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Investigating Transparency Methods in a Robot Word-Learning System and Their Effects on Human Teaching Behaviors

机译:调查机器人文字学习系统中的透明方法及其对人类教学行为的影响

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Robots need to understand words for references in social spaces (e.g., objects, locations, actions). Grounded language learning systems aim to learn these words from observing a human tutor. Teaching a robot is difficult for naive users due to the discrepancy between the users' mental model and the actual state of the robot. We present a grounded word-learning system with the Pepper robot which learns object and action labels and investigate two extensions geared towards increasing the system’s transparency. The first extension utilizes deictic gestures (pointing and gaze) to communicate knowledge about object names and to further request new labels. The second extension shows the current state of the lexicon on the robot’s tablet. We performed a user study (n=32) to investigate the effects of the transparency methods on learning performance and teaching behavior. In a quantitative analysis, we did not see a significant performance increase for the two extensions. However, users reported higher perception of control and perceived learning success the better they knew the current state of the learning system. In a qualitative analysis, we investigated the participants' teaching behaviors and identified factors that inhibited the learning process. Among other things, we found increased interactive behavior of users when the robot displayed deictic gestures. We saw that human tutors simplified their utterances over time to adapt to the perceived capabilities of the robot. The tablet was most helpful for users to understand what the robot had already learned. Still, learning was impaired in all conditions, when the human input substantially deviated from the form required by the learning system.
机译:机器人需要了解社交空间中的引用词(例如,对象,位置,操作)。接地语言学习系统旨在了解这些词来观察人导师。由于用户心理模型与机器人的实际状态之间的差异,教导机器人对天真的用户来说很难。我们介绍了一个带有Pepper Robot的接地词学习系统,它学习对象和动作标签,并调查两个延伸,旨在提高系统的透明度。第一个扩展利用引导手势(指向和凝视)来传达关于对象名称的知识并进一步请求新标签。第二个扩展显示了机器人平板电脑上的Lexicon的当前状态。我们执行了用户学习(n = 32),以研究透明度方法对学习绩效和教学行为的影响。在定量分析中,我们没有看到两个扩展的显着性能。然而,用户报告了对控制和感知学习成功的感知更高,他们了解学习系统的当前状态。在一个定性分析中,我们调查了参与者的教学行为,并确定了抑制学习过程的因素。在其他事情之外,我们发现当机器人显示出导演手势时用户的互动行为。我们看到人体导师随着时间的推移简化了他们的话语,以适应机器人的感知能力。平板电脑对用户最有助于了解机器人已经学到了什么。尽管如此,在所有条件下,学习受到损害,当时人类输入基本上偏离学习系统所需的形式。

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