论文标题
计算机辅助的个性化教育
Computer-Aided Personalized Education
论文作者
论文摘要
在STEM领域接受培训的人的短缺正在变得急剧,大学和大学都在努力满足这一需求。例如,就计算机科学而言,在过去的十年中,参加入门课程的学生人数已经增长了三倍。最近,大规模开放的在线课程(MOOC)已被提升为缓解这种压力的一种方式。这充其量提供了教育的访问。不过,更大的挑战是应对不同学生的异构背景,保留,提供反馈和评估。依靠计算工具的个性化教育可以应对这一挑战。 尽管在不同社区的不同时间研究了自动化辅导,但计算和教育技术的最新进展为改变学生学习方式提供了令人兴奋的机会。特别是,至少三个趋势很重要。首先,逻辑推理,数据分析和自然语言处理方面的进展已导致辅导自动评估的工具,包括目标反馈在内的个性化指导以及各种主题的自适应内容生成。其次,学习和人类计算机互动科学的研究导致更好地了解不同学生的学习方式,何时以及哪些类型的干预措施对不同的教学目标有效,以及如何衡量教育工具的成功。最后,在学术界和行业中,最近出现在线教育平台的出现正在为开发共同的基础设施带来新的机会。该CCC研讨会汇集了研究人员,开发基于教育,人力计算机互动和认知心理学的研究人员等技术的教育工具。
The shortage of people trained in STEM fields is becoming acute, and universities and colleges are straining to satisfy this demand. In the case of computer science, for instance, the number of US students taking introductory courses has grown three-fold in the past decade. Recently, massive open online courses (MOOCs) have been promoted as a way to ease this strain. This at best provides access to education. The bigger challenge though is coping with heterogeneous backgrounds of different students, retention, providing feedback, and assessment. Personalized education relying on computational tools can address this challenge. While automated tutoring has been studied at different times in different communities, recent advances in computing and education technology offer exciting opportunities to transform the manner in which students learn. In particular, at least three trends are significant. First, progress in logical reasoning, data analytics, and natural language processing has led to tutoring tools for automatic assessment, personalized instruction including targeted feedback, and adaptive content generation for a variety of subjects. Second, research in the science of learning and human-computer interaction is leading to a better understanding of how different students learn, when and what types of interventions are effective for different instructional goals, and how to measure the success of educational tools. Finally, the recent emergence of online education platforms, both in academia and industry, is leading to new opportunities for the development of a shared infrastructure. This CCC workshop brought together researchers developing educational tools based on technologies such as logical reasoning and machine learning with researchers in education, human-computer interaction, and cognitive psychology.