Towards Accountability for Machine Learning Datasets: Practices from Software Engineering and Infrastructure
October 23, 2020 ยท Declared Dead ยท ๐ Conference on Fairness, Accountability and Transparency
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Authors
Ben Hutchinson, Andrew Smart, Alex Hanna, Emily Denton, Christina Greer, Oddur Kjartansson, Parker Barnes, Margaret Mitchell
arXiv ID
2010.13561
Category
cs.LG: Machine Learning
Cross-listed
cs.CY,
cs.DB,
cs.SE
Citations
303
Venue
Conference on Fairness, Accountability and Transparency
Last Checked
3 months ago
Abstract
Rising concern for the societal implications of artificial intelligence systems has inspired demands for greater transparency and accountability. However the datasets which empower machine learning are often used, shared and re-used with little visibility into the processes of deliberation which led to their creation. Which stakeholder groups had their perspectives included when the dataset was conceived? Which domain experts were consulted regarding how to model subgroups and other phenomena? How were questions of representational biases measured and addressed? Who labeled the data? In this paper, we introduce a rigorous framework for dataset development transparency which supports decision-making and accountability. The framework uses the cyclical, infrastructural and engineering nature of dataset development to draw on best practices from the software development lifecycle. Each stage of the data development lifecycle yields a set of documents that facilitate improved communication and decision-making, as well as drawing attention the value and necessity of careful data work. The proposed framework is intended to contribute to closing the accountability gap in artificial intelligence systems, by making visible the often overlooked work that goes into dataset creation.
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