[ascl:1708.026]
XDGMM: eXtreme Deconvolution Gaussian Mixture Modeling
XDGMM uses Gaussian mixtures to do density estimation of noisy, heterogenous, and incomplete data using extreme deconvolution (XD) algorithms which is compatible with the scikit-learn machine learning methods. It implements both the astroML and Bovy et al. (2011) algorithms, and extends the BaseEstimator class from scikit-learn so that cross-validation methods work. It allows the user to produce a conditioned model if values of some parameters are known.
- Code site:
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https://github.com/tholoien/XDGMM
- Described in:
-
https://ui.adsabs.harvard.edu/abs/2017AJ....153..249H
- Bibcode:
- 2017ascl.soft08026H