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Current research on measuring human perceptions of fairness in Human-Robot Teams (HRTs) has primarily focused on subjective metrics, such as rating statements either during or at the conclusion of interactions. This suggests a gap in examining the dynamic and evolving nature of fairness perceptions objectively during human-robot collaboration. In this paper, we introduce a novel cognitive model that enables individuals to perceive fairness dynamically throughout an HRT experiment. This model is inspired by the Bayesian Theory of Mind, allowing us to infer perceptions of fairness in real-time. The core idea of the model is that fairness perception stems from a person's ongoing inference about the bias in a robot's value function. We establish an equation that translates this inference into a perceived fairness value, which is based not only on the inferred bias but also on the confidence of that inference. A qualitative comparison of the model's performance with a previous human-robot collaboration study suggests that it can effectively capture key trends in human fairness perception dynamically. These findings highlight the model's potential applicability, and it may be utilized in resource distribution algorithms in HRTs to promote fairer collaboration.
Ahmad et al. (Thu,) studied this question.