A Probabilistic Autoencoder for Type Ia Supernovae Spectral Time Series
George Stein, Uros Seljak, Vanessa Bohm, G. Aldering, P. Antilogus, C., Aragon, S. Bailey, C. Baltay, S. Bongard, K. Boone, C. Buton, Y. Copin, S., Dixon, D. Fouchez, E. Gangler, R. Gupta, B. Hayden, W. Hillebrandt, M., Karmen, A. G. Kim, M. Kowalski, D. Kusters, P. F. Leget

TL;DR
This paper introduces a probabilistic autoencoder that models the spectral diversity of Type Ia supernovae, enabling improved analysis and standardization for cosmological measurements.
Contribution
The authors develop a physically-parameterized probabilistic autoencoder with a low-dimensional latent space for supernova spectra, enhancing modeling and analysis capabilities.
Findings
Learns a low-dimensional latent space capturing supernova spectral diversity
Achieves a root mean square magnitude standardization of 0.091 mag
Separates intrinsic and extrinsic variability modes during training
Abstract
We construct a physically-parameterized probabilistic autoencoder (PAE) to learn the intrinsic diversity of type Ia supernovae (SNe Ia) from a sparse set of spectral time series. The PAE is a two-stage generative model, composed of an Auto-Encoder (AE) which is interpreted probabilistically after training using a Normalizing Flow (NF). We demonstrate that the PAE learns a low-dimensional latent space that captures the nonlinear range of features that exists within the population, and can accurately model the spectral evolution of SNe Ia across the full range of wavelength and observation times directly from the data. By introducing a correlation penalty term and multi-stage training setup alongside our physically-parameterized network we show that intrinsic and extrinsic modes of variability can be separated during training, removing the need for the additional models to perform…
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