Problem Formulation and Fairness

Samir Passi, Solon Barocas
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引用次数: 155

Abstract

Formulating data science problems is an uncertain and difficult process. It requires various forms of discretionary work to translate high-level objectives or strategic goals into tractable problems, necessitating, among other things, the identification of appropriate target variables and proxies. While these choices are rarely self-evident, normative assessments of data science projects often take them for granted, even though different translations can raise profoundly different ethical concerns. Whether we consider a data science project fair often has as much to do with the formulation of the problem as any property of the resulting model. Building on six months of ethnographic fieldwork with a corporate data science team---and channeling ideas from sociology and history of science, critical data studies, and early writing on knowledge discovery in databases---we describe the complex set of actors and activities involved in problem formulation. Our research demonstrates that the specification and operationalization of the problem are always negotiated and elastic, and rarely worked out with explicit normative considerations in mind. In so doing, we show that careful accounts of everyday data science work can help us better understand how and why data science problems are posed in certain ways---and why specific formulations prevail in practice, even in the face of what might seem like normatively preferable alternatives. We conclude by discussing the implications of our findings, arguing that effective normative interventions will require attending to the practical work of problem formulation.
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问题提法与公平性
制定数据科学问题是一个不确定和困难的过程。它需要各种形式的自由裁量工作,将高级别目标或战略目标转化为可处理的问题,除其他外,需要确定适当的目标变量和代理。虽然这些选择很少是不言而喻的,但对数据科学项目的规范性评估往往认为它们是理所当然的,尽管不同的翻译可能会引发截然不同的伦理问题。我们是否认为一个数据科学项目是公平的,往往与问题的表述有关,也与最终模型的任何属性有关。我们与一个企业数据科学团队一起进行了为期六个月的人种学实地考察,并从社会学和科学史、关键数据研究和数据库中知识发现的早期著述中汲取了一些想法,在此基础上,我们描述了问题制定过程中涉及的一系列复杂的参与者和活动。我们的研究表明,该问题的规范和操作化始终是协商和弹性的,很少考虑到明确的规范性因素。在这样做的过程中,我们表明,对日常数据科学工作的仔细描述可以帮助我们更好地理解数据科学问题是如何以及为什么以某些方式提出的——以及为什么特定的公式在实践中占上风,即使面对可能看起来像是规范上更可取的替代方案。最后,我们讨论了我们的研究结果的含义,认为有效的规范性干预将需要参与问题制定的实际工作。
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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