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MM: Fachverband Metall- und Materialphysik
MM 11: Data Driven Material Science: Big Data and Workflows II
MM 11.6: Vortrag
Montag, 18. März 2024, 17:15–17:30, C 243
Uncertainty quantification by shallow ensemble propagation — •Matthias Kellner and Michele Ceriotti — École Polytechnique Fédérale de Lausanne, 1015 Lausanne, Switzerland
Statistical learning algorithms provide a generally-applicable framework to sidestep time-consuming experiments, or accurate physics-based modeling, but they introduce a further source of error on top of the intrinsic limitations of the experimental or theoretical setup. One way to estimate this error is uncertainty estimation which make application of data-centric approaches more trustworthy. To ensure that uncertainty quantification is used widely, one should aim for algorithms that are reasonably accurate, but also easy to implement and apply. In particular, including uncertainty quantification on top of an existing model should be straightforward, and add minimal computational overhead. Furthermore, it should be easy to process the outputs of one or more machine-learning models, propagating uncertainty over further computational steps. We compare several well-established uncertainty quantification frameworks against these requirements, and propose a practical approach, which we dub shallow ensemble propagation, that provides a good compromise between ease of use and accuracy. We present applications to the field of atomistic machine learning for chemistry and materials, which provides striking examples of the importance of using a formulation that allows to propagate errors without making strong assumptions on the correlations between different predictions of the model.
Keywords: Uncertainty Quantification; Atomistic machine learning