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CrowdWorkSheets: Accounting for Individual and Collective Identities Underlying Crowdsourced Dataset Annotation

Mark Díaz, Ian Kivlichan, Rachel Rosen, Dylan Baker, Razvan Amironesei, Vinodkumar Prabhakaran, Emily Denton

20222022 ACM Conference on Fairness, Accountability, and Transparency68 citationsDOIOpen Access PDF

Abstract

Human annotated data plays a crucial role in machine learning (ML) research and development. However, the ethical considerations around the processes and decisions that go into dataset annotation have not received nearly enough attention. In this paper, we survey an array of literature that provides insights into ethical considerations around crowdsourced dataset annotation. We synthesize these insights, and lay out the challenges in this space along two layers: (1) who the annotator is, and how the annotators’ lived experiences can impact their annotations, and (2) the relationship between the annotators and the crowdsourcing platforms, and what that relationship affords them. Finally, we introduce a novel framework, CrowdWorkSheets, for dataset developers to facilitate transparent documentation of key decisions points at various stages of the data annotation pipeline: task formulation, selection of annotators, platform and infrastructure choices, dataset analysis and evaluation, and dataset release and maintenance.

Topics & Concepts

CrowdsourcingAnnotationComputer scienceDocumentationPipeline (software)Task (project management)Data scienceSpace (punctuation)Key (lock)Selection (genetic algorithm)Information retrievalArtificial intelligenceWorld Wide WebEconomicsComputer securityOperating systemProgramming languageManagementMobile Crowdsensing and CrowdsourcingEthics and Social Impacts of AIPrivacy-Preserving Technologies in Data
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