Helene Malyutina

TL;DR
BEHAVE is a formal framework that models collective human dynamics as continuous behavioral fields, enabling real-time perception and forecasting of group behavior in various contexts.
Contribution
It introduces a novel mathematical and neural modeling approach to capture emergent collective dynamics from observable physical signals.
Findings
Demonstrated on a 7-agent negotiation snapshot
Applicable to crowd safety, crisis teams, education, and clinical contexts
Provides a computational system for learning and forecasting collective behavior
Abstract
Existing AI systems for modeling human behavior operate at the level of individuals or detect events after they occur. As a result, they systematically fail to capture the collective dynamics that determine whether a group remains stable or transitions into escalation or breakdown. We propose a different foundation: a group of interacting humans constitutes a complex dynamical system in the precise mathematical sense, exhibiting emergence, nonlinearity, feedback loops, sensitivity near critical points, and phase transitions between qualitatively distinct regimes. The state of such a system is not located within any single participant; it is distributed across mutual influence loops and observable through the micro-dynamics of the body. We introduce BEHAVE (Behavioral Engine for Human Activity Vector Estimation), a formal framework that models collective dynamics as continuous…
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