2024
DOI: 10.1007/s11023-024-09682-0
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Reliability and Interpretability in Science and Deep Learning

Luigi Scorzato

Abstract: In recent years, the question of the reliability of Machine Learning (ML) methods has acquired significant importance, and the analysis of the associated uncertainties has motivated a growing amount of research. However, most of these studies have applied standard error analysis to ML models—and in particular Deep Neural Network (DNN) models—which represent a rather significant departure from standard scientific modelling. It is therefore necessary to integrate the standard error analysis with a deeper epistem… Show more

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