Triospect combines statistical, content, and expression views to detect AI text more robustly, reporting AUROC gains of 22.3% and 9.1% on two attacked benchmarks across 17 attacks and 17 models.
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Triospect: A Three-Dimensional Framework for Robust Statistical AI-Generated Text Detection Against Diverse Attacks
Triospect combines statistical, content, and expression views to detect AI text more robustly, reporting AUROC gains of 22.3% and 9.1% on two attacked benchmarks across 17 attacks and 17 models.