Litcius/Paper detail

Human-centered NLP Fact-checking: Co-Designing with Fact-checkers using Matchmaking for AI

Houjiang Liu, Anubrata Das, Alexander Boltz, Didi Zhou, Daisy Pinaroc, Matthew Lease, Min Kyung Lee

2024Proceedings of the ACM on Human-Computer Interaction20 citationsDOIOpen Access PDF

Abstract

While many Natural Language Processing (NLP) techniques have been proposed for fact-checking, both academic research and fact-checking organizations report limited adoption of such NLP work due to poor alignment with fact-checker practices, values, and needs. To address this, we investigate a co-design method, Matchmaking for AI, to enable fact-checkers, designers, and NLP researchers to collaboratively identify what fact-checker needs should be addressed by technology, and to brainstorm ideas for potential solutions. Co-design sessions we conducted with 22 professional fact-checkers yielded a set of 11 design ideas that offer a "north star'', integrating fact-checker criteria into novel NLP design concepts. These concepts range from pre-bunking misinformation, efficient and personalized monitoring misinformation, proactively reducing fact-checker potential biases, and collaborative writing fact-check reports. Our work provides new insights into both human-centered fact-checking research and practice and AI co-design research.

Topics & Concepts

Computer scienceNatural language processingArtificial intelligenceProgramming languageTopic ModelingMisinformation and Its ImpactsNatural Language Processing Techniques
Human-centered NLP Fact-checking: Co-Designing with Fact-checkers using Matchmaking for AI | Litcius