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2024 年 12 月 2 日
MetricDST Mitigating Selection Bias Through DiversityGuided SemiSupervised Metric Learning
title: MetricDST Mitigating Selection Bias Through DiversityGuided SemiSupervised Metric Learning
publish date:
2024-11-27
authors:
Yasin I. Tepeli et.al.
paper id
2411.18442v2
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abstracts:
Selection bias poses a critical challenge for fairness in machine learning, as models trained on data that is less representative of the population might exhibit undesirable behavior for underrepresented profiles. Semi-supervised learning strategies like self-training can mitigate selection bias by incorporating unlabeled data into model training to gain further insight into the distribution of the population. However, conventional self-training seeks to include high-confidence data samples, which may reinforce existing model bias and compromise effectiveness. We propose Metric-DST, a diversity-guided self-training strategy that leverages metric learning and its implicit embedding space to counter confidence-based bias through the inclusion of more diverse samples. Metric-DST learned more robust models in the presence of selection bias for generated and real-world datasets with induced bias, as well as a molecular biology prediction task with intrinsic bias. The Metric-DST learning strategy offers a flexible and widely applicable solution to mitigate selection bias and enhance fairness of machine learning models.
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编辑整理: wanghaisheng 更新日期:2024 年 12 月 2 日