TL;DR
This paper introduces a novel Bayesian inference method using neural networks and normalizing flows to map stellar surface temperature distributions from spectroscopic data, enabling efficient sampling of the posterior distribution.
Contribution
It presents a new approach combining amortized neural posterior estimation, normalizing flows, and Transformer encoders for stellar Doppler Imaging, providing a full Bayesian posterior.
Findings
Accurately approximates the posterior distribution of stellar surface temperatures.
Produces thousands of samples per second, enabling efficient analysis.
Successfully applied to the star II Peg, creating the first Bayesian temperature map.
Abstract
The non-uniform surface temperature distribution of rotating active stars is routinely mapped with the Doppler Imaging technique. Inhomogeneities in the surface produce features in high-resolution spectroscopic observations that shift in wavelength depending on their position on the visible hemisphere. The inversion problem has been systematically solved using maximum a-posteriori regularized methods assuming smoothness or maximum entropy. Our aim in this work is to solve the full Bayesian inference problem, by providing access to the posterior distribution of the surface temperature in the star. We use amortized neural posterior estimation to produce a model that approximates the high-dimensional posterior distribution for spectroscopic observations of selected spectral ranges sampled at arbitrary rotation phases. The posterior distribution is approximated with conditional normalizing…
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Taxonomy
MethodsAttention Is All You Need · Linear Layer · Absolute Position Encodings · Position-Wise Feed-Forward Layer · Layer Normalization · Adam · Label Smoothing · Softmax · Byte Pair Encoding · Residual Connection
