Large-scale Gravitational Lens Modeling with Bayesian Neural Networks for Accurate and Precise Inference of the Hubble Constant
Abstract
We investigate the use of approximate Bayesian neural networks (BNNs) in modeling hundreds of time delay gravitational lenses for Hubble constant (H0) determination. Our BNN was trained on synthetic Hubble Space Telescope quality images of strongly lensed active galactic nuclei with lens galaxy light included. The BNN can accurately characterize the posterior probability density functions (PDFs) of model parameters governing the elliptical power-law mass profile in an external shear field. We then propagate the BNN-inferred posterior PDFs into an ensemble H0 inference, using simulated time delay measurements from a plausible dedicated monitoring campaign. Assuming well-measured time delays and a reasonable set of priors on the environment of the lens, we achieve a median precision of 9.3% per lens in the inferred H0. A simple combination of a set of 200 test lenses results in a precision of 0.5 km s-1 Mpc-1 (0.7%), with no detectable bias in this H0 recovery test. The computation time for the entire pipeline—including the generation of the training set, BNN training and H0 inference—translates to 9 minutes per lens on average for 200 lenses and converges to 6 minutes per lens as the sample size is increased. Being fully automated and efficient, our pipeline is a promising tool for exploring ensemble-level systematics in lens modeling for H0 inference.
- Publication:
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The Astrophysical Journal
- Pub Date:
- March 2021
- DOI:
- arXiv:
- arXiv:2012.00042
- Bibcode:
- 2021ApJ...910...39P
- Keywords:
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- Hubble constant;
- Cosmology;
- Bayesian statistics;
- Hierarchical models;
- Strong gravitational lensing;
- Publicly available software;
- 758;
- 343;
- 1900;
- 1925;
- 1643;
- 1864;
- Astrophysics - Instrumentation and Methods for Astrophysics;
- Astrophysics - Cosmology and Nongalactic Astrophysics;
- Computer Science - Machine Learning
- E-Print:
- 21 pages (+2 appendix), 17 figures. Published in ApJ. Code at https://github.com/jiwoncpark/h0rton. Datasets, trained models, and inference results at https://zenodo.org/record/4300382