COIMLGOct 26, 2020

Hierarchical Inference With Bayesian Neural Networks: An Application to Strong Gravitational Lensing

arXiv:2010.13787v343 citations
Originality Incremental advance
AI Analysis

This addresses bias issues in astrophysical inference, enabling more reliable analysis of gravitational lensing data for future surveys, though it is incremental as it builds on existing BNN and hierarchical methods.

The authors tackled bias in Bayesian Neural Networks (BNNs) due to mismatched training and real-world data distributions by integrating BNNs into a hierarchical inference framework, achieving statistically consistent posterior PDFs for gravitational lens parameters and mitigating bias from unrepresentative training sets while reconstructing population hyperparameters.

In the past few years, approximate Bayesian Neural Networks (BNNs) have demonstrated the ability to produce statistically consistent posteriors on a wide range of inference problems at unprecedented speed and scale. However, any disconnect between training sets and the distribution of real-world objects can introduce bias when BNNs are applied to data. This is a common challenge in astrophysics and cosmology, where the unknown distribution of objects in our Universe is often the science goal. In this work, we incorporate BNNs with flexible posterior parameterizations into a hierarchical inference framework that allows for the reconstruction of population hyperparameters and removes the bias introduced by the training distribution. We focus on the challenge of producing posterior PDFs for strong gravitational lens mass model parameters given Hubble Space Telescope (HST) quality single-filter, lens-subtracted, synthetic imaging data. We show that the posterior PDFs are sufficiently accurate (i.e., statistically consistent with the truth) across a wide variety of power-law elliptical lens mass distributions. We then apply our approach to test data sets whose lens parameters are drawn from distributions that are drastically different from the training set. We show that our hierarchical inference framework mitigates the bias introduced by an unrepresentative training set's interim prior. Simultaneously, given a sufficiently broad training set, we can precisely reconstruct the population hyperparameters governing our test distributions. Our full pipeline, from training to hierarchical inference on thousands of lenses, can be run in a day. The framework presented here will allow us to efficiently exploit the full constraining power of future ground- and space-based surveys.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes