首页> 外文期刊>International journal of knowledge and systems science >Use of Subspace Clustering Algorithm for Students' Competency and Subject Knowledge Assessment
【24h】

Use of Subspace Clustering Algorithm for Students' Competency and Subject Knowledge Assessment

机译:子空间聚类算法在学生能力和学科知识评估中的应用

获取原文
获取原文并翻译 | 示例

摘要

Student performance studies are the primary challenge for any course with continuous assessment. The challenge lies in performing validation tests of whether course objectives are being met and also in identifying areas of the course structure that needs improvement. This article identifies whether objectives of the course are being achieved or not, by analyzing the student performance in different courses using competencies as the criteria for assessment. Performance evaluation includes diverse types of competency components such as presentation, assignment, group discussion, etc., along with written examination in order to assess the knowledge of students, as well as their interest in the subject. A PROCLUS algorithm has been chosen for experimentation, as the algorithm identifies similarities among data sets and forms clusters of disjoint sets. The algorithm not only considers random sample points, but also successfully scans entire data sets to identify meaningful dimensions that are needed to form actual clusters. Experimental results have identified the similarities of the students' performance across the subjects that are similar in nature and their competency parameters were also found to be similar. A majority of the students have performed alike in certain subjects that involved practical components or in other ways, similar performance is achieved during the assessment of courses on competencies like presentations skills, group discussions, writing skills, etc., rather than mere theoretical components. This study could help to modify the evaluation and assessment pattern for the theory subjects and/or to fine tune the course structure and objectives of such course, and also to find some alternate techniques to improve the other competencies.
机译:对于进行持续评估的任何课程,学生成绩研究是主要挑战。挑战在于对课程目标是否达到进行验证测试,以及确定课程结构中需要改进的领域。本文通过使用能力作为评估标准来分析不同课程中的学生表现,从而确定该课程的目标是否实现。绩效评估包括各种类型的能力组成部分,例如演讲,作业,小组讨论等,以及书面考试,以评估学生的知识以及他们对该主题的兴趣。已选择PROCLUS算法进行实验,因为该算法可识别数据集之间的相似性并形成不相交集的群集。该算法不仅考虑随机样本点,而且还成功扫描了整个数据集,以识别形成实际聚类所需的有意义的维度。实验结果确定了学生在各科目的表现上的相似之处,这些相似之处本质上是相似的,他们的能力参数也相似。大多数学生在涉及实际组成部分或其他方式的某些科目中表现相似,在评估能力课程(例如演讲技巧,小组讨论,写作技巧等)的过程中取得了类似的成绩,而不仅仅是理论上的成绩。这项研究可以帮助修改理论科目的评估和评估模式,和/或微调该课程的课程结构和目标,还可以找到一些替代技术来提高其他能力。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号