MASSIVE: A Bayesian analysis of giant planet populations around low-mass stars
J. Lannier, P. Delorme, A. M. Lagrange, S. Borgniet, J. Rameau, J. E., Schlieder, J. Gagn\'e, M. A. Bonavita, L. Malo, G. Chauvin, M. Bonnefoy, J., H. Girard

TL;DR
This study uses Bayesian analysis of direct imaging data to estimate the frequency of giant planets around low-mass stars, revealing a lower occurrence compared to more massive stars and suggesting a correlation with stellar mass.
Contribution
It provides the first Bayesian estimate of giant planet frequency around low-mass stars using a homogeneous sample and compares it with higher-mass star surveys to explore formation mechanisms.
Findings
Estimated 4.4% of low-mass stars host 2-80MJup companions at 8-400AU.
Found lower frequency of low-mass ratio companions (<1%) around low-mass stars.
Evidence suggests planet occurrence correlates with stellar mass, but intermediate-mass ratio companions may be independent.
Abstract
Direct imaging has led to the discovery of several giant planet and brown dwarf companions. These imaged companions populate a mass, separation and age domain (mass>1MJup, orbits>5AU, age<1Gyr) quite distinct from the one occupied by exoplanets discovered by the radial velocity or transit methods. This distinction could pinpoint that different formation mechanisms are at play. We aim at investigating correlations between the host star's mass and the presence of wide-orbit giant planets, and at providing new observational constraints on planetary formation models. We observed 58 young and nearby M-type dwarfs in L'-band with the VLT/NaCo instrument and used ADI algorithms to optimize the sensitivity to planetary-mass companions and to derive the best detection limits. We estimate the probability of detecting a planet as a function of its mass and physical separation around each target.…
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