Publications des scientifiques de l'IRD

Clare M. C. A., Sonnewald M., Lguensat Redouane, Deshayes J., Balaji V. (2022). Explainable artificial intelligence for bayesian neural networks : toward trustworthy predictions of ocean dynamics. Journal of Advances in Modeling Earth Systems, 14 (11), p. e2022MS003162 [27 p.].

Titre du document
Explainable artificial intelligence for bayesian neural networks : toward trustworthy predictions of ocean dynamics
Année de publication
2022
Type de document
Article référencé dans le Web of Science WOS:000878304000001
Auteurs
Clare M. C. A., Sonnewald M., Lguensat Redouane, Deshayes J., Balaji V.
Source
Journal of Advances in Modeling Earth Systems, 2022, 14 (11), p. e2022MS003162 [27 p.]
The trustworthiness of neural networks is often challenged because they lack the ability to express uncertainty and explain their skill. This can be problematic given the increasing use of neural networks in high stakes decision-making such as in climate change applications. We address both issues by successfully implementing a Bayesian Neural Network (BNN), where parameters are distributions rather than deterministic, and applying novel implementations of explainable AI (XAI) techniques. The uncertainty analysis from the BNN provides a comprehensive overview of the prediction more suited to practitioners' needs than predictions from a classical neural network. Using a BNN means we can calculate the entropy (i.e., uncertainty) of the predictions and determine if the probability of an outcome is statistically significant. To enhance trustworthiness, we also spatially apply the two XAI techniques of Layer-wise Relevance Propagation (LRP) and SHapley Additive exPlanation (SHAP) values. These XAI methods reveal the extent to which the BNN is suitable and/or trustworthy. Using two techniques gives a more holistic view of BNN skill and its uncertainty, as LRP considers neural network parameters, whereas SHAP considers changes to outputs. We verify these techniques using comparison with intuition from physical theory. The differences in explanation identify potential areas where new physical theory guided studies are needed.
Plan de classement
Sciences fondamentales / Techniques d'analyse et de recherche [020] ; Sciences du milieu [021] ; Limnologie physique / Océanographie physique [032]
Localisation
Fonds IRD [F B010086446]
Identifiant IRD
fdi:010086446
Contact