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CAES: A Model of an RBR-CBR Course Advisory Expert System

机译:CAES:RBR-CBR课程咨询专家系统的模型

摘要

Academic student advising is a gargantuan task that places heavy demand on the time, emotions and mental resources of the academic advisor. It is also a mission critical and very delicate task that must be handled with impeccable expertise and precision else the future of the intended student beneficiary may be jeopardized due to poor advising. One integral aspect of student academic advising is course registration, where students make decisions on the choice of courses to take in specific semesters based on their current academic standing. In this paper, we give the description of the design, implementation and trial evaluation of the Course Advisory Expert System (CAES) which is a hybrid of a rule based reasoning (RBR) and case based reasoning (CBR). The RBR component was implemented using JESS. The result of the trial experiment revealed that the system has high performance/user satisfaction rating from the sample expert population conducted.
机译:给大学生提供咨询是一项艰巨的任务,这对学术顾问的时间,情感和精神资源提出了很高的要求。这也是一项至关重要的任务,也是一项非常微妙的任务,必须以无可挑剔的专业知识和精确度来处理,否则,由于建议不力,预期的学生受益人的未来可能会受到威胁。学生学术咨询的一个不可或缺的方面是课程注册,学生可以根据其当前的学业状况来决定选择特定学期的课程。在本文中,我们对课程咨询专家系统(CAES)的设计,实施和试用评估进行了描述,该课程是基于规则的推理(RBR)和基于案例的推理(CBR)的混合体。 RBR组件是使用JESS实现的。试验结果表明,该系统具有较高的性能/用户满意度。

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