RAID: A Shared Benchmark for Robust Evaluation of Machine-Generated Text Detectors

Many commercial and open-source models claim to detect machine-generated text with extremely high accuracy (99% or more). However, very few of these detectors are evaluated on shared benchmark datasets and even when they are, the datasets used for evaluation are insufficiently challenging-lacking va...

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Veröffentlicht in:arXiv.org 2024-06
Hauptverfasser: Dugan, Liam, Hwang, Alyssa, Trhlik, Filip, Ludan, Josh Magnus, Zhu, Andrew, Xu, Hainiu, Ippolito, Daphne, Callison-Burch, Chris
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Sprache:eng
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Zusammenfassung:Many commercial and open-source models claim to detect machine-generated text with extremely high accuracy (99% or more). However, very few of these detectors are evaluated on shared benchmark datasets and even when they are, the datasets used for evaluation are insufficiently challenging-lacking variations in sampling strategy, adversarial attacks, and open-source generative models. In this work we present RAID: the largest and most challenging benchmark dataset for machine-generated text detection. RAID includes over 6 million generations spanning 11 models, 8 domains, 11 adversarial attacks and 4 decoding strategies. Using RAID, we evaluate the out-of-domain and adversarial robustness of 8 open- and 4 closed-source detectors and find that current detectors are easily fooled by adversarial attacks, variations in sampling strategies, repetition penalties, and unseen generative models. We release our data along with a leaderboard to encourage future research.
ISSN:2331-8422