Learning and Natural Language - Lectures
doc. Mgr. Bc. Vít Nováček, PhD
Learning and Natural Language - Lectures
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Období
podzim 2024

EXAM TOPICS:

  • Natural language (pre)processing techniques (the "classical" NLP pipeline)

  • Classes of machine learning algorithms, examples of models representing the classes

  • Typical machine learning pipeline

  • Typical applications of machine learning - a selection of examples, detailed description of one approach

  • Bag of words representation of text - pros and cons

  • Distributional hypothesis - historical context, linguistic motivations and practical implementations

  • Distributional vs. formal semantics

  • Word embeddings - the basic principles, example of a specific technique, pros and cons

  • Latent semantic analysis - basic principles, pros and cons

  • Document classification and text clustering

  • Perceptron - motivation and basic principles

  • Deep learning - description of the approach, and how does it differ from other machine learning techniques

  • Gradient descent and back-propagation - motivation and basic principles

  • Feed-forward neural networks - basic principles, pros and cons

  • Convolutional neural networks - basic principles, pros and cons

  • Recurrent neural networks - basic principles, pros and cons

  • Vanishing/exploding gradients and how to deal with them - description of a selected approach

  • Encoder-decoder architecture - basic principles

  • LSTM architecture - motivation and basic principles

  • Attention mechanism - motivation and basic principles

  • Transformer architecture - motivation and basic principles

  • Basic principles of language models (both traditional and neural ones)

  • Training language models - typical approaches and architecture of the models

  • Evaluation of standard machine learning models - description of the process and an example of an evaluation metric

  • Evaluation of language models - description of the process and an example of an evaluation metric

  • Typical applications of language models - a selection of examples, detailed description of one approach

  • Sentiment analysis - the problem addressed, justification of its practical relevance, general description of typical approaches

  • Detailed overview of a selected lexicon-based approach to sentiment analysis

  • Detailed overview of a selected classical machine learning approach to sentiment analysis

  • Detailed overview of a selected deep learning approach to sentiment analysis

  • Comparison of lexicon-based, classical machine learning and deep learning approaches to sentiment analysis

  • Basic principles of knowledge representation

  • Ontologies vs. knowledge graphs - pros and cons of each approach to knowledge representation

  • The stack of typical tasks in ontology learning

  • Main challenges and open problems of ontology learning

  • Techniques used for term extraction, synonym discovery and concept formation

  • Techniques used for taxonomy extraction

  • Techniques used for relation, rule and axiom extraction

  • Overview of a selected deep learning approach to knowledge extraction

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Web
Učitel doporučuje studovat nyní – od 16. 9. 2024 do 22. 9. 2024.
2. Quick and dirty intro to ML
Učitel doporučuje studovat od 23. 9. 2024 do 29. 9. 2024.
3. Distributional semantics, LSA, word embeddings
Učitel doporučuje studovat od 30. 9. 2024 do 6. 10. 2024.
4. Deep neural networks for NLP
Učitel doporučuje studovat od 7. 10. 2024 do 13. 10. 2024.
5. Language models and their applications
Učitel doporučuje studovat od 14. 10. 2024 do 20. 10. 2024.
6. AutoML for NLP
Učitel doporučuje studovat od 21. 10. 2024 do 27. 10. 2024.
7. Poster and project Q/A session (voluntary)
Učitel doporučuje studovat od 28. 10. 2024 do 3. 11. 2024.
8. Poster session
Učitel doporučuje studovat od 4. 11. 2024 do 10. 11. 2024.
9. Application example: sentiment analysis
Učitel doporučuje studovat od 11. 11. 2024 do 17. 11. 2024.
10. Application example: knowledge extraction from text
Učitel doporučuje studovat od 18. 11. 2024 do 24. 11. 2024.
11. Guest lecture 1 (speaker and topic TBC)
Učitel doporučuje studovat od 25. 11. 2024 do 1. 12. 2024.
12. Guest lecture 2 (speaker and topic TBC)
Učitel doporučuje studovat od 2. 12. 2024 do 8. 12. 2024.
13. Project presentations
Učitel doporučuje studovat od 9. 12. 2024 do 15. 12. 2024.
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