A Causal Approach to Predicting and Improving Human Perceptions of Social Navigation Robots
Maximilian Diehl, Nathan Tsoi, Gustavo Chavez, Karinne Ramirez-Amaro, Marynel V\'azquez

TL;DR
This paper introduces a causal Bayesian network model to predict and enhance human perceptions of social navigation robots, improving interpretability and enabling behavior adjustments to boost perceived competence.
Contribution
It presents a novel causal model for predicting perceptions and a combinatorial search method to improve robot behavior based on this model.
Findings
Achieved F1-scores of 0.78 for competence and 0.75 for intention prediction.
Statistically significant 83% increase in perceived competence for low-competent behaviors.
Enhanced interpretability and counterfactual reasoning in robot navigation models.
Abstract
As mobile robots are increasingly deployed in human environments, enabling them to predict how people perceive them is critical for socially adaptable navigation. Predicting perceptions is challenging for two main reasons: (1) HRI prediction models must learn from limited data, and (2) the obtained models must be interpretable to enable safe and effective interactions. Interpretability is particularly important when a robot is perceived as incompetent (e.g., when the robot suddenly stops or rotates away from the goal), as it allows the robot to explain its reasoning and identify controllable factors to improve performance, requiring causal rather than associative reasoning. To address these challenges, we propose a Causal Bayesian Network designed to predict how people perceive a mobile robot's competence and how they interpret its intent during navigation. Additionally, we introduce a…
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Taxonomy
TopicsSocial Robot Interaction and HRI · Human-Automation Interaction and Safety · Multimodal Machine Learning Applications
