优化的数组数组来评估讲师的表现

Vega Purwayoga
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引用次数: 2

摘要

讲师是大学的主要角色之一。讲师的表现会影响一所大学的教学质量。由于讲师对高等教育质量的影响很大,因此需要对讲师的绩效进行评估。可以通过评价讲师在教学中的表现来评价讲师的绩效。讲师的表现可以通过学生对讲师的评价进行分类来评估。对讲师的评估是基于讲师对材料的掌握程度、讲师的教学纪律以及材料的呈现。分组讲师分数的过程可以使用K-Means算法来完成。K-Means是一种性能良好的流行聚类算法。K- means要求参数为K或簇数。由于簇数的重要性,使得在确定k的个数时需要进行优化。本研究采用肘部法进行优化,从而产生4个组的理想组数。使用SSE计算的聚类评价结果为54.4%,表明结果并不理想。由于缺乏K-Means应用的数据,聚类评估的结果不是最优的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimasi Jumlah Cluster pada Algoritme K-Means untuk Evaluasi Kinerja Dosen
Lecturers are one of the main actors in universities. Lecturer performance can affect the quality of a college. Because the quality of higher education is strongly influenced by the lecturers, the performance of the lecturers needs to be assessed. Lecturer performance can be assessed by evaluating the lecturer's performance in teaching. Lecturer performance can be evaluated by classifying student assessments of lecturers. Lecturers are assessed based on how the lecturer mastered the material, the lecturer's discipline in teaching, and the presentation of the material. The process of grouping lecturer scores can be done using the K-Means algorithm. K-Means is a popular clustering algorithm that performs well. K-Means requires a parameter that is K or the number of clusters. The importance of the number of clusters so that there is a need for optimization in determining the number of K. In this study, optimization was carried out using the Elbow method so as to produce the ideal number of groups of 4 groups. The results of the clustering evaluation calculated using the SSE were 54.4% which showed that the results were not optimal. The results of the cluster evaluation are not optimal due to the lack of data for the K-Means application.
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