TL;DR
This paper presents a deep learning approach for analyzing high-resolution spectroscopic data to determine stellar parameters and element abundances with realistic uncertainties, achieving high accuracy and speed on large datasets.
Contribution
The authors develop a neural network that mimics standard spectroscopic analysis, handles incomplete and noisy data, and provides reliable uncertainties, enabling rapid analysis of large astronomical datasets.
Findings
Achieves ~0.03 dex accuracy for 18 elements.
Provides realistic uncertainty estimates that adapt to data quality.
Analyzes 250,000 spectra in ten minutes on a single GPU.
Abstract
Deep learning with artificial neural networks is increasingly gaining attention, because of its potential for data-driven astronomy. However, this methodology usually does not provide uncertainties and does not deal with incompleteness and noise in the training data. In this work, we design a neural network for high-resolution spectroscopic analysis using APOGEE data that mimics the methodology of standard spectroscopic analyses: stellar parameters are determined using the full wavelength range, but individual element abundances use censored portions of the spectrum. We train this network with a customized objective function that deals with incomplete and noisy training data and apply dropout variational inference to derive uncertainties on our predictions. We determine parameters and abundances for 18 individual elements at the dex level, even at low signal-to-noise…
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