Discrimination in AI-Driven HRM Systems: Ethical Implications and Solutions
Discrimination in AI-Driven HRM Systems: Ethical Implications and Solutions
Author(s): Goran Pavlović, Vladimir Škorić
Subject(s): Social Sciences
Published by: Udruženje ekonomista i menadžera Balkana
Keywords: Artificial Intelligence; HRM; Ethics; Diversity
Summary/Abstract: The implementation of Artificial Intelligence (AI) in Human Resource Management has gained significant traction, offering efficiency and precision in recruitment, performance evaluation, and employee management processes. However, concerns regarding the potential for discrimination and bias within AI-driven HRM systems have become a pressing issue. AI systems, while designed to be neutral, can perpetuate or even exacerbate discriminatory patterns based on race, gender, age, or socioeconomic status due to biased training data or flawed algorithmic designs. The research examines the key factors contributing to discriminatory outcomes in AI-driven HRM systems, including the lack of diversity in training datasets, the reinforcement of historical inequalities, and the absence of transparency in AI decision-making processes. It further analyzes the ethical challenges that arise when these biases result in unequal treatment of job candidates and employees, thus undermining fairness and inclusivity within organizations. To address these issues, the study proposes solutions to mitigate bias and discrimination in AI-enhanced HRM. These solutions include developing more diverse and representative datasets, implementing auditing mechanisms to identify and rectify biases, and increasing transparency in AI systems to ensure accountability in HR practices.
- Page Range: 109-117
- Page Count: 10
- Publication Year: 2024
- Language: English
- Content File-PDF
