We present a new algorithm, named Autonomous Gaussian Decomposition (AGD), for automatically decomposing spectra into Gaussian components. AGD uses derivative spectroscopy and machine learning to provide optimized guesses for the number of Gaussian components in the data, and also their locations, widths, and amplitudes. We test AGD and find that it produces results comparable to human-derived solutions on 21 cm absorption spectra from the 21 cm SPectral line Observations of Neutral Gas with the EVLA (21-SPONGE) survey. We use AGD with Monte Carlo methods to derive the H I line completeness as a function of peak optical depth and velocity width for the 21-SPONGE data, and also show that the results of AGD are stable against varying observat...
Code and data products associated with the paper "Measuring the 8621 Å Diffuse Interstellar Band in ...
We improve Gaussian processes (GP) classification by reorganizing the (non-stationary and anisotropi...
We briefly review the various machine learning methods and discuss how they can be used in efficient...
Our understanding of the dynamics of the interstellar medium is informed by the study of the detaile...
The analysis of large molecular line surveys of the Galactic plane is essential for our understandin...
Transmission spectroscopy, which consists of measuring the wavelength-dependent absorption of starli...
We analyze synthetic neutral hydrogen (H I) absorption and emission spectral lines from a high-resol...
We analyze synthetic neutral hydrogen (HI) absorption and emission spectral lines from a high-resolu...
Transmission spectroscopy, which consists of measuring the wavelength-dependent absorption of starli...
Transmission spectroscopy, which consists of measuring the wavelength-dependent absorption of starli...
We present a modular, extensible likelihood framework for spectroscopic inference based on synthetic...
Degeneracies in the stellar atmospheric parameters can pollute large spectroscopic surveys, introduc...
We address the problem of line spectra detection and estimation from astrophysical data. As observat...
[Context] With its third data release, European Space Agency’s Gaia mission has published the first ...
Analytical techniques have been used for many years for fitting Gaussian peaks in nuclear spectrosco...
Code and data products associated with the paper "Measuring the 8621 Å Diffuse Interstellar Band in ...
We improve Gaussian processes (GP) classification by reorganizing the (non-stationary and anisotropi...
We briefly review the various machine learning methods and discuss how they can be used in efficient...
Our understanding of the dynamics of the interstellar medium is informed by the study of the detaile...
The analysis of large molecular line surveys of the Galactic plane is essential for our understandin...
Transmission spectroscopy, which consists of measuring the wavelength-dependent absorption of starli...
We analyze synthetic neutral hydrogen (H I) absorption and emission spectral lines from a high-resol...
We analyze synthetic neutral hydrogen (HI) absorption and emission spectral lines from a high-resolu...
Transmission spectroscopy, which consists of measuring the wavelength-dependent absorption of starli...
Transmission spectroscopy, which consists of measuring the wavelength-dependent absorption of starli...
We present a modular, extensible likelihood framework for spectroscopic inference based on synthetic...
Degeneracies in the stellar atmospheric parameters can pollute large spectroscopic surveys, introduc...
We address the problem of line spectra detection and estimation from astrophysical data. As observat...
[Context] With its third data release, European Space Agency’s Gaia mission has published the first ...
Analytical techniques have been used for many years for fitting Gaussian peaks in nuclear spectrosco...
Code and data products associated with the paper "Measuring the 8621 Å Diffuse Interstellar Band in ...
We improve Gaussian processes (GP) classification by reorganizing the (non-stationary and anisotropi...
We briefly review the various machine learning methods and discuss how they can be used in efficient...