Machine Learning Application on Employee ‎Promotion

Author:

Ilwani Muhannad1,Nassreddine Ghalia1,Younis Joumana1

Affiliation:

1. Faculty of Business, Jinan University, Tripoli, Lebanon

Abstract

Any company's most valuable asset, its workforce, is its employees. As a result, the company's primary goal should be to develop an excellent strategy for supporting and investing in its employees and staff by providing the best training and development. Employee Promotion denotes the advancement of an employee's rank. It raises the salary, position, duties, and benefits. It is a part of the job that propels employees to the highest commitment and loyalty to their organizations. Employee morale and loyalty are two critical components of any successful business. Employee promotion is the key to improving employee performance and engagement. It is a complex process that may require effort and time from the human resource department. However, artificial intelligence is a recent science that has proven effective in many sectors, including healthcare and finance. Thus, this study used artificial intelligence techniques to automate employee promo. A new promotion approach based on machine learning techniques was proposed. Three machine learning techniques were applied: Logistic regression, support vector machine, and random forest. The result shows the efficacy of these techniques on the employee promotion problem.

Publisher

Mesopotamian Academic Press

Subject

General Medicine,General Earth and Planetary Sciences,General Medicine,General Medicine,General Computer Science,Materials Chemistry,General Medicine,General Medicine,Psychiatry and Mental health,General Medicine

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