用C4.5算法、随机树、随机森林预测员工出勤因素

Semesta Teknika Pub Date : 2020-05-03 DOI:10.18196/st.231254
Riza Fahlapi, H. Hermanto, A. Y. Kuntoro, L. Effendi, R. O. Nitra, Siti Nurlela
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引用次数: 2

摘要

基于工人在一定时期内缺勤标准工作时间的确定,对工人表现的研究。在纪律监督方面,工人应能够在预定的工作时间内提供最佳的工作表现。安置工人入院时间纪律水平的测量是在每个工作日连续不断地进行的。考勤监控已经通过使用从在线考勤提供商下载的数据作为主要数据来使用在线考勤。此外,数据收集是通过过滤员工缺勤数据和支持导致会议工作时间表不匹配的类别信息来完成的。根据地点和工作时间调动工人已在公司条例中进行了规定,允许根据住所安排工人,以免影响预期的工作结果——公司仍在合理范围内,可以增加。将本研究评估为阻碍公司实现公司目标的进展因素。根据作者使用三种算法对员工延迟因素的预测进行的分析结果,即C.45算法的准确率=79.37%和AUC值=0.646,随机森林算法的准确度=78.58%和AUC值=0.807,而随机树算法的准确性=76.26%和AUC价值=0.610。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Employee Attendance Factors Using C4.5 Algorithm, Random Tree, Random Forest
Research on the performance of workers based on the determination of standard working hours for absences conducted by workers in a certain period. In disciplinary supervision, workers are expected to be able to provide the best performance in the implementation of work in accordance with predetermined working hours. The measurement of the level of discipline of admission hours for placement workers is carried out every working day, continuously and continuously. Attendance monitoring already uses online attendance by using data downloaded from the online attendance provider as the main data. In addition, data collection is done by filtering employee absentee data and supporting information on the categories that cause mismatches in meeting work schedules. Mobilization of workers according to location and working hours has been regulated in company regulations allowing the placement of workers in accordance with the residence so as not to affect the desired work results the company is still within reasonable limits and can be increased. The assessment of this study as a progression factor inhibiting the company in achieving company targets. From the results of the author's analysis of the prediction of employee delay factors using three algorithms, namely the C.45 algorithm accuracy = 79.37% and AUC value = 0.646, Random Forest Algorithm accuracy = 78.58% and AUC value = 0.807 while for the Random Tree algorithm accuracy = 76.26% and the AUC value = 0.610.
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