Real-time Likelihood-free Inference of Roman Binary Microlensing Events with Amortized Neural Posterior Estimation
Abstract
Fast and automated inference of binary-lens, single-source (2L1S) microlensing events with sampling-based Bayesian algorithms (e.g., Markov Chain Monte Carlo, MCMC) is challenged on two fronts: the high computational cost of likelihood evaluations with microlensing simulation codes, and a pathological parameter space where the negative-log-likelihood surface can contain a multitude of local minima that are narrow and deep. Analysis of 2L1S events usually involves grid searches over some parameters to locate approximate solutions as a prerequisite to posterior sampling, an expensive process that often requires human-in-the-loop domain expertise. As the next-generation, space-based microlensing survey with the Roman Space Telescope is expected to yield thousands of binary microlensing events, a new fast and automated method is desirable. Here, we present a likelihood-free inference approach named amortized neural posterior estimation, where a neural density estimator (NDE) learns a surrogate posterior $\hat{p}({\boldsymbol{\theta }}| {\boldsymbol{x}})$ as an observation-parameterized conditional probability distribution, from pre-computed simulations over the full prior space. Trained on 291,012 simulated Roman-like 2L1S simulations, the NDE produces accurate and precise posteriors within seconds for any observation within the prior support without requiring a domain expert in the loop, thus allowing for real-time and automated inference. We show that the NDE also captures expected posterior degeneracies. The NDE posterior could then be refined into the exact posterior with a downstream MCMC sampler with minimal burn-in steps.
- Publication:
-
The Astronomical Journal
- Pub Date:
- June 2021
- DOI:
- arXiv:
- arXiv:2102.05673
- Bibcode:
- 2021AJ....161..262Z
- Keywords:
-
- Binary lens microlensing;
- Gravitational microlensing exoplanet detection;
- 2136;
- 2147;
- Astrophysics - Instrumentation and Methods for Astrophysics;
- Astrophysics - Earth and Planetary Astrophysics;
- Computer Science - Machine Learning;
- Physics - Data Analysis;
- Statistics and Probability
- E-Print:
- 15 pages, 8 figures, 3 tables. Accepted for publication in the Astronomical Journal. This article supersedes arXiv:2010.04156