A Multidimensional Data-Driven Sparse Identification Technique: The Sparse Proper Generalized Decomposition
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en
Article de revue
Ce document a été publié dans
Complexity. 2018, vol. 2018, p. 1-11
Résumé
Sparse model identification by means of data is especially cumbersome if the sought dynamics live in a high dimensional space. This usually involves the need for large amount of data, unfeasible in such a high dimensional ...Lire la suite >
Sparse model identification by means of data is especially cumbersome if the sought dynamics live in a high dimensional space. This usually involves the need for large amount of data, unfeasible in such a high dimensional settings. This well-known phenomenon, coined as the curse of dimensionality, is here overcome by means of the use of separate representations. We present a technique based on the same principles of the Proper Generalized Decomposition that enables the identification of complex laws in the low-data limit. We provide examples on the performance of the technique in up to ten dimensions.< Réduire
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