This paper presents an approach of using methods of process mining and rule-based artificial intelligence to analyze and understand study paths of students based on campus management system data and study program models. Process mining techniques are used to characterize successful study paths, as well as to detect and visualize deviations from expected plans. These insights are combined with recommendations and requirements of the corresponding study programs extracted from examination regulations. Here, event calculus and answer set programming are used to provide models of the study programs which support planning and conformance checking while providing feedback on possible study plan violations. In its combination, process mining and rule-based artificial intelligence are used to support study planning and monitoring by deriving rules and recommendations for guiding students to more suitable study paths with higher success rates. Two applications will be implemented, one for students and one for study program designers.
翻译:本文件介绍了一种方法,即利用采矿过程的方法和基于规则的人工智能来分析和理解学生根据校园管理系统数据和研究方案模型学习的路径;利用采矿过程技术来描述成功学习路径的特点,并发现和想象出偏离预期计划的情况;这些洞察力与从考试条例中提取的相应研究方案的建议和要求相结合;在这里,利用事件微积分和回答组合编程来提供研究方案的模型,支持规划和合规检查,同时就可能违反研究计划的情况提供反馈;在结合过程中,利用采矿过程和基于规则的人工智能来支持研究规划和监测,为指导学生走上更合适的成功率更高的学习路径制定规则和建议;将实施两种应用,一种针对学生,一种针对学习方案设计者。