Systematic Evaluation of Predictive Fairness

Q3 Environmental Science
Xudong Han, Aili Shen, Trevor Cohn, Timothy Baldwin, Lea Frermann
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引用次数: 3

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 (valence prediction). Through extensive experimentation, we find that data conditions have a strong influence on relative model performance, and that general conclusions cannot be drawn about method efficacy when evaluating only on standard datasets, as is current practice in fairness research.
预测公平性的系统评价
在有偏数据集的训练中减少偏差是一个重要的开放性问题。已经提出了几种技术,但是考虑到非常狭窄的数据条件,典型的评价制度非常有限。例如,目标阶级不平衡和刻板印象的影响尚未得到充分研究。为了解决这一差距,我们研究了跨多个任务的各种去偏方法的性能,包括二元分类(Twitter情绪)、多类分类(职业预测)和回归(价预测)。通过广泛的实验,我们发现数据条件对模型的相对性能有很强的影响,并且仅在标准数据集上进行评估时无法得出关于方法有效性的一般结论,这是目前公平性研究的实践。
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来源期刊
AACL Bioflux
AACL Bioflux Environmental Science-Management, Monitoring, Policy and Law
CiteScore
1.40
自引率
0.00%
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