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The Implementation of Data Mining to Show UKT (Students’ Tuition) Using Fuzzy C-Means Algorithm : (Case Study: Universitas Pendidikan Ganesha)

机译:利用模糊C型算法的数据挖掘实施以显示UKT(学生的学费):(案例研究:Universitas Pendidikan Ganesha)

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摘要

This research aimed to show the result of clustering students' tuition (UKT) at Undiksha using algorithm FCM. The characteristics of each cluster, measurement of level implementing algorithm FCM accuracy in determining UKT. Students' tuition data used in this research include students' tuition from SBMPTN year 2017. The students' data came from 30 students with 7 parameters, namely, parents' occupation, parents' income, number of dependents, assets, water payment, electronic voltage, and varieties of vehicles. The data of students' tuition grouped into four groups, namely, UKT 1, UKT 2, UKT 3, and UKT 4. The data from grouping students' tuition using FCM method in determining students' tuition supported with Matlab Software 2017 a showed UKT 1 into 89 students, UKT 2 into 91 students, UKT 3 into 79 students, and UKT 4 into 46 students. The data characteristics of each student's tuition were gathered from each parameter based on the result of the center vector (v) in the last iteration. Besides, the result showed an FCM method has high accuracy in 0.78. The result of factor analysis showed 3 factors determined students' tuition from 7 parameters, namely, income factor, expulsion factor, and load factor. On the other hand, future research can be developed by grouping the 3 factors as computation variable in algorithm FCM and to use other methods, so that the results of clustering are more optimal.
机译:这项研究旨在使用算法FCM展示undiksha的聚类学生学费(UKT)的结果。每个集群的特征,测量算法在确定UKT时实现FCM精度。本研究中使用的学生的学费数据包括2017年的学生的学生。学生的数据来自30名参数,即父母的职业,家长收入,家属,资产,水资费数量,电子电压。和各种车辆。学生的学生的数据分为四组,即英国人,Ukt 1,Ukt 2,UKT 3和UKT 4.通过FCM方法分组学生的学费在确定与Matlab Software 2017 A显示的学生的学费显示UKT 1进入89名学生,UKT 2进入91名学生,UKT 3进入79名学生,UKT 4分为46名学生。基于最后一次迭代中的中心向量(v)的结果,每个学生的学生的数据特征从每个参数收集。此外,结果表明FCM方法在0.78中具有高精度。因子分析的结果显示3个因素确定了7个参数的学生,即收入因子,驱逐因素和负载因子。另一方面,可以通过将3个因素作为计算变量在算法FCM中进行分组并使用其他方法来开发未来的研究,使聚类结果更加优化。

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