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Theory of approximation of high-dimensional functions - lecture 2

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Authors : Cohen, Albert (Author of the conference)
CIRM (Publisher )

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Abstract : An ubiquitous problem in applied science is the recovery of physical phenomenons, represented by multivariate functions, from uncomplete measurements. These measurements typically have the form of pointwise data, but could also be obtained by linear functional. Most often, recovery techniques are based on some form of approximation by finite dimensional space that should accurately capture the unknown multivariate function. The first part of the course will review fundamental tools from approximation theory that describe how well relevant classes of multivariate functions can be described by such finite dimensional spaces. The notion of (linear or nonlinear) n-width will be developped, in relation with reduced modeling strategies that allow to construct near-optimal approximation spaces for classes of parametrized PDE's. Functions of many variables that are subject to the curse of dimensionality, will also be discussed. The second part of the course will review two recovery strategies from uncomplete measurements: weighted least-squares and parametrized background data-weak methods. An emphasis will be put on the derivation of sample distributions of minimal size for ensuring optimal convergence estimates.

MSC Codes :

Additional resources :
http://smai.emath.fr/cemracs/cemracs21/data/presentation-speakers/cohen.pdf

    Information on the Video

    Film maker : Hennenfent, Guillaume
    Language : English
    Available date : 16/08/2021
    Conference Date : 20/07/2021
    Subseries : Research School
    arXiv category : Numerical Analysis
    Mathematical Area(s) : Numerical Analysis & Scientific Computing
    Format : MP4 (.mp4) - HD
    Video Time : 02:06:18
    Targeted Audience : Researchers
    Download : https://videos.cirm-math.fr/2021-07-20_Cohen_2.mp4

Information on the Event

Event Title : CEMRACS 2021: Data Assimilation and Model Reduction in High Dimensional Problems / CEMRACS 2021: Assimilation de données et réduction de modèle pour des problêmes en grande dimension
Event Organizers : Ehrlacher, Virginie ; Lombardi, Damiano ; Mula Hernandez, Olga ; Nobile, Fabio ; Taddei, Tommaso
Dates : 19/07/2021 - 23/07/2021
Event Year : 2021
Event URL : https://conferences.cirm-math.fr/2412.html

Citation Data

DOI : 10.24350/CIRM.V.19779603
Cite this video as: Cohen, Albert (2021). Theory of approximation of high-dimensional functions - lecture 2. CIRM. Audiovisual resource. doi:10.24350/CIRM.V.19779603
URI : http://dx.doi.org/10.24350/CIRM.V.19779603

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