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Investigating Trust Factors in Human-Robot Shared Control: Implicit Gender Bias Around Robot Voice

机译:调查人机共享控制中的信任因素:围绕机器人语音的隐性性别偏见

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This paper explores the impact of warnings, audio feedback, and gender on human-robot trust in the context of autonomous driving and specifically shared robot control. We use pre-existing methods for the estimation and assessment of human-robot trust where trust was found to vary as a function of the quality of behavior of an autonomous driving controller. We extend these models and empirical methods to examine the impact of audio cues on trust, specifically studying the impacts of gender-specific audio cues on the elicitation of trust. Our study compares agents with and without human-voiced indicators of uncertainty and evaluates differences in trust with inferred and introspective methods. We find that a person's trust in a robot can be influenced by verbal feedback from the robot agent. Specifically, people tend to lend more trust to agents whose voice is of the same gender as their own.
机译:本文探讨了自动驾驶和共享机器人控制环境下警告,音频反馈和性别对人机交互信任的影响。我们使用现有的方法来评估和评估人机机器人的信任,其中发现信任随自动驾驶控制器行为质量的变化而变化。我们扩展了这些模型和经验方法,以检验音频提示对信任的影响,特别是研究特定性别的音频提示对信任激发的影响。我们的研究比较有无人为不确定性指标的代理商,并通过推断和内省的方法评估信任的差异。我们发现一个人对机器人的信任会受到来自机器人代理人的口头反馈的影响。具体来说,人们倾向于给声音与自己性别相同的特工更多的信任。

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