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LEO-Py: Estimating likelihoods for correlated, censored, and uncertain data with given marginal distributions

Feldmann, R (2019). LEO-Py: Estimating likelihoods for correlated, censored, and uncertain data with given marginal distributions. Astronomy and Computing, 29:100331.

Abstract

Data with uncertain, missing, censored, and correlated values are commonplace in many research fields including astronomy. Unfortunately, such data are often treated in an ad hoc way in the astronomical literature potentially resulting in inconsistent parameter estimates. Furthermore, in a realistic setting, the variables of interest or their errors may have non-normal distributions which complicates the modeling. I present a novel approach to compute the likelihood function for such data sets. This approach employs Gaussian copulas to decouple the correlation structure of variables and their marginal distributions resulting in a flexible method to compute likelihood functions of data in the presence of measurement uncertainty, censoring, and missing data. I demonstrate its use by determining the slope and intrinsic scatter of the star forming sequence of nearby galaxies from observational data. The outlined algorithm is implemented as the flexible, easy-to-use, open-source Python package LEO-Py.

Additional indexing

Item Type:Journal Article, refereed, original work
Communities & Collections:07 Faculty of Science > Department of Astrophysics
Dewey Decimal Classification:530 Physics
Scopus Subject Areas:Physical Sciences > Astronomy and Astrophysics
Physical Sciences > Computer Science Applications
Physical Sciences > Space and Planetary Science
Uncontrolled Keywords:Astronomy and Astrophysics, Computer Science Applications
Language:English
Date:1 October 2019
Deposited On:14 Feb 2020 08:12
Last Modified:22 May 2025 01:35
Publisher:Elsevier
ISSN:2213-1337
OA Status:Closed
Publisher DOI:https://doi.org/10.1016/j.ascom.2019.100331
Project Information:
  • Funder: SNSF
  • Grant ID: PP00P2_157591
  • Project Title: Aiming for the Parsec Scale - Star Formation and Feedback Processes in High Redshift Galaxies
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