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    <dc:date>2026-04-15T18:09:10Z</dc:date>
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    <title>Predicting Employee Performance Levels Using Machine Learning Algorithms: Enhancing HR Decision-Making through AI</title>
    <link>http://202.88.229.59:8080/xmlui/handle/123456789/5733</link>
    <description>Title: Predicting Employee Performance Levels Using Machine Learning Algorithms: Enhancing HR Decision-Making through AI
Authors: Akhil P Shaji
Abstract: This study presents a machine-learning framework&#xD;
to predict employee performance levels, empowering HR&#xD;
professionals with data-driven insights for eTective talent&#xD;
management. Leveraging a comprehensive dataset&#xD;
encompassing demographics, job roles, engagement metrics,&#xD;
training history, and historical performance ratings, the&#xD;
research explores multiple algorithms, including LightGBM,&#xD;
XGBoost, XGBoost with SMOTE, and Random Forest. To&#xD;
address class imbalance, the Synthetic Minority Over&#xD;
sampling Technique (SMOTE) was implemented, generating&#xD;
synthetic samples to enhance prediction accuracy across all&#xD;
classes. Feature selection and importance analysis identified&#xD;
key performance predictors, such as tenure, engagement&#xD;
scores, work-life balance, and satisfaction levels. Among the&#xD;
evaluated models, Random Forest achieved the highest&#xD;
accuracy (94%) with balanced class performance, making it&#xD;
the preferred choice for deployment. This research&#xD;
underscores the transformative role of machine learning in&#xD;
HR practices, providing actionable insights to design targeted&#xD;
development programs, optimize employee performance, and&#xD;
improve organizational outcomes.</description>
    <dc:date>2024-11-01T00:00:00Z</dc:date>
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