Fair Algorithm

Fair algorithms aim to mitigate bias and discrimination in automated decision-making systems, ensuring equitable outcomes across different demographic groups. Current research focuses on developing methods to measure and reduce bias in various model types, including large language models and deep learning architectures for image analysis, often employing techniques like data re-weighting, post-processing adjustments, and causal inference to achieve fairness while maintaining accuracy. This field is crucial for building trustworthy AI systems and addressing societal concerns about algorithmic discrimination, impacting diverse applications from healthcare and finance to criminal justice and hiring.

Papers