The overlooked potential of generalized linear models in astronomy – III. Bayesian negative binomial regression and globular cluster populations

In this paper, the third in a series illustrating the power of generalized linear models (GLMs) for the astronomical community, we elucidate the potential of the class of GLMs which handles count data. The size of a galaxy's globular cluster (GC) population (N GC) is a prolonged puzzle in the a...

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Published in:Monthly notices of the Royal Astronomical Society Vol. 453; no. 2; pp. 1928 - 1940
Main Authors: de Souza, R. S., Hilbe, J. M., Buelens, B., Riggs, J. D., Cameron, E., Ishida, E. E. O., Chies-Santos, A. L., Killedar, M.
Format: Journal Article
Language:English
Published: London Oxford University Press 21-10-2015
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Summary:In this paper, the third in a series illustrating the power of generalized linear models (GLMs) for the astronomical community, we elucidate the potential of the class of GLMs which handles count data. The size of a galaxy's globular cluster (GC) population (N GC) is a prolonged puzzle in the astronomical literature. It falls in the category of count data analysis, yet it is usually modelled as if it were a continuous response variable. We have developed a Bayesian negative binomial regression model to study the connection between N GC and the following galaxy properties: central black hole mass, dynamical bulge mass, bulge velocity dispersion and absolute visual magnitude. The methodology introduced herein naturally accounts for heteroscedasticity, intrinsic scatter, errors in measurements in both axes (either discrete or continuous) and allows modelling the population of GCs on their natural scale as a non-negative integer variable. Prediction intervals of 99 per cent around the trend for expected N GC comfortably envelope the data, notably including the Milky Way, which has hitherto been considered a problematic outlier. Finally, we demonstrate how random intercept models can incorporate information of each particular galaxy morphological type. Bayesian variable selection methodology allows for automatically identifying galaxy types with different productions of GCs, suggesting that on average S0 galaxies have a GC population 35 per cent smaller than other types with similar brightness.
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ISSN:0035-8711
1365-2966
DOI:10.1093/mnras/stv1825