数据挖掘应用使用原始贝斯算法预测毕业生的吸收能力

Daka Waru, Reny Wahyuning Astuti, Novhirtamely Kahar
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引用次数: 0

摘要

预测职业高中(SMK)毕业生在工作领域的吸收的重要性,特别是SMK Negeri 9 Muaro Jambi,目前还不知道对接受SMK毕业生的工作领域的预测,因此本研究的目的是分析预测SMK Negeri 9 Muaro Jambi毕业生吸收的准确性作为材料。参考SMK Negeri 9 Muaro Jambi的毕业生是否达到了预期目标,以便将此分析作为学校提高SMK学生能力的输入。该实现通过使用Rapidminer和WEKA应用程序来辅助100个校友工作数据输入。在此分析过程中使用的属性是部门、等待时间和工作领域以及工作领域精度类别。本分析的过程是使用Naïve贝叶斯分类方法预测毕业生吸收所提供的数据进行的。本研究结果表明,Rapidminer应用程序的最高精度值为100%,而WEKA为100%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Penerapan Data Mining Untuk Memprediksi Daya Serap Lulusan Siswa Menggunakan Algoritma Native Bayes
The importance of predicting the absorption of Vocational High School (SMK) graduates in the world of work, especially SMK Negeri 9 Muaro Jambi which is not yet known about the prediction of the world of work that accepts SMK graduates so that the purpose of this study is to analyze the prediction of the accuracy of the absorption of graduates of SMK Negeri 9 Muaro Jambi as material. a reference to see whether the graduates of SMK Negeri 9 Muaro Jambi have achieved the expected goals or not so that this analysis can be used as input for schools to improve the competence of SMK students. This implementation is assisted by using the Rapidminer and WEKA applications with 100 alumni work data input. The attributes used in this analysis process are Department, Waiting Time and Field of Work and Class of Work Field Accuracy. The process in this analysis is carried out with data that has been provided with the Naïve Bayes Classification Method to predict the absorption of graduates. The results of this study the highest accuracy value in the Rapidminer application is at 100% and WEKA is at 100%.
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