TL;DR
This paper introduces a non-parametric copula-based estimator (NPC) for mutual information that accurately captures complex dependencies in data, is robust to marginal distribution changes, and performs well with limited samples.
Contribution
The paper presents the NPC estimator, a flexible, non-parametric method for mutual information estimation applicable to both continuous and discrete variables, with robustness and accuracy advantages.
Findings
NPC compares favorably with existing methods on artificial data.
It remains accurate across various distribution shapes.
Performs well with small sample sizes.
Abstract
Estimation of mutual information between random variables has become crucial in a range of fields, from physics to neuroscience to finance. Estimating information accurately over a wide range of conditions relies on the development of flexible methods to describe statistical dependencies among variables, without imposing potentially invalid assumptions on the data. Such methods are needed in cases that lack prior knowledge of their statistical properties and that have limited sample numbers. Here we propose a powerful and generally applicable information estimator based on non-parametric copulas. This estimator, called the non-parametric copula-based estimator (NPC), is tailored to take into account detailed stochastic relationships in the data independently of the data's marginal distributions. The NPC estimator can be used both for continuous and discrete numerical variables and thus…
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