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:
    Data thinning and its applications

    Speaker:

    Link:

  2. Title:
    Integrating Tools from Statistical Modelling and Machine Learning to Learn Optimal Treatment Regimes from Electronic Health Records

    Speaker:

    Link:

  3. Title:
    Randomization Inference When N = 1

    Speaker:

    Link:

  4. Title:
    Towards Generative Models for Analyzing Multi-Dimensional Digital Phenotypes

    Speaker:

    Link:

  5. Title:
    Benchmarking Machine Learning Models for Polymer Informatics: An Example of Glass Transition Temperature

    Speaker:

    Link:

  6. Title:
    Sparse Causal Learning: Challenges and Opportunities

    Speaker:

    Link:

  7. Title:
    Statistical Significance of Clustering for High Dimensional Data

    Speaker:

    Link:

  8. Title:
    Large-scale genotype prediction from RNA-seq reveals new issues in policy and ethic

    Speaker:

    Link:

  9. Title:
    Some applications of large-scale trait imputation with genotyped individuals and GWAS summary data

    Link:

  10. Title:
    PANORAMIA: Efficient Privacy Auditing of Machine Learning Models without Retraining

    Speaker:

    Link:

  11. Title:
    Forgettable Federated Linear Learning with Certified Data Removal

    Speaker:

    Link:

  12. Title:
    Protecting Individua Privacy against All Adversaries – Is It possible?

    Speaker:

    Link:

  13. Title:
    Conditional independence measures for fairer, more reliable models

    Speaker:

    Link:

  14. Title:
    A Generic Approach to Stabilized Model Distillation

    Speaker:

    Link:

  15. Title:
    De-Biasing the Bias: Methods for Improving Disparity Assessments with Noisy Group Measurements

    Speaker:

    Link: