Document detail
ID

oai:arXiv.org:2410.21477

Topic
Astrophysics - Instrumentation and... Astrophysics - Earth and Planetary... Computer Science - Machine Learnin...
Author
Gebhard, Timothy D. Wildberger, Jonas Dax, Maximilian Kofler, Annalena Angerhausen, Daniel Quanz, Sascha P. Schölkopf, Bernhard
Category

Computer Science

Year

2024

listing date

1/1/2025

Keywords
evidence sampling bayesian fmpe ml npe results models atmospheric retrieval astrophysics
Metrics

Abstract

Inferring atmospheric properties of exoplanets from observed spectra is key to understanding their formation, evolution, and habitability.

Since traditional Bayesian approaches to atmospheric retrieval (e.g., nested sampling) are computationally expensive, a growing number of machine learning (ML) methods such as neural posterior estimation (NPE) have been proposed.

We seek to make ML-based atmospheric retrieval (1) more reliable and accurate with verified results, and (2) more flexible with respect to the underlying neural networks and the choice of the assumed noise models.

First, we adopt flow matching posterior estimation (FMPE) as a new ML approach to atmospheric retrieval.

FMPE maintains many advantages of NPE, but provides greater architectural flexibility and scalability.

Second, we use importance sampling (IS) to verify and correct ML results, and to compute an estimate of the Bayesian evidence.

Third, we condition our ML models on the assumed noise level of a spectrum (i.e., error bars), thus making them adaptable to different noise models.

Both our noise level-conditional FMPE and NPE models perform on par with nested sampling across a range of noise levels when tested on simulated data.

FMPE trains about 3 times faster than NPE and yields higher IS efficiencies.

IS successfully corrects inaccurate ML results, identifies model failures via low efficiencies, and provides accurate estimates of the Bayesian evidence.

FMPE is a powerful alternative to NPE for fast, amortized, and parallelizable atmospheric retrieval.

IS can verify results, thus helping to build confidence in ML-based approaches, while also facilitating model comparison via the evidence ratio.

Noise level conditioning allows design studies for future instruments to be scaled up, for example, in terms of the range of signal-to-noise ratios.

;Comment: Accepted for publication in Astronomy & Astrophysics

Gebhard, Timothy D.,Wildberger, Jonas,Dax, Maximilian,Kofler, Annalena,Angerhausen, Daniel,Quanz, Sascha P.,Schölkopf, Bernhard, 2024, Flow Matching for Atmospheric Retrieval of Exoplanets: Where Reliability meets Adaptive Noise Levels

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