Actionable Auditing: Investigating the Impact of Publicly Naming Biased Performance Results of Commercial AI Products

Inioluwa Deborah Raji, Joy Buolamwini
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引用次数: 370

Abstract

Although algorithmic auditing has emerged as a key strategy to expose systematic biases embedded in software platforms, we struggle to understand the real-world impact of these audits, as scholarship on the impact of algorithmic audits on increasing algorithmic fairness and transparency in commercial systems is nascent. To analyze the impact of publicly naming and disclosing performance results of biased AI systems, we investigate the commercial impact of Gender Shades, the first algorithmic audit of gender and skin type performance disparities in commercial facial analysis models. This paper 1) outlines the audit design and structured disclosure procedure used in the Gender Shades study, 2) presents new performance metrics from targeted companies IBM, Microsoft and Megvii (Face++) on the Pilot Parliaments Benchmark (PPB) as of August 2018, 3) provides performance results on PPB by non-target companies Amazon and Kairos and, 4) explores differences in company responses as shared through corporate communications that contextualize differences in performance on PPB. Within 7 months of the original audit, we find that all three targets released new API versions. All targets reduced accuracy disparities between males and females and darker and lighter-skinned subgroups, with the most significant update occurring for the darker-skinned female subgroup, that underwent a 17.7% - 30.4% reduction in error between audit periods. Minimizing these disparities led to a 5.72% to 8.3% reduction in overall error on the Pilot Parliaments Benchmark (PPB) for target corporation APIs. The overall performance of non-targets Amazon and Kairos lags significantly behind that of the targets, with error rates of 8.66% and 6.60% overall, and error rates of 31.37% and 22.50% for the darker female subgroup, respectively.
可操作审计:调查公开命名有偏见的商业人工智能产品性能结果的影响
尽管算法审计已经成为揭露软件平台中嵌入的系统性偏见的关键策略,但我们很难理解这些审计对现实世界的影响,因为关于算法审计对提高商业系统中算法公平性和透明度的影响的学术研究尚处于萌芽阶段。为了分析公开命名和披露有偏见的人工智能系统的性能结果的影响,我们研究了性别阴影的商业影响,这是商业面部分析模型中对性别和皮肤类型性能差异的首次算法审计。本文1)概述了性别差异研究中使用的审计设计和结构化披露程序,2)介绍了目标公司IBM、微软和Megvii (face++)截至2018年8月在试点议会基准(PPB)上的新绩效指标,3)提供了非目标公司亚马逊和Kairos在PPB上的绩效结果,4)探讨了通过企业沟通分享的公司回应的差异,这些沟通将PPB绩效差异背景化。在最初审计的7个月内,我们发现所有三个目标都发布了新的API版本。所有目标都减少了男性和女性之间以及肤色较深和较浅的亚组之间的准确性差异,其中最显著的更新发生在肤色较深的女性亚组中,在审计期间的误差减少了17.7% - 30.4%。最大限度地减少这些差异导致目标公司api的试点议会基准(PPB)总体误差减少5.72%至8.3%。非目标Amazon和Kairos的整体表现明显落后于目标,总体错误率分别为8.66%和6.60%,深色女性子群的错误率分别为31.37%和22.50%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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