通过学习潜结构发现和减轻算法偏差

Alexander Amini, A. Soleimany, Wilko Schwarting, S. Bhatia, D. Rus
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引用次数: 156

摘要

最近的研究强调了现代基于机器学习的系统容易受到偏见的影响,尤其是对训练数据中代表性不足的社会群体。在这项工作中,我们开发了一种新颖的可调算法,用于减轻训练数据中隐藏的和潜在未知的偏差。我们的算法将原始学习任务与变分自编码器融合在一起,学习数据集中的潜在结构,然后在训练时自适应地使用学习到的潜在分布重新加权某些数据点的重要性。虽然我们的方法适用于各种数据模式和学习任务,但在这项工作中,我们使用我们的算法来解决面部检测系统中的种族和性别偏见问题。我们在试点议会基准(PPB)上评估了我们的算法,PPB是一个专门用于评估计算机视觉系统偏差的数据集,并通过我们的去偏方法证明了整体性能的提高以及分类偏差的减少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Uncovering and Mitigating Algorithmic Bias through Learned Latent Structure
Recent research has highlighted the vulnerabilities of modern machine learning based systems to bias, especially towards segments of society that are under-represented in training data. In this work, we develop a novel, tunable algorithm for mitigating the hidden, and potentially unknown, biases within training data. Our algorithm fuses the original learning task with a variational autoencoder to learn the latent structure within the dataset and then adaptively uses the learned latent distributions to re-weight the importance of certain data points while training. While our method is generalizable across various data modalities and learning tasks, in this work we use our algorithm to address the issue of racial and gender bias in facial detection systems. We evaluate our algorithm on the Pilot Parliaments Benchmark (PPB), a dataset specifically designed to evaluate biases in computer vision systems, and demonstrate increased overall performance as well as decreased categorical bias with our debiasing approach.
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