Research has shown that human-agent relationships form in similar ways to human-human relationships. Since children do not have the same critical analysis skills as adults (and may over-trust technology, for example), this relationship-formation is concerning. Nonetheless, little research investigates children's perceptions of conversational agents in-depth, and even less investigates how education might change these perceptions. We present K-12 workshops with associated conversational AI concepts to encourage healthier understanding and relationships with agents. Through studies with the curriculum, and children and parents from various countries, we found participants' perceptions of agents -- specifically their partner models and trust -- changed. When participants discussed changes in trust of agents, we found they most often mentioned learning something. For example, they frequently mentioned learning where agents obtained information, what agents do with this information and how agents are programmed. Based on the results, we developed recommendations for teaching conversational agent concepts, including emphasizing the concepts students found most challenging, like training, turn-taking and terminology; supplementing agent development activities with related learning activities; fostering appropriate levels of trust towards agents; and fostering accurate partner models of agents. Through such pedagogy, students can learn to better understand conversational AI and what it means to have it in the world.
翻译:研究表明,人剂关系与人与人之间的关系有着相似的形式。由于儿童没有与成人一样的关键分析技能(例如,可能超信任技术),这种关系就存在。然而,几乎没有研究深入调查儿童对谈话代理人的看法,甚至更没有调查教育如何改变这些看法。我们提出K-12讲习班,与相关的对话AI概念一起鼓励更健康的理解以及与代理人的关系。我们通过与课程以及不同国家的儿童和父母的研究发现,参与者对代理人的看法 -- -- 特别是他们的伙伴模式和信任 -- -- 已经改变。当参与者讨论代理人信任的变化时,我们发现他们经常提到学习一些东西。例如,他们经常提到从代理人获得信息的地方学习,他们使用这种信息做什么,以及代理人是如何编程的。根据研究结果,我们制定了教授谈话代理人概念的建议,包括强调学生发现最具挑战性的概念,例如培训、转学和术语;通过相关的学习活动补充代理人发展活动;培养对代理人的适当信任程度;培养代理人的准确的伙伴模式。通过这种教学方法,学生可以学会如何更好地了解世界的对话方式。