20–23 mai 2025
Université Paris Cité
Fuseau horaire Europe/Paris

Representation Learning for Anomaly Detection and Unsupervised Classification of Variable X-ray Sources

22 mai 2025, 10:05
5m
Buffon Amphitheater (Université Paris Cité)

Buffon Amphitheater

Université Paris Cité

15 rue Hélène Brion 75013 Paris
Poster + lightning talk Time Domain Astrophysics Flash talks #2

Orateur

Steven Dillmann (Stanford University)

Description

We present a novel representation learning method for downstream tasks like anomaly detection, unsupervised classification, and similarity searches in high-energy data sets. This enabled the discovery of a new extragalactic fast X-ray transient (FXT) in Chandra archival data, XRT 200515, a needle-in-the-haystack event and the first Chandra FXT of its kind. Recent serendipitous discoveries in X-ray astronomy, including FXTs from binary neutron star mergers and an extragalactic planetary transit candidate, highlight the need for systematic transient searches in X-ray archives. We introduce new event file representations, E-t maps and E-t-dt cubes, that effectively encode both temporal and spectral information, enabling the seamless application of machine learning to variable-length event file time series. Our unsupervised learning approach employs PCA or sparse autoencoders to extract low-dimensional, informative features from these data representations, followed by clustering in the embedding space with DBSCAN. New transients are identified within transient-dominant clusters or through nearest-neighbour searches around known transients, producing a catalogue of 3559 candidates (3447 flares and 112 dips). XRT 200515 exhibits unique temporal and spectral variability, including an intense, hard <10 s initial burst, followed by spectral softening in an ~800 s oscillating tail. We interpret XRT 200515 as either the first giant magnetar flare observed at low X-ray energies or the first extragalactic Type I X-ray burst from a faint, previously unknown low-mass X-ray binary in the LMC. Our method extends to data sets from other observatories such as XMM–Newton, Swift-XRT, eROSITA, Einstein Probe, and upcoming missions like AXIS.

Author

Steven Dillmann (Stanford University)

Co-auteurs

Dr Rafael Martinez-Galarza (Center for Astrophysics | Harvard & Smithsonian) Roberto Soria (ICRAR) Dr Rosanne Di Stefano (Center for Astrophysics | Harvard & Smithsonian) Dr Vinay Kashyap (Center for Astrophysics | Harvard & Smithsonian)

Documents de présentation