2022
DOI: 10.48550/arxiv.2210.08758
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Systematic Evaluation of Predictive Fairness

Abstract: Mitigating bias in training on biased datasets is an important open problem.Several techniques have been proposed, however the typical evaluation regime is very limited, considering very narrow data conditions. For instance, the effect of target class imbalance and stereotyping is under-studied. To address this gap, we examine the performance of various debiasing methods across multiple tasks, spanning binary classification (Twitter sentiment), multi-class classification (profession prediction), and regression… Show more

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