首页> 外文OA文献 >Rancang Bangun Aplikasi Data Mining untuk Memprediksi Hasil Belajar Siswa Sekolah Menengah Atas Berbasis Web dengan Algoritma K-NN (Studi Kasus: SMKN 2 Pekanbaru)
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Rancang Bangun Aplikasi Data Mining untuk Memprediksi Hasil Belajar Siswa Sekolah Menengah Atas Berbasis Web dengan Algoritma K-NN (Studi Kasus: SMKN 2 Pekanbaru)

机译:使用K-NN算法设计和构建数据挖掘应用程序,以预测基于Web的高中学生的学习效果(案例研究:SMKN 2 Pekanbaru)

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摘要

Curriculum 2013 (K-13) was first announced in 2014 which has been applied to number of schools. Preparation of this new curriculum by the government aimed at making education in Indonesia is not only focused on cognitive aspects or skills possessed, but also at students\u27 interest and motivation. Unfortunately, behind the goal, there are issues occured in the school during the application of K-13. Those are input process and values conversion that takes relatively much time. The things are caused by the dissimilarity of the standards and the assessment scale between current curriculum with the previous one. Meanwhile, the academic system running in schools is still pretty conventional. Therefore, this research will construct an application which have capability to handle the things. Beside those additional features, this research is build an application in order to apply the data mining with k-NN algorithm to predict students learning outcomes based on certain subjects. Data source that used in this research were consisted into 500 data training that covered up all classes or labels. Testing methods which have been applied are black box testing and confusion matrix. There are 3 techniques of black box testing that applied in order to test the system functionality according to its input values. Those are equivalence class partitioning, boundary value analysis and decision table based testing. Meanwhile in confusion matrix, it has been done 3 times testing according by k value in k-NN algorithm. With k-5 acquired accurate rate 79.34%, k-10 with accurate rate 62.67%, then k-15 with accurate rate 64%. Thus, information that can conluded from those testing methods is the algorithm with k-5 is more accurate than any others.
机译:2013年课程(K-13)于2014年首次发布,现已应用于许多学校。政府为在印度尼西亚进行教育而准备的这一新课程,不仅着重于认知方面或拥有的技能,而且还着眼于学生的兴趣和动力。不幸的是,在实现目标之后,在使用K-13的过程中学校出现了一些问题。这些是输入过程和值转换,需要花费大量时间。造成这种情况的原因是当前课程与先前课程之间的标准和评估规模不相同。同时,学校运行的学术系统仍然很常规。因此,本研究将构建一个具有处理事物能力的应用程序。除了这些附加功能外,本研究还构建了一个应用程序,以便将使用k-NN算法的数据挖掘应用于预测基于某些主题的学生的学习成果。这项研究中使用的数据源包含500个数据培训,涵盖了所有类别或标签。已采用的测试方法是黑盒测试和混淆矩阵。为了根据系统的输入值测试系统功能,应用了3种黑匣子测试技术。这些是等价类划分,边界值分析和基于决策表的测试。同时在混淆矩阵中,在k-NN算法中按k值进行了3次测试。如果k-5的准确率是79.34%,k-10的准确率是62.67%,然后k-15的准确率是64%。因此,可以从那些测试方法中得出的信息是k-5的算法比其他任何方法都更准确。

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