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Všechny předměty |
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Vysvětlivky
Návod
Webová stránka:
https://cw.fel.cvut.cz/wiki/courses/xep33sml/start
Anotace:
This advanced machine learning course covers learning and parameter estimation for structured models like Markov Random Fields, Belief Networks and (stochastic) Deep Neural Networks.
Cíle studia:
The course aims to communicate knowledge on theory and algorithms for the two currently most successful branches of structured model learning - statistical learning and structured output learning.
Osnovy přednášek:
(1) | | Markov Random Fields & Gibbs Random Fields |
(2) | | Belief Networks & Stochastic Neural Networks |
(3) | | Learning of structured output classifiers by Perceptron |
(4) | | Structured Output Support Vector Machines |
(5) | | Learning max-sum classifiers by SO-SVM |
(6) | | Optimization methods for SO-SVM |
(7) | | Maximum Likelihood learning for MRFs |
(8) | | Variational Autoencoders |
(9) | | Variational Bayesian inference for DNNs |
(10) | | Generative adversarial networks |
Osnovy cvičení:
The seminars will be dedicated to discussions and deepening the knowledge acquired at the lectures.
Literatura:
1. | | B. Taskar, C. Guestrin, and D. Koller. Maximum-margin markov networks. In Advances in Neural Information Processing Systems. MIT Press, Cambridge, MA, 2004. |
2. | | I. Tsochantaridis, T. Joachims, T. Hofmann, and Y. Altun. Large margin methods for structured and interdependent output variables. Journal of Machine Learning Research, 6:1453-1484, Sep. 2005. |
3. | | V. Franc and B. Savchynskyy. Discriminative learning of max-sum classifiers. Journal of Machine LearningResearch, 9(1):67-104, January 2008. ISSN 1532-4435. |
Processing: From Systems to Brains, chapter A Variational Principle for Graphical Models. MIT Press, 2007.
4. | | M.J. Wainwright and M.I. Jordan. Graphical Models, Exponential Families, and Variational Inference. Foundations and Trends in Machine Learning, 1(1-2):1-305, 2008. |
Požadavky:
- Solid knowledge of of statistical machine learning (cf. BE4M33SSU)
- Basic knowledge of Graphical Models (cf. XEP33GMM)
Poznámka:
Předmět je zahrnut do těchto studijních plánů:
Stránka vytvořena 20.5.2024 17:50:32, semestry: Z,L/2023-4, Z/2024-5, připomínky k informační náplni zasílejte správci studijních plánů |
Návrh a realizace: I. Halaška (K336), J. Novák (K336) |