Математические методы прогнозирования (практика, В.В. Стрижов)/Группа 574, осень 2019
Материал из MachineLearning.
(Различия между версиями)
Строка 12: | Строка 12: | ||
** Variational autoencoder | ** Variational autoencoder | ||
** ELBO | ** ELBO | ||
- | * Seminar | + | * Seminar 2 (Isachenko) |
** Analytic methods of approximation | ** Analytic methods of approximation | ||
** Statistic sum approximation | ** Statistic sum approximation | ||
** Generative versus discriminative | ** Generative versus discriminative | ||
- | * Seminar | + | * Seminar 3 (Isachenko) |
** Inference methods of approximation | ** Inference methods of approximation | ||
** Zoo of variational autoencoders and practical examples | ** Zoo of variational autoencoders and practical examples | ||
- | * Seminar | + | * Seminar 4 (Isachenko) |
** Generative adversarial networks | ** Generative adversarial networks | ||
- | * Seminar | + | * Seminar 5 (Bakhteev) |
** Methods of model selection | ** Methods of model selection | ||
** Generalization theorem | ** Generalization theorem | ||
- | * Seminar | + | * Seminar 6 (Bakhteev) |
** Complexity theorems | ** Complexity theorems | ||
- | * Seminar | + | * Seminar 7 (Grabovoy?) |
** Mixture of experts | ** Mixture of experts | ||
** Priors on the mixture | ** Priors on the mixture | ||
** Privileged learning and distilling | ** Privileged learning and distilling | ||
- | * Seminar | + | * Seminar 8 (Aduenko?) |
** Theorem of number of experts | ** Theorem of number of experts | ||
* Seminar 9 (Vladimirova?) | * Seminar 9 (Vladimirova?) |
Версия 15:05, 28 августа 2019
Short link [ ]
This series of seminars continues the course Bayesian model selection and investigates the theoretical aspects of model selection in various application problems.
- Seminar 1 (Isachenko)
- Plate notation and Bayesian inference in examples
- (reminder Coherent Bayesian Inference)
- Variational inference
- Variational autoencoder
- ELBO
- Seminar 2 (Isachenko)
- Analytic methods of approximation
- Statistic sum approximation
- Generative versus discriminative
- Seminar 3 (Isachenko)
- Inference methods of approximation
- Zoo of variational autoencoders and practical examples
- Seminar 4 (Isachenko)
- Generative adversarial networks
- Seminar 5 (Bakhteev)
- Methods of model selection
- Generalization theorem
- Seminar 6 (Bakhteev)
- Complexity theorems
- Seminar 7 (Grabovoy?)
- Mixture of experts
- Priors on the mixture
- Privileged learning and distilling
- Seminar 8 (Aduenko?)
- Theorem of number of experts
- Seminar 9 (Vladimirova?)
- Prior propagation for deep learning networks
- Seminar 10
- Directional Bayesian statistics
- Seminar 11
- Bayesian structure learning
- Seminar 12
- Probabilistic metric space construction
- Seminar 13
- Informative prior
- Seminar 14
- Bayesian programming
- Informative prior with applications