DANTE applies domain-adapted Vision Transformers, Multiple Instance Learning, and adaptive Dirichlet Process Mixture Models to unsupervisedly detect and triage extended transients in LIGO O4a data while stressing the need for native background recalibration.
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2026 1verdicts
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DANTE: A Reference-Guided Unsupervised Pipeline for Extended-Transient Anomaly Characterization in LIGO O4a
DANTE applies domain-adapted Vision Transformers, Multiple Instance Learning, and adaptive Dirichlet Process Mixture Models to unsupervisedly detect and triage extended transients in LIGO O4a data while stressing the need for native background recalibration.