English

AppleCiDEr II: SpectraNet -- A Deep Learning Network for Spectroscopic Data

Instrumentation and Methods for Astrophysics 2025-11-10 v3 High Energy Astrophysical Phenomena

Abstract

Time-domain surveys such as the Zwicky Transient Facility (ZTF) have opened a new frontier in the discovery and characterization of transients. While photometric light curves provide broad temporal coverage, spectroscopic observations remain crucial for physical interpretation and source classification. However, existing spectral analysis methods -- often reliant on template fitting or parametric models -- are limited in their ability to capture the complex and evolving spectra characteristic of such sources, which are sometimes only available at low resolution. In this work, we introduce SpectraNet, a deep convolutional neural network designed to learn robust representations of optical spectra from transients. Our model combines multi-scale convolution kernels and multi-scale pooling to extract features from preprocessed spectra in a hierarchical and interpretable manner. We train and validate SpectraNet on low-resolution time-series spectra obtained from the Spectral Energy Distribution Machine (SEDM) and other instruments, demonstrating state-of-the-art performance in classification. Furthermore, in redshift prediction tasks, SpectraNet achieves a root mean squared relative redshift error of 0.02, highlighting its effectiveness in precise regression tasks as well.

Keywords

Cite

@article{arxiv.2510.07215,
  title  = {AppleCiDEr II: SpectraNet -- A Deep Learning Network for Spectroscopic Data},
  author = {Maojie Xu and Argyro Sasli and Alexandra Junell and Felipe Fontinele Nunes and Yu-Jing Qin and Christoffer Fremling and Sam Rose and Theophile Jegou Du Laz and Benny Border and Antoine Le Calloch and Sushant Sharma Chaudhary and Hailey Markoff and Avyukt Raghuvanshi and Nabeel Rehemtulla and Jesper Sollerman and Yashvi Sharma and Niharika Sravan and Judy Adler and Tracy X. Chen and Richard Dekany and Reed Riddle and Mansi M. Kasliwal and Matthew J. Graham and Michael W. Coughlin},
  journal= {arXiv preprint arXiv:2510.07215},
  year   = {2025}
}

Comments

14 pages,9 figures

R2 v1 2026-07-01T06:24:24.376Z