ATAT: Astronomical Transformer for time series And Tabular data
G. Cabrera-Vives, D. Moreno-Cartagena, N. Astorga, I. Reyes-Jainaga,, F. F\"orster, P. Huijse, J. Arredondo, A. M. Mu\~noz Arancibia, A. Bayo, M., Catelan, P. A. Est\'evez, P. S\'anchez-S\'aez, A. \'Alvarez, P. Castellanos,, P. Gallardo, A. Moya, D. Rodriguez-Mancini

TL;DR
ATAT is a novel Transformer-based model designed for classifying astronomical time series and tabular data, outperforming traditional methods in the LSST alert stream challenge.
Contribution
Introduces ATAT, a Transformer architecture that effectively combines light curves and tabular features for astronomical classification tasks.
Findings
ATAT achieves a macro F1-score of 82.9%, surpassing the BHRF model.
Transformer multimodal architecture enhances classification of astronomical alerts.
ATAT performs well in real-world alert brokering scenarios.
Abstract
The advent of next-generation survey instruments, such as the Vera C. Rubin Observatory and its Legacy Survey of Space and Time (LSST), is opening a window for new research in time-domain astronomy. The Extended LSST Astronomical Time-Series Classification Challenge (ELAsTiCC) was created to test the capacity of brokers to deal with a simulated LSST stream. We describe ATAT, the Astronomical Transformer for time series And Tabular data, a classification model conceived by the ALeRCE alert broker to classify light-curves from next-generation alert streams. ATAT was tested in production during the first round of the ELAsTiCC campaigns. ATAT consists of two Transformer models that encode light curves and features using novel time modulation and quantile feature tokenizer mechanisms, respectively. ATAT was trained on different combinations of light curves, metadata, and features calculated…
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Taxonomy
TopicsAstronomical Observations and Instrumentation · Time Series Analysis and Forecasting
