Trust modeling is the computational representation and dynamic assessment of the reliability, credibility, or benevolence of another agent based on direct interaction history, indirect reputational evidence, and contextual factors. It is a core component of Theory of Mind and social cognition in artificial intelligence, enabling agents to make informed decisions about cooperation, delegation, and information sharing. Models often output a scalar trust score or a probabilistic distribution, which is continuously updated via Bayesian inference or reinforcement learning mechanisms.
