This is a searchable repository of links to math videos. The database is regularly updated with videos from the following websites. If there is a source of videos which you would like to be added to this list, please send me an email at admin@videoarxiv.org.
  1. Simons Center
  2. Mathtube
  3. MSRI
  4. IHES
  5. Fields Institute
  6. Banff
  7. IAS

All talks

  1. Title:
    Parameter space dimension reduction for forward and inverse uncertainty quantification

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  2. Title:
    Multilevel Monte Carlo methods for Bayesian inference

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  3. Title:
    Multilevel weighted least squares approximation

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  4. Title:
    MLMC for value-at-risk

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  5. Title:
    Uncertainty quantification of geochemical and mechanical compaction in layered sedimentary basins

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  6. Title:
    A domain decomposition method for stochastic elliptic differential equations

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  7. Title:
    Convergence analysis of Padé approximations for Helmholtz problems with parametric/ stochastic wavenumber

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  8. Title:
    Numerical methods for stochastic conservation laws

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  9. Title:
    Uncertainty quantification for multiscale kinetic equations with uncertain coefficients

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  10. Title:
    Stochastic regularity of a quadratic observable of high frequency waves

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  11. Title:
    Fully scalable implementation of a volume coupling scheme for the modeling of random polycrystalline materials

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  12. Title:
    Hybrid fuzzy-stochastic predictive modeling and computation

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  13. Title:
    The probability density evolution method for uncertainty quantification and global reliability of complex civil structures

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  14. Title:
    Dimension reduction of the input parameter space of vector-valued functions

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  15. Title:
    Beyond normality: Learning sparse probabilistic graphical models in the non-Gaussian setting

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