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Mitigating Algorithmic Bias: Evolving an Augmentation Policy that is Non-Biasing

机译:缓解算法偏差:发展非偏置的增强策略

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Artificial Intelligence promises to make the world a safer place through automation. Automobiles can be steered between traffic lines, spoken words can be translated into textual commands, and wanted persons can be identified by law enforcement. These tasks, once only surmountable by humans, can now be performed by AIs with great speed and precision. If these algorithms are negatively biased against certain groups, what unforeseen harm may come to society?This work focuses on the classification of gender and age, a problem known to have systemic negative bias for certain subgroups, to investigate the role of data augmentation in the mitigation of such bias. A novel approach is proposed for mitigating bias in a deep learning algorithm that estimates age and gender. Settings for numerous data augmentation techniques are learned through an evolutionary process that optimizes data augmentation for specific subgroups. This approach proves to reduce systemic bias while also generalizing models and obtaining results that are state-of-the-art. The tools we use for determining human biometrics must be fair and non-discriminatory. This work examines not only bias, but also the insights gleaned from successful and unsuccessful policies in certain scenarios.
机译:人工智能有望通过自动化使世界变得更安全。可以在交通线之间操纵汽车,可以将口语转换为文本命令,可以通过执法来识别通缉人员。这些曾经是人类无法克服的任务,现在可以由AI以极高的速度和精度来执行。如果这些算法对某些群体产生负面偏见,那么可能会对社会造成什么无法预见的伤害?这项工作着眼于性别和年龄的分类,这是已知对某些亚组具有系统性负面偏见的问题,旨在研究数据增强在特定人群中的作用。减轻这种偏见。提出了一种新颖的方法来缓解估计年龄和性别的深度学习算法中的偏见。通过优化特定子组的数据扩充的进化过程,可以了解多种数据扩充技术的设置。事实证明,这种方法可以减少系统偏差,同时还可以概括模型并获得最新的结果。我们用于确定人类生物特征的工具必须公平且无歧视。这项工作不仅研究偏见,而且还研究在某些情况下从成功和不成功的政策中获得的见解。

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