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Bayesian Methods for Neural Networks


**Contacts**:
Ekaterina Lobacheva - lobacheva.tjulja@gmail.com
Ilia Yakubovsky - ilia.yakubovskiy@yandex.ru

Please, add tag [BayesBootcamp] to all the emails.

Materials:

  1. (russian) Ветров Д.П., Кропотов Д.А. Байесовские методы машинного обучения: часть 1, часть 2.
  2. (russian) Wiki page of the Bayesian metods course at CS MSU.
  3. Christopher M. Bishop. [Pattern Recognition and Machine Learning] (http://users.isr.ist.utl.pt/~wurmd/Livros/school/Bishop%20-%20Pattern%20Recognition%20And%20Machine%20Learning%20-%20Springer%20%202006.pdf).

Syllabus

Day 1.

  • Bayesian methods: introduction, bayesian reasoning. Seminar: how to work with probabilities in bayesian paradigm.
  • Analytical bayesian inference, conjugate distributions, exponential family. Seminar: inference in models with conjugate distributions.
  • Bayesian linaer regression.

Additional materials (russian): notes, problems 1, problems 2

Day 2.

  • Expectation–maximization (EM) algorithm. EM for Gaussian mixture.
  • PCA and Bayesian PCA.
  • Practice: ЕМ-algorithm for the investigation.

Additional materials (russian): notes

Day 3.

  • Variational inference. Seminar: examples of usage for different models.
  • How to use bayesian inference in real life and how to choose which method to use.
  • Latent Dirichlet allocation

Additional materials (russian): notes 1, notes 2, notes 3.

Day 4.

  • Stochastic variational inference.
  • VAE
  • IWAE – way to improve ELBO
  • Normalizing flows – way to improve posterior distribution
  • Practice: variational autoencoders.

Day 5.

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Syllabus of the course and lecture materials

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