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Dimension reduction properties and supervised learning of complex Functional Data | Synapse
March 3, 2026
Dimension reduction properties and supervised learning of complex Functional Data
SD
Sophie Dabo-Niang
Université de Lille
Key Points
Enhanced supervised learning significantly improves with effective dimension reduction techniques applied to complex datasets.
Key variables in functional data modeling are efficiently managed, allowing algorithms to generalize better and reduce overfitting.
Comprehensive analysis of algorithms demonstrates that dimension reduction preserves essential information while simplifying the data structure.
Highlighting the relevance of this approach may promote adoption across various fields where functional data analysis is critical.
Abstract
International audience
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Sophie Dabo-Niang (Thu,) studied this question.
synapsesocial.com/papers/69a75ba1c6e9836116a2349e
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