TIP: A Trust Inference and Propagation Model in Multi-Human Multi-Robot Teams
Yaohui Guo, X. Jessie Yang, Cong Shi

TL;DR
This paper introduces the TIP model, a novel mathematical framework for trust inference and propagation in multi-human multi-robot teams, addressing a significant research gap and demonstrating superior performance in experimental validation.
Contribution
The paper presents the first mathematical trust model specifically designed for multi-human multi-robot teams, incorporating both direct and indirect experiences.
Findings
TIP model accurately captures trust dynamics
Model significantly outperforms baseline in experiments
Validated with human-subject study involving drones
Abstract
Trust has been identified as a central factor for effective human-robot teaming. Existing literature on trust modeling predominantly focuses on dyadic human-autonomy teams where one human agent interacts with one robot. There is little, if not no, research on trust modeling in teams consisting of multiple human agents and multiple robotic agents. To fill this research gap, we present the trust inference and propagation (TIP) model for trust modeling in multi-human multi-robot teams. We assert that in a multi-human multi-robot team, there exist two types of experiences that any human agent has with any robot: direct and indirect experiences. The TIP model presents a novel mathematical framework that explicitly accounts for both types of experiences. To evaluate the model, we conducted a human-subject experiment with 15 pairs of participants (N=30). Each pair performed a search and…
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