SELEKSI BEASISWA BIDIK MISI UNISKA MAB BANJARMASIN HIBAH LLDIKTI XI KALIMANTAN MENGGUNAKAN METODE SVM DAN TOPSIS

M. Firdaus, M. L. Putra
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Abstract

Every year LLDIKTI XI Kalimantan provides scholarships to universities under its auspices. Which Uniska has received scholarships since 2015-2018 as many as 152 bidik misi students for new students. Which is usually selected using manual steps with the help of human power. From the selection process there are problems, namely human factors. Therefore we need a computational process that supports the selection process. Then the SVM (Support Vector Machine) method is used for the classification process and the TOPSIS (Technique For Order Preference By Similarity To Ideal Solution) method is used to give a priority ranking of scholarship. The average speed of the entire process in the selection system and recommendations for the acceptance of the UNISKA Bidik Misi scholarship with the implementation of the SVM and TOPSIS methods using testing from a comparison ratio of 19.12 seconds, the fastest time is 14.40 and the longest time is 23.58. The accuracy of the selection and recommendation of acceptance of the UNISKA Bidik Misi scholarship using the training data comparison ratio and 90%: 10% data testing has an average accuracy of 85.53% and testing based on the best parameters of the SVM sequential training process is λ (Lambda) = 0.1 , constant γ (gamma) = 0.05, e = 0.0001, Maximum Iteration = 1000, ratio of 90%: 10% and value of d = 2, C (Complexity) = 1. So that the best accuracy is 100% and the average accuracy the best is 93.63%.  Keywords: Selection, UNISKA MAB, SVM, TOPSIS, MCDM.
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自2015-2018年以来,Uniska为新生提供了多达152名bidik misi学生奖学金。通常是在人力的帮助下使用手动步骤来选择。从选择过程中存在问题,即人为因素。因此,我们需要一个支持选择过程的计算过程。然后使用支持向量机(SVM)方法进行分类,使用TOPSIS (technical for Order Preference By Similarity To Ideal Solution)方法对奖学金进行优先级排序。采用SVM和TOPSIS方法对UNISKA Bidik Misi奖学金的甄选系统和推荐录取的整个过程的平均速度进行了测试,从比较比的19.12秒开始,最快时间为14.40秒,最长时间为23.58秒。使用训练数据比较比和90%:10%数据测试的UNISKA Bidik Misi奖学金的选择和推荐接受的准确率平均为85.53%,基于SVM顺序训练过程最佳参数的测试为λ (Lambda) = 0.1,常数γ (gamma) = 0.05, e = 0.0001, Maximum Iteration = 1000,比率为90%:10%,值d = 2, C (Complexity) = 1。因此,最佳准确率为100%,最佳平均准确率为93.63%。关键词:选择,UNISKA MAB, SVM, TOPSIS, MCDM。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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