如何塑造机器人的幽默——基于强化学习的社会行为适应

Klaus Weber, Hannes Ritschel, Ilhan Aslan, F. Lingenfelser, E. André
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引用次数: 61

摘要

共同的幽默感可以带来与娱乐、笑声和亲密时刻相关的积极情绪。如果机器人同伴能以一种不引人注目的方式获得人类同伴的幽默感,它们就能提高自己的互动技能。为了探索这一假设,我们开发了一种基于强化学习的动态用户建模方法,该方法允许机器人在讲笑话时分析人的反应,并不断调整其幽默感。我们在一个测试场景中评估了我们的方法,让一个Reeti机器人扮演一个表演者,讲不同类型的笑话。示范改编过程仅通过使用观众的声音笑声和视觉微笑来完成,而没有其他形式的明确反馈。我们报告了24名参与者的用户研究结果,将我们的方法与基线条件(与机器人的非学习版本)进行比较,并通过详细提供我们方法的局限性和含义来得出结论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How to Shape the Humor of a Robot - Social Behavior Adaptation Based on Reinforcement Learning
A shared sense of humor can result in positive feelings associated with amusement, laughter, and moments of bonding. If robotic companions could acquire their human counterparts' sense of humor in an unobtrusive manner, they could improve their skills of engagement. In order to explore this assumption, we have developed a dynamic user modeling approach based on Reinforcement Learning, which allows a robot to analyze a person's reaction while it tells jokes and continuously adapts its sense of humor. We evaluated our approach in a test scenario with a Reeti robot acting as an entertainer and telling different types of jokes. The exemplary adaptation process is accomplished only by using the audience's vocal laughs and visual smiles, but no other form of explicit feedback. We report on results of a user study with 24 participants, comparing our approach to a baseline condition (with a non-learning version of the robot) and conclude by providing limitations and implications of our approach in detail.
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