BONNSAI correlated stellar observables in Bayesian methods
| Authors |
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| Publication date | 2017 |
| Journal | Astronomy & Astrophysics |
| Article number | A60 |
| Volume | Issue number | 598 |
| Number of pages | 16 |
| Organisations |
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| Abstract |
In an era of large spectroscopic surveys of stars and big data,
sophisticated statistical methods become more and more important in
order to infer fundamental stellar parameters such as mass and age.
Bayesian techniques are powerful methods because they can match all
available observables simultaneously to stellar models while taking
prior knowledge properly into account. However, in most cases it is
assumed that observables are uncorrelated which is generally not the
case. Here, we include correlations in the Bayesian code Bonnsai by
incorporating the covariance matrix in the likelihood function. We
derive a parametrisation of the covariance matrix that, in addition to
classical uncertainties, only requires the specification of a
correlation parameter that describes how observables co-vary. Our
correlation parameter depends purely on the method with which
observables have been determined and can be analytically derived in some
cases. This approach therefore has the advantage that correlations can
be accounted for even if information for them are not available in
specific cases but are known in general. Because the new likelihood
model is a better approximation of the data, the reliability and
robustness of the inferred parameters are improved. We find that
neglecting correlations biases the most likely values of inferred
stellar parameters and affects the precision with which these parameters
can be determined. The importance of these biases depends on the
strength of the correlations and the uncertainties. For example, we
apply our technique to massive OB stars, but emphasise that it is valid
for any type of stars. For effective temperatures and surface gravities
determined from atmosphere modelling, we find that masses can be
underestimated on average by 0.5σ and mass uncertainties
overestimated by a factor of about 2 when neglecting correlations. At
the same time, the age precisions are underestimated over a wide range
of stellar parameters. We conclude that accounting for correlations is
essential in order to derive reliable stellar parameters including
robust uncertainties and will be vital when entering an era of precision
stellar astrophysics thanks to the Gaia satellite.
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| Document type | Article |
| Language | English |
| Published at | https://doi.org/10.1051/0004-6361/201628409 |
| Other links | http://adsabs.harvard.edu/abs/2017A%26A...598A..60S |
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