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Open AccessArticle
A New Mutual Information Estimator for Continuous Censored Variables
by
Ima Bernada
Ima Bernada 1,*
,
Cécilia Samieri
Cécilia Samieri 1 and
Grégory Nuel
Grégory Nuel 2
1
Bordeaux Population Health, Institut National de la Santé et de la Recherche Médicale, 33000 Bordeaux, France
2
Laboratoire de Probabilités, Statistique et Modélisation, Institut National des Sciences Mathématiques et de Leurs Interactions, Centre National de la Recherche Scientifique, Sorbonne Université, 75005 Paris, France
*
Author to whom correspondence should be addressed.
Entropy 2026, 28(6), 677; https://doi.org/10.3390/e28060677 (registering DOI)
Submission received: 19 February 2026
/
Revised: 26 May 2026
/
Accepted: 3 June 2026
/
Published: 11 June 2026
Abstract
Estimating dependency relationships between variables is an important issue in statistics. Mutual information (MI) is a measure of dependency which quantifies the amount of shared information between two variables. It is free of distribution assumption and captures both linear and non-linear dependencies. MI estimation methods were primarily developed for datasets with exclusively discrete variables, exclusively continuous variables, or a mixture of both. In practice, complex variables containing both discrete and continuous values (discrete-continuous variables), specifically continuous censored variables, are often present in real datasets (e.g., biological measures from analytical tools with lower detection limit). Methods have been developed to handle discrete-continuous data, but their effectiveness on the specific case of continuous censored data has not yet been evaluated. We propose a new estimation method based on the decomposition of the MI formula, with a first part handling the censoring status of the data, and a second part handling its continuous section. This estimation method works as a correction, as it takes in parameter one MI estimator for continuous data, and makes it able to handling censoring. We constructed different simulation scenarios of pairs of correlated censored log-normal variables, by varying the censoring rate, correlation, and sample size. We evaluated our correction on a few existing estimators previously developed for continuous, mixed or discrete-continuous data. We compared the selected estimators, with and without the correction, on these different scenarios. We found that the correction globally enables to reduce bias, and allows convergence towards the true MI value as the number of observations increases.
Share and Cite
MDPI and ACS Style
Bernada, I.; Samieri, C.; Nuel, G.
A New Mutual Information Estimator for Continuous Censored Variables. Entropy 2026, 28, 677.
https://doi.org/10.3390/e28060677
AMA Style
Bernada I, Samieri C, Nuel G.
A New Mutual Information Estimator for Continuous Censored Variables. Entropy. 2026; 28(6):677.
https://doi.org/10.3390/e28060677
Chicago/Turabian Style
Bernada, Ima, Cécilia Samieri, and Grégory Nuel.
2026. "A New Mutual Information Estimator for Continuous Censored Variables" Entropy 28, no. 6: 677.
https://doi.org/10.3390/e28060677
APA Style
Bernada, I., Samieri, C., & Nuel, G.
(2026). A New Mutual Information Estimator for Continuous Censored Variables. Entropy, 28(6), 677.
https://doi.org/10.3390/e28060677
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