2024
DOI: 10.1088/2632-2153/ad5a60
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Causal hybrid modeling with double machine learning—applications in carbon flux modeling

Kai-Hendrik Cohrs,
Gherardo Varando,
Nuno Carvalhais
et al.

Abstract: Hybrid modeling integrates machine learning with scientific knowledge to enhance interpretability, generalization, and adherence to natural laws. Nevertheless, equifinality and regularization biases pose challenges in hybrid modeling to achieve these purposes. This paper introduces a novel approach to estimating hybrid models via a causal inference framework, specifically employing Double Machine Learning (DML) to estimate causal effects. We showcase its use for the Earth sciences on two problems related to ca… Show more

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