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Principal Component Analysis for Dependent FunctionalData: Incorporating Spatial and Temporal Structures | Synapse
March 3, 2026
Principal Component Analysis for Dependent FunctionalData: Incorporating Spatial and Temporal Structures
SD
Sophie Dabo-Niang
Université de Lille
Puntos clave
This analysis demonstrates enhanced dimensionality reduction using principal component analysis techniques.
The method effectively incorporates spatial and temporal structures, allowing for richer data insights.
Observational analysis considers various functional data applications, improving interpretation of complex datasets.
This approach highlights the potential for better modeling of dependent functional data, bridging gaps in current methodologies.
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Sophie Dabo-Niang (Mon,) studied this question.
synapsesocial.com/papers/69a75b9ac6e9836116a23339
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