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Gender Shades: Intersectional Accuracy Disparities in Commercial Gender Classification

机译:性别差异:商业性别分类中的部门间准确性差异

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Recent studies demonstrate that machine learning algorithms can discriminate based on classes like race and gender. In this work, we present an approach to evaluate bias present in automated facial analysis algorithms and datasets with respect to phenotypic subgroups. Using the dermatologist approved Fitzpatrick Skin Type classification system, we characterize the gender and skin type distribution of two facial analysis benchmarks, IJB-A and Adience. We find that these datasets are overwhelmingly composed of lighter-skinned subjects (79.6% for IJB-A and 86.2% for Adience) and introduce a new facial analysis dataset which is balanced by gender and skin type. We evaluate 3 commercial gender classification systems using our dataset and show that darker-skinned females are the most misclassified group (with error rates of up to 34.7%). The maximum error rate for lighter-skinned males is 0.8%. The substantial disparities in the accuracy of classifying darker females, lighter females, darker males, and lighter males in gender classification systems require urgent attention if commercial companies are to build genuinely fair, transparent and accountable facial analysis algorithms.
机译:最近的研究表明,机器学习算法可以根据种族和性别等类别进行区分。在这项工作中,我们提出了一种方法,用于评估自动面部分析算法和数据集中有关表型亚组的偏倚。使用皮肤科医生批准的Fitzpatrick皮肤类型分类系统,我们表征了两个面部分析基准IJB-A和Adience的性别和皮肤类型分布。我们发现这些数据集绝大多数由肤色较浅的受试者组成(IJB-A为79.6%,Adience为86.2%),并引入了一种新的面部分析数据集,该数据集按性别和皮肤类型进行了平衡。我们使用我们的数据集评估了3种商业性别分类系统,结果表明肤色较黑的女性是分类最错误的群体(错误率高达34.7%)。肤色较浅的男性的最大错误率为0.8%。如果商业公司要建立真正公平,透明和负责任的面部分析算法,则在性别分类系统中对较黑的女性,较浅的女性,较黑的男性和较浅的男性进行分类的准确性存在巨大差异。

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