公平caipi:解释性互动与公平机器学习的结合,以减少人类与机器的偏见

IF 4 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Louisa Heidrich, Emanuel Slany, Stephan Scheele, Ute Schmid
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引用次数: 0

摘要

机器学习应用在具有关键最终用户影响的领域的兴起,导致人们越来越关注学习模型的公平性,其目标是避免对特定人口群体产生负面影响的偏见。大多数现有的偏差缓解策略在预处理过程中调整数据实例的重要性。由于公平是一个上下文概念,我们提倡一种交互式机器学习方法,使用户能够为模型适应提供迭代反馈。具体来说,我们建议将解释性交互式机器学习方法Caipi用于公平的机器学习。FairCaipi在预测和解释的循环中加入了人类的反馈,以提高模型的公平性。实验结果表明,FairCaipi在公平性和结果机器学习模型的预测性能方面优于最先进的预处理偏见缓解策略。我们证明FairCaipi可以发现和减少机器学习模型中的偏见,并允许我们检测人类偏见。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FairCaipi: A Combination of Explanatory Interactive and Fair Machine Learning for Human and Machine Bias Reduction
The rise of machine-learning applications in domains with critical end-user impact has led to a growing concern about the fairness of learned models, with the goal of avoiding biases that negatively impact specific demographic groups. Most existing bias-mitigation strategies adapt the importance of data instances during pre-processing. Since fairness is a contextual concept, we advocate for an interactive machine-learning approach that enables users to provide iterative feedback for model adaptation. Specifically, we propose to adapt the explanatory interactive machine-learning approach Caipi for fair machine learning. FairCaipi incorporates human feedback in the loop on predictions and explanations to improve the fairness of the model. Experimental results demonstrate that FairCaipi outperforms a state-of-the-art pre-processing bias mitigation strategy in terms of the fairness and the predictive performance of the resulting machine-learning model. We show that FairCaipi can both uncover and reduce bias in machine-learning models and allows us to detect human bias.
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来源期刊
CiteScore
6.30
自引率
0.00%
发文量
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审稿时长
7 weeks
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