Journal
ASTROPHYSICAL JOURNAL LETTERS
Volume 952, Issue 1, Pages -Publisher
IOP Publishing Ltd
DOI: 10.3847/2041-8213/ace361
Keywords
-
Categories
Ask authors/readers for more resources
Flagship surveys in the near future will provide unprecedented resolution on galaxy assembly processes, but this poses a computational challenge. A simulation-based inference method, SBI (++), is proposed to handle out-of-distribution errors and missing data in astronomical surveys. SBI (++) can accurately infer photometric redshifts and significantly improve inference speed.
Flagship near-future surveys targeting 10(8)-10(9) galaxies across cosmic time will soon reveal the processes of galaxy assembly in unprecedented resolution. This creates an immediate computational challenge on effective analyses of the full data set. With simulation-based inference (SBI), it is possible to attain complex posterior distributions with the accuracy of traditional methods but with a >10(4) increase in speed. However, it comes with a major limitation. Standard SBI requires the simulated data to have characteristics identical to those of the observed data, which is often violated in astronomical surveys due to inhomogeneous coverage and/or fluctuating sky and telescope conditions. In this work, we present a complete SBI-based methodology, SBI (++) , for treating out-of-distribution measurement errors and missing data. We show that out-of-distribution errors can be approximated by using standard SBI evaluations and that missing data can be marginalized over using SBI evaluations over nearby data realizations in the training set. In addition to the validation set, we apply SBI (++) to galaxies identified in extragalactic images acquired by the James Webb Space Telescope, and show that SBI (++) can infer photometric redshifts at least as accurately as traditional sampling methods-and crucially, better than the original SBI algorithm using training data with a wide range of observational errors. SBI (++) retains the fast inference speed of similar to 1 s for objects in the observational training set distribution, and additionally permits parameter inference outside of the trained noise and data at similar to 1 minute per object. This expanded regime has broad implications for future applications to astronomical surveys. (Code and a Jupyter tutorial are made publicly available at https://github.com/wangbingjie/sbi_pp.)
Authors
I am an author on this paper
Click your name to claim this paper and add it to your profile.
Reviews
Recommended
No Data Available