Fair Play for Individuals, Foul Play for Groups? Auditing Anonymization'S Impact on ML Fairness
Machine learning ML algorithms are heavily based on the availability of training data, which, depending on the domain, often includes sensitive information about data providers. This raises critical privacy concerns. Anonymization techniques have emerged as a practical solution to address these...