Two new research papers address fairness in machine learning by proposing novel methods for attribute representation and classification. The first paper introduces unbiased binning to create fairer attribute representations by minimizing bias across different groups, offering both exact and approximate solutions. The second paper presents a fair classification algorithm that learns effective feature representations to enable post-hoc control over the fairness-accuracy trade-off without requiring retraining. AI
IMPACT These papers contribute to advancing fairness in AI by offering new techniques for bias mitigation in data representation and model training.
RANK_REASON Two academic papers published on arXiv detailing new methods for fairness in machine learning.
- Fair classification via Monte Carlo policy gradient method
- Abolfazl Asudeh
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