一种更公平的图像分类的可微距离近似

Nicholas Rosa, T. Drummond, Mehrtash Harandi
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引用次数: 0

摘要

天真训练的人工智能模型可能存在严重偏见。当偏见涉及法律或道德上受保护的属性(如种族背景、年龄或性别)时,这尤其成问题。这个问题的现有解决方案需要额外的计算,不稳定的对抗性优化,或者在特征空间结构上有损失,这些特征空间结构与公平性度量无关,只能松散地概括为公平性。在这项工作中,我们提出了人口统计学方差的可微分近似值,这是一个可用于衡量人工智能模型中的偏差或不公平的指标。我们的近似可以与常规训练目标一起优化,这消除了训练过程中对任何额外模型的需要,并直接提高了正则化模型的公平性。我们证明了我们的方法在不同的任务和数据集场景中提高了人工智能模型的公平性,同时仍然保持了高水平的分类准确性。代码可从https://bitbucket.org/nelliottrosa/base_fairness获得。
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A Differentiable Distance Approximation for Fairer Image Classification
Naively trained AI models can be heavily biased. This can be particularly problematic when the biases involve legally or morally protected attributes such as ethnic background, age or gender. Existing solutions to this problem come at the cost of extra computation, unstable adversarial optimisation or have losses on the feature space structure that are disconnected from fairness measures and only loosely generalise to fairness. In this work we propose a differentiable approximation of the variance of demographics, a metric that can be used to measure the bias, or unfairness, in an AI model. Our approximation can be optimised alongside the regular training objective which eliminates the need for any extra models during training and directly improves the fairness of the regularised models. We demonstrate that our approach improves the fairness of AI models in varied task and dataset scenarios, whilst still maintaining a high level of classification accuracy. Code is available at https://bitbucket.org/nelliottrosa/base_fairness.
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