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Learning users' and personality-gender preferences in close human-robot interaction

机译:学习用户和人格性别偏好,在密切的人机互动中

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Robots are expected to interact with persons in their everyday activities and should learn the preferences of their users in order to deliver a more natural interaction. Having a memory system that remembers past events and using them to generate an adapted robot's behavior is a useful feature that robots should have. Nevertheless, robots will have to face unknown situations and behave appropriately. We propose the usage of user's personality (introversion/extroversion) to create a model to predict user's preferences so as to be used when there are no past interactions for a certain robot's task. For this, we propose a framework that combines an Emotion System based on the OCC Model with an Episodic-Like Memory System. We did an experiment where a group of participants customized robot's behavior with respect to their preferences (personal distance, gesture amplitude, gesture speed). We tested the obtained model against preset behaviors based on the literature about extroversion preferences on interaction. For this, a different group of participants was recruited. Results shows that our proposed model generated a behavior that was more preferred by the participants than the preset behaviors. Only the group of introvert-female participants did not present any significant difference between the different behaviors.
机译:预计机器人将与日常活动中的人员互动,并应该学习用户的偏好,以便提供更自然的互动。具有记忆系统的内存系统,以记住过去的事件并使用它们生成适应的机器人的行为是机器人应该具有的有用功能。尽管如此,机器人将不得不面对未知的情况并表现得适当。我们建议使用用户的个性(Introviection / Expromover)来创建模型以预测用户的偏好,以便在没有针对某个机器人任务的过去的交互时使用。为此,我们提出了一个框架,该框架将基于OCC模型组合的情绪系统,其中包含象限性类似的存储器系统。我们做了一个实验,其中一群参与者根据他们的偏好定制机器人的行为(个人距离,手势幅度,手势速度)。我们基于关于对交互的升级偏好的文献来测试获得的模型免受预设行为。为此,招募了一个不同的参与者。结果表明,我们所提出的模型产生了与预设行为更优选的行为。只有内向的女性参与者群体之间的不同行为之间没有任何显着差异。

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