A hunt for the Snark: Annotator Diversity in Data Practices

Shivani Kapania, Alex S. Taylor, Ding Wang
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引用次数: 8

Abstract

Diversity in datasets is a key component to building responsible AI/ML. Despite this recognition, we know little about the diversity among the annotators involved in data production. We investigated the approaches to annotator diversity through 16 semi-structured interviews and a survey with 44 AI/ML practitioners. While practitioners described nuanced understandings of annotator diversity, they rarely designed dataset production to account for diversity in the annotation process. The lack of action was explained through operational barriers: from the lack of visibility in the annotator hiring process, to the conceptual difficulty in incorporating worker diversity. We argue that such operational barriers and the widespread resistance to accommodating annotator diversity surface a prevailing logic in data practices—where neutrality, objectivity and ‘representationalist thinking’ dominate. By understanding this logic to be part of a regime of existence, we explore alternative ways of accounting for annotator subjectivity and diversity in data practices.
寻找Snark:数据实践中的注释者多样性
数据集的多样性是构建负责任的AI/ML的关键组成部分。尽管认识到这一点,但我们对数据生产中涉及的注释者的多样性知之甚少。我们通过16次半结构化访谈和对44位AI/ML从业者的调查调查了注释者多样性的方法。虽然从业者描述了对注释者多样性的细微理解,但他们很少设计数据集生成来解释注释过程中的多样性。缺乏行动是通过操作障碍来解释的:从注释者招聘过程中缺乏可见性,到纳入员工多样性的概念上的困难。我们认为,这样的操作障碍和对适应注释者多样性的广泛抵制,在数据实践中呈现出一种普遍的逻辑,即中立性、客观性和“代表主义思维”占主导地位。通过将这种逻辑理解为存在制度的一部分,我们探索了在数据实践中解释注释者主观性和多样性的替代方法。
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