ASTROCO: Self-Supervised Conformer-Style Transformers for Light-Curve Embeddings

Tan, Antony, Protopapas, Pavlos, Cádiz-Leyton, Martina, Cabrera-Vives, Guillermo, Donoso-Oliva, Cristobal, Becker, Ignacio

arXiv.org Artificial Intelligence 

We present AstroCo, a Conformer-style encoder for irregular stellar light curves. By combining attention with depthwise convolutions and gating, AstroCo captures both global dependencies and local features. On MACHO R-band, AstroCo outperforms Astromer v1 and v2, yielding 70 percent and 61 percent lower error respectively and a relative macro-F1 gain of about 7 percent, while producing embeddings that transfer effectively to few-shot classification. These results highlight AstroCo's potential as a strong and label-efficient foundation for time-domain astronomy.