Emergent Mind

Building Second-Order Mental Models for Human-Robot Interaction

(1909.06508)
Published Sep 14, 2019 in cs.RO , cs.HC , and cs.MA

Abstract

The mental models that humans form of other agentsencapsulating human beliefs about agent goals, intentions, capabilities, and morecreate an underlying basis for interaction. These mental models have the potential to affect both the human's decision making during the interaction and the human's subjective assessment of the interaction. In this paper, we surveyed existing methods for modeling how humans view robots, then identified a potential method for improving these estimates through inferring a human's model of a robot agent directly from their actions. Then, we conducted an online study to collect data in a grid-world environment involving humans moving an avatar past a virtual agent. Through our analysis, we demonstrated that participants' action choices leaked information about their mental models of a virtual agent. We conclude by discussing the implications of these findings and the potential for such a method to improve human-robot interactions.

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