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ORES-Inspect: A technology probe for machine learning audits on enwiki
by
Hagen, Lauren
, Terveen, Loren
, Levonian, Zachary
, Wastvedt, Solvejg
, Lilleboe, Jada
, Lu, Li
, Halfaker, Aaron
in
Encyclopedias
/ Machine learning
/ Minerals
/ Vandalism
2024
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Do you wish to request the book?
ORES-Inspect: A technology probe for machine learning audits on enwiki
by
Hagen, Lauren
, Terveen, Loren
, Levonian, Zachary
, Wastvedt, Solvejg
, Lilleboe, Jada
, Lu, Li
, Halfaker, Aaron
in
Encyclopedias
/ Machine learning
/ Minerals
/ Vandalism
2024
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ORES-Inspect: A technology probe for machine learning audits on enwiki
Paper
ORES-Inspect: A technology probe for machine learning audits on enwiki
2024
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Overview
Auditing the machine learning (ML) models used on Wikipedia is important for ensuring that vandalism-detection processes remain fair and effective. However, conducting audits is challenging because stakeholders have diverse priorities and assembling evidence for a model's [in]efficacy is technically complex. We designed an interface to enable editors to learn about and audit the performance of the ORES edit quality model. ORES-Inspect is an open-source web tool and a provocative technology probe for researching how editors think about auditing the many ML models used on Wikipedia. We describe the design of ORES-Inspect and our plans for further research with this system.
Publisher
Cornell University Library, arXiv.org
Subject
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