Absolute Stance Bias
Absolute stance bias refers to systematic errors in machine learning models stemming from skewed training data or algorithmic design, leading to unfair or inaccurate predictions across different groups or contexts. Current research focuses on quantifying and mitigating these biases in various models, including large language models (LLMs), machine translation systems, and image recognition algorithms, often employing techniques like counterfactual fairness, reinforcement learning, and bias-aware evaluation metrics. Understanding and addressing absolute stance bias is crucial for ensuring fairness, reliability, and trustworthiness in AI systems across diverse applications, from healthcare and finance to social media and education.
Papers
Studying the Effects of Sex-related Differences on Brain Age Prediction using brain MR Imaging
Mahsa Dibaji, Neha Gianchandani, Akhil Nair, Mansi Singhal, Roberto Souza, Mariana Bento
Bias and Error Mitigation in Software-Generated Data: An Advanced Search and Optimization Framework Leveraging Generative Code Models
Ernesto Giralt Hernández
Towards reporting bias in visual-language datasets: bimodal augmentation by decoupling object-attribute association
Qiyu Wu, Mengjie Zhao, Yutong He, Lang Huang, Junya Ono, Hiromi Wakaki, Yuki Mitsufuji
Target-Aware Contextual Political Bias Detection in News
Iffat Maab, Edison Marrese-Taylor, Yutaka Matsuo