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The use of data mining classification technique to fill in structural positions in bogor local government

机译:使用数据挖掘分类技术填补茂物地方政府中的结构性职位

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The human resources of Bogor local government are managed by human resources and training division, which is called Badan Kepegawaian Pendidikan dan Pelatihan (BKPP). BKPP form a team called Badan Pertimbangan Jabatan dan Kepangkatan (Baperjakat), which are responsible for promoting, rotating and dismissing local government employees from structural positions below the Echelon IIA positions. Baperjakat have problems on constructing the draft of structural government positions. These processes were done manually, even though BKPP have a human resources information systems called SIMPEG. The main purpose of this research is to identify patterns to fill in structural positions in Bogor Local Government. 62 Classifications algortithms were tested using 3 data mining tools with 7 data sets and 7 human resources attributes to identify filling structural position patterns. The classification process yields Classification Rule with Unbiased Interaction Selection and Estimation (CRUISE) as the best algorithm in echelon class. Its average accuracy is 95.7% for each echelon level.
机译:茂物地方政府的人力资源由人力资源和培训部门管理,该部门称为Badan Kepegawaian Pendidikan dan Pelatihan(BKPP)。 BKPP组建了一个名为Badan Pertimbangan Jabatan dan Kepangkatan(Baperjakat)的团队,该团队负责提拔,轮换和解雇Echelon IIA级别以下结构性职位的地方政府雇员。 Baperjakat在构建政府结构性立场草案时遇到问题。即使BKPP拥有称为SIMPEG的人力资源信息系统,这些过程也是手动完成的。这项研究的主要目的是确定茂物地方政府中填补结构性职位的模式。使用3个数据挖掘工具(具有7个数据集和7个人力资源属性)对62个分类算法进行了测试,以识别填充结构位置模式。分类过程产生具有无偏交互选择和估计(CRUISE)的分类规则,这是梯队课程中的最佳算法。每个梯队等级的平均准确度是95.7%。

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