ORES: Lowering Barriers with Participatory Machine Learning in Wikipedia
Aaron Halfaker, R. Stuart Geiger

TL;DR
ORES is a participatory machine learning platform that democratizes algorithm development and auditing in Wikipedia, fostering broader social engagement and transparency in content moderation.
Contribution
It introduces a decoupled, multi-classifier system that enables non-engineers to participate in training, auditing, and deploying machine learning models in Wikipedia.
Findings
Enabled broader participation in algorithm development and auditing.
Facilitated social conversations about algorithmic roles in Wikipedia.
Demonstrated impact over five years of deployment.
Abstract
Algorithmic systems---from rule-based bots to machine learning classifiers---have a long history of supporting the essential work of content moderation and other curation work in peer production projects. From counter-vandalism to task routing, basic machine prediction has allowed open knowledge projects like Wikipedia to scale to the largest encyclopedia in the world, while maintaining quality and consistency. However, conversations about how quality control should work and what role algorithms should play have generally been led by the expert engineers who have the skills and resources to develop and modify these complex algorithmic systems. In this paper, we describe ORES: an algorithmic scoring service that supports real-time scoring of wiki edits using multiple independent classifiers trained on different datasets. ORES decouples several activities that have typically all been…
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Taxonomy
TopicsWikis in Education and Collaboration · Open Source Software Innovations · Mobile Crowdsensing and Crowdsourcing
