Analysis Of Employee Discipline Based On Digital Attendance With The K-Means Algorithm Method

Yulya Muharmi, Sri Nadriati
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Abstract

Employee discipline is one of the most important factors for the progress of the company. PT. Sumatra Core Cellular (PT. SIS) Pekanbaru has implemented a digital attendance application, but the company has not evaluated the application to determine the level of employee discipline. Data mining is the process of extracting useful information from a large database population. One of the data mining methods is the K-Means algorithm. The data mining process uses the method of K-Means algorithm with 2 clusters namely discipline and less disciplined categories. The data used is attendance data of 159 employees, namely data on tardiness, non-attendance (TAP), attendance hours and 4 selected questionnaire questions. Tools for grouping with the Rapidminer application. Using the K-Means algorithm method, it is known that cluster 0 consists of 133 employees or 83.64% with a disciplined category and cluster 1 produces 26 employees or 16.35% with a less disciplined category. Judging from the accuracy of attendance hours, employees in cluster 0 are more likely to be present at 07.45 - 08.15 and in cluster 1 they are more likely to be present at 08.15 - 08.30. In terms of lateness and TAP, there is a lack of discipline in cluster 1. From the level of satisfaction with the application based on 4 selected questions, it can be concluded that the digital attendance application increases the discipline of the employees. The results of this analysis can be used as a reference for evaluating employee discipline, determining promotions and improving employee discipline in the future.
利用 K-Means 算法分析基于数字考勤的员工纪律问题
员工纪律是公司进步的最重要因素之一。PT.苏门答腊核心手机公司(PT. SIS)北干巴鲁分公司已经实施了数字考勤应用程序,但公司尚未对该应用程序进行评估,以确定员工纪律水平。数据挖掘是从大型数据库中提取有用信息的过程。K-Means 算法是数据挖掘方法之一。数据挖掘过程使用 K-Means 算法的方法,有 2 个聚类,即纪律严明类和纪律较差类。使用的数据是 159 名员工的出勤数据,即迟到、不出勤(TAP)、出勤时间和 4 个选定的问卷问题。使用 Rapidminer 应用程序进行分组的工具。通过 K-Means 算法,可以知道第 0 组有 133 名员工,占 83.64%,属于纪律严明类;第 1 组有 26 名员工,占 16.35%,属于纪律较差类。从出勤时间的准确性来看,第 0 组的员工更有可能在 07.45 - 08.15 出勤,而第 1 组的员工更有可能在 08.15 - 08.30 出勤。在迟到和 TAP 方面,第 1 组缺乏纪律。根据 4 个选定问题对应用程序的满意程度,可以得出结论,数字考勤应用程序提高了员工的纪律性。分析结果可作为今后评估员工纪律、决定晋升和改善员工纪律的参考。
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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