Mathematics (Oct 2022)

<i>RanKer</i>: An AI-Based Employee-Performance Classification Scheme to Rank and Identify Low Performers

  • Keyur Patel,
  • Karan Sheth,
  • Dev Mehta,
  • Sudeep Tanwar,
  • Bogdan Cristian Florea,
  • Dragos Daniel Taralunga,
  • Ahmed Altameem,
  • Torki Altameem,
  • Ravi Sharma

DOI
https://doi.org/10.3390/math10193714
Journal volume & issue
Vol. 10, no. 19
p. 3714

Abstract

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An organization’s success depends on its employees, and an employee’s performance decides whether the organization is successful. Employee performance enhances the productivity and output of organizations, i.e., the performance of an employee paves the way for the organization’s success. Hence, analyzing employee performance and giving performance ratings to employees is essential for companies nowadays. It is evident that different people have different skill sets and behavior, so data should be gathered from all parts of an employee’s life. This paper aims to provide the performance rating of an employee based on various factors. First, we compare various AI-based algorithms, such as random forest, artificial neural network, decision tree, and XGBoost. Then, we propose an ensemble approach, RanKer, combining all the above approaches. The empirical results illustrate that the efficacy of the proposed model compared to traditional models such as random forest, artificial neural network, decision tree, and XGBoost is high in terms of precision, recall, F1-score, and accuracy.

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