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Comparisons between different techniques for measuring mass segregation

Abstract

We examine the performance of four different methods which are used to measure mass segregation in star-forming regions: the radial variation of the mass function MMF\mathcal{M}_{\rm MF}; the minimum spanning tree-based ΛMSR\Lambda_{\rm MSR} method; the local surface density ΣLDR\Sigma_{\rm LDR} method; and the ΩGSR\Omega_{\rm GSR} technique, which isolates groups of stars and determines whether the most massive star in each group is more centrally concentrated than the average star. All four methods have been proposed in the literature as techniques for quantifying mass segregation, yet they routinely produce contradictory results as they do not all measure the same thing. We apply each method to synthetic star-forming regions to determine when and why they have shortcomings. When a star-forming region is smooth and centrally concentrated, all four methods correctly identify mass segregation when it is present. However, if the region is spatially substructured, the ΩGSR\Omega_{\rm GSR} method fails because it arbitrarily defines groups in the hierarchical distribution, and usually discards positional information for many of the most massive stars in the region. We also show that the ΛMSR\Lambda_{\rm MSR} and ΣLDR\Sigma_{\rm LDR} methods can sometimes produce apparently contradictory results, because they use different definitions of mass segregation. We conclude that only ΛMSR\Lambda_{\rm MSR} measures mass segregation in the classical sense (without the need for defining the centre of the region), although ΣLDR\Sigma_{\rm LDR} does place limits on the amount of previous dynamical evolution in a star-forming region

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