Abstract
The present work aims at analyzing issues related to the data manifold dimensionality. The interest of the study is twofold: (i) first, when too many measurable variables are considered, manifold learning is expected to extract useless variables; (ii) second, and more important, the same technique, manifold learning, could be utilized for identifying the necessity of employing latent extra variables able to recover single-valued outputs. Both aspects are discussed in the modeling of materials and structural systems by using unsupervised manifold learning strategies.
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Ibanez, R., Gilormini, P., Cueto, E., & Chinesta, F. (2021). Numerical experiments on unsupervised manifold learning applied to mechanical modeling of materials and structures. Comptes Rendus - Mecanique, 348(10–11), 937–958. https://doi.org/10.5802/CRMECA.53
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