Evidence for a non-universal Kennicutt-Schmidt relationship using hierarchical Bayesian linear regression
Rahul Shetty, Brandon C. Kelly, Frank Bigiel

TL;DR
This paper introduces a hierarchical Bayesian linear regression method to analyze the star formation rate and gas surface density relationship, revealing significant variation across galaxies and challenging the notion of a universal Kennicutt-Schmidt law.
Contribution
The paper develops a hierarchical Bayesian approach that accurately estimates the KS relationship parameters, accounting for uncertainties and hierarchical data structure, and demonstrates its effectiveness on galaxy data.
Findings
Significant variation in KS parameters across galaxies.
No single universal KS relationship applies to all galaxies.
Sub-linear KS relationships found in some galaxies.
Abstract
For investigating the relationship between the star formation rate and gas surface density, we develop a Bayesian linear regression method that rigorously treats measurement uncertainties and accounts for hierarchical data structure. The hierarchical method simultaneously estimates the intercept, slope, and scatter about the regression line of each individual subject and the population. Using synthetic datasets, we demonstrate that the method recovers the underlying parameters of both the individuals and the population, especially when compared to commonly employed ordinary least squares techniques, such as the bisector fit. We apply the hierarchical method to estimate the Kennicutt-Schmidt (KS) parameters of a sample of spiral galaxies compiled by Bigiel et al. (2008). We find significant variation in the KS parameters, indicating that no single relationship holds for all galaxies.…
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