Strategic Employee Performance Analysis in the USA: Deploying Machine Learning Algorithms Intelligently

N. Gurung, Sumon Gazi, Md zahidul Islam
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Abstract

Strategic employee performance assessment assists organizations in steering productivity, affirming employee satisfaction, and accomplishing strategic organizational goals. Machine learning algorithms provide several benefits over mainstream techniques in assessing employee performance. This research paper aimed to explore the deployment of machine learning algorithms in assessing employee performance. The prime objective of employee performance analysis is to assess an employee's achievement during a specific time frame. The dataset for this research revolved around the leadership team of a global retailer's specific store level in the USA, extending over 18 months. The dataset for this study was subjected to Python programming software for intensive and comprehensive data analysis as well as for visualization purposes. From the experiment design, it was evident that XG-Boost seems to be the best-performing model overall. In particular, it had the greatest AUC for both holdout and training data (0.86 and 0.88, respectively), and it has a relatively low runtime (16 minutes) and maximum memory utilization (12%). By contrast, Random Forest displayed an average AUC for training data (0.79) but a lesser AUC for holdout data (0.51), which indicates that it may be overfitting the training data; besides, it had a longer runtime than XG-Boost.
美国战略性员工绩效分析:智能部署机器学习算法
战略性员工绩效评估有助于企业提高生产率、提升员工满意度和实现组织战略目标。与主流技术相比,机器学习算法在评估员工绩效方面具有多种优势。本研究论文旨在探索机器学习算法在员工绩效评估中的应用。员工绩效分析的首要目标是评估员工在特定时间段内取得的成绩。本研究的数据集围绕一家全球零售商在美国的特定商店的领导团队,时间跨度长达 18 个月。本研究的数据集使用 Python 编程软件进行了深入、全面的数据分析,并实现了可视化。从实验设计来看,XG-Boost 似乎是整体表现最好的模型。特别是,它在保留数据和训练数据方面的 AUC 都最大(分别为 0.86 和 0.88),运行时间(16 分钟)和内存最大利用率(12%)也相对较低。相比之下,随机森林对训练数据的平均 AUC 为 0.79,但对保留数据的 AUC 较低(0.51),这表明它可能过度拟合了训练数据;此外,它的运行时间也比 XG-Boost 长。
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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