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Reconceptualizing examination debar criteria using fuzzy logic

机译:使用模糊逻辑重新重用考试替换标准

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Strict requirements regarding student attendance have always been a debated topic in academic institutions. Numerous studies carried out to relate class attendance with a student's overall performance have reported positive as well as negative results; thereby not resulting in a clear overall conclusion. Therefore, this paper presents a fuzzy logic based attendance evaluation system for higher educational institutions. The proposed fuzzy system considers four attributes: student attendance in the current course, overall performance, performance in the current course and faculty's assessment for deciding if the student should be debarred from examination, allowed taking the examination or be given reconsideration. Since the considered attributes are relevant to any course, it results in a generalized model which may be adapted according to the specific requirements of courses at different universities. The proposed model is implemented using the fuzzy logic toolkit of OCTAVE. The application of the system to actual students' data has yielded an accuracy of 95.25%. Further, for performance analysis, three classification algorithms, namely Naive Bayes, Support Vector Machine and Neural Networks are also applied on the same dataset.
机译:关于学生出席的严格要求一直是学术机构的辩论主题。为与学生整体表现相关的众多研究报告了积极的结果以及负面结果;因此,没有明确的整体结论。因此,本文介绍了高等教育机构的模糊逻辑考勤系统。拟议的模糊系统考虑了四个属性:学生出席当前的课程,整体表现,当前课程中的表现和教师的评估如果学生应该被审查,允许考试或进行重新考虑。由于所考虑的属性与任何课程相关,因此它导致广义模型可以根据不同大学的课程的具体要求进行调整。所提出的模型使用八度音高的模糊逻辑工具包来实现。系统将系统应用于实际学生数据的准确性为95.25%。此外,对于性能分析,三个分类算法,即天真凸鲈,支持向量机和神经网络也在相同的数据集上应用。

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