The Seven Sisters DANCe III: Projected spatial distribution
J. Olivares, E. Moraux, L.M. Sarro, H. Bouy, A. Berihuete, D. Barrado,, N. Huelamo, E. Bertin, J. Bouvier

TL;DR
This study applies Bayesian model comparison to analyze the projected spatial distribution of the Pleiades cluster, evaluating various radial and elliptical models, and finds strong evidence for luminosity segregation and elliptical symmetry.
Contribution
It introduces a probabilistic framework for modeling the Pleiades spatial distribution, comparing multiple models, including a new Generalised King model, and assesses the impact of data region size.
Findings
Elliptical models outperform radially symmetric ones.
Luminosity segregation is strongly supported.
Model results depend on the analyzed spatial extent.
Abstract
Methods. We compute Bayesian evidences and Bayes Factors for a set of variations of the classical radial models by King (1962), Elson et al. (1987) and Lauer et al. (1995). The variations incorporate different degrees of model freedom and complexity, amongst which we include biaxial (elliptical) symmetry, and luminosity segregation. As a by-product of the model comparison, we obtain posterior distributions and maximum a posteriori estimates for each set of model parameters. Results. We find that the model comparison results depend on the spatial extent of the region used for the analysis. For a circle of 11.5 parsecs around the cluster centre (the most homogeneous and complete region), we find no compelling reason to abandon Kings model, although the Generalised King model, introduced in this work, has slightly better fitting properties. Furthermore, we find strong evidence against…
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Taxonomy
TopicsStellar, planetary, and galactic studies · Spatial and Panel Data Analysis · Gamma-ray bursts and supernovae
