Enhancing Talent Recruitment in Business Intelligence Systems: A Comparative Analysis of Machine Learning Models

Analytics Pub Date : 2024-07-15 DOI:10.3390/analytics3030017
Hikmat Al-Quhfa, Ali Mothana, Abdussalam Aljbri, Jie Song
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Abstract

In the competitive field of business intelligence, optimizing talent recruitment through data-driven methodologies is crucial for better decision-making. This study compares the effectiveness of various machine learning models to improve recruitment accuracy and efficiency. Using the recruitment data from a major Yemeni organization (2019–2022), we evaluated models including K-Nearest Neighbors, Logistic Regression, Support Vector Machine, Naive Bayes, Decision Trees, Random Forest, Gradient Boosting Classifier, AdaBoost Classifier, and Neural Networks. Hyperparameter tuning and cross-validation were used for optimization. The Random Forest model achieved the highest accuracy (92.8%), followed by Neural Networks (92.6%) and Gradient Boosting Classifier (92.5%). These results suggest that advanced machine learning models, particularly Random Forest and Neural Networks, can significantly enhance the recruitment processes in business intelligence systems. This study provides valuable insights for recruiters, advocating for the integration of sophisticated machine learning techniques in talent acquisition strategies.
加强商业智能系统中的人才招聘:机器学习模型的比较分析
在竞争激烈的商业智能领域,通过数据驱动方法优化人才招聘对于更好地做出决策至关重要。本研究比较了各种机器学习模型在提高招聘准确性和效率方面的有效性。利用也门一家大型机构的招聘数据(2019-2022 年),我们对 K-近邻、逻辑回归、支持向量机、奈夫贝叶斯、决策树、随机森林、梯度提升分类器、AdaBoost 分类器和神经网络等模型进行了评估。优化时使用了超参数调整和交叉验证。随机森林模型的准确率最高(92.8%),其次是神经网络(92.6%)和梯度提升分类器(92.5%)。这些结果表明,先进的机器学习模型,尤其是随机森林和神经网络,可以显著增强商业智能系统中的招聘流程。这项研究为招聘人员提供了宝贵的见解,倡导将先进的机器学习技术整合到人才招聘战略中。
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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