从从k -意义意义上的交叉计算结果

Filda Febrinita, W. Puspitasari, W. Zaman
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引用次数: 0

摘要

数学在计算机领域有着重要的作用,为计算机领域的工作人员提供了理论基础。事实表明,在信息工程学习项目Unisba Blitar中,专业的选择是在不考虑教授基本数学技能的课程的成绩的情况下进行的。事实上,数学能力是计算机专家所需要的。出于这个原因,进行了旨在聚类学生数学学习成果的研究。第四学期对51名学生进行聚类,采用K-means聚类算法。使用的属性是学校起源数据,目前在高中的专业,以及学生在信息学逻辑、统计学、计算数学和高级计算数学课程中的学习成果。结果表明,通过K-Means聚类算法聚类,得到5个聚类,从平均得分最高的聚类2(86.81)开始,平均得分最低的聚类5(76.50)。在聚类2中,以SMK TKJ专业毕业生为主。与此同时,第5类以自然科学专业的高中毕业生为主。此外,有研究表明,职业高中毕业生的数学能力并不总是低于高中毕业生,因为内在动机也会影响学习成果的水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Klasterisasi Hasil Belajar Matematika dengan Algoritma K-Means Clustering
Mathematics has an important role in the computer field and provides a theoretical foundation for people working in the computer field. The facts show that in the Informatics Engineering study program, Unisba Blitar, the selection of specializations is carried out without considering the grades of courses that teach basic mathematical skills. In fact, mathematical ability is needed by a computer expert. For this reason, research was conducted that aimed to cluster student mathematics learning outcomes. Clustering was carried out on 51 students in semester 4, through the application of the K-means clustering algorithm. The attributes used are school origin data, majors currently in high school, and student learning outcomes in informatics logic, statistics, computational mathematics, and advanced computational mathematics courses. The results show that through clustering with the K-Means Clustering algorithm, 5 clusters are obtained, starting from the highest average score, namely cluster 2 with a value of 86.81 and the lowest average value is cluster 5 with a value of 76.50. In cluster 2, it is dominated by students from SMK graduates majoring in TKJ. Meanwhile, cluster 5 was dominated by students from high school graduates majoring in natural sciences. In addition, there are findings indicating that vocational high school graduates do not always have lower mathematical abilities than high school graduates, because intrinsic motivation also influences the level of learning outcomes.
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