Riadok 73: Riadok 73:
 
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|06.11.
 
|06.11.
|Statistical learning, probabilistic models.
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|Statistical learning, probabilistic models. [http://dai.fmph.uniba.sk/courses/ICI/References/ci-prob.4x.pdf slides]
 
|R&N (2010), ch.13,20.1-2; Marsland (2009), ch.8.1-2
 
|R&N (2010), ch.13,20.1-2; Marsland (2009), ch.8.1-2
 
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Verzia zo dňa a času 17:01, 6. november 2017

Introduction to Computational Intelligence 2-IKV-115

The course objectives are to make the students familiar with basic principles of various computational methods of data processing that can commonly be called computational intelligence (CI). This includes mainly bottom-up approaches to solutions of (hard) problems based on various heuristics (soft computing), rather than exact approaches of traditional artificial intelligence based on logic (hard computing). Examples of CI are nature-inspired methods (artificial neural networks, evolutionary algorithms, fuzzy systems), as well as probabilistic methods and reinforcement learning. After the course the students will be able to conceptually understand the important terms and algorithms of CI, and choose appropriate method(s) for a given task. The theoretical introduction is combined with practical examples.


Course schedule

Type Day Time Room Lecturer
Lecture Monday 9:00 I-9 Igor Farkaš
Practical demonstrations Monday 10:30 I-9 Tomáš Kuzma


Syllabus

Date Topic References
25.09. What is computational intelligence, basic concepts, relation to artificial intelligence. slides Craenen & Eiben (2003); wikipedia; R&N (2010), chap.1
02.10. Taxonomy of artificial agents, nature of environments. slides R&N (2010), chap.2
09.10. Inductive learning via observations, decision trees. Model selection. slides R&N (2010), ch.18.1-3,18.6; Marsland (2009), ch.6.1-2, visualization, interactive demo
16.10. Supervised learning in feedforward neural networks (perceptrons), pattern classification, function approximation. slides R&N (2010), ch.18.2; Marsland (2009), ch.2-3, Engelbrecht (2007), ch.2-3
23.10. Unsupervised (self-organizing) neural networks: feature extraction, data visualization. slides Marsland (2009), ch.9-10, Engelbrecht (2007), ch.4
27.10. mid-term test (special date!) your mind :-)
06.11. Statistical learning, probabilistic models. slides R&N (2010), ch.13,20.1-2; Marsland (2009), ch.8.1-2
13.11. Reinforcement learning I: basic principles and learning methods (TD-learning). Prediction problem. R&N (2010), ch.21.1-2.
20.11. Reinforcement learning II (Q, SARSA), actor-critic, control problem, RL for continuous domains. R&N (2010), ch.21.3-5.
27.11. Evolutionary computation: basic concepts, genetic algorithms. Engelbrecht (2007), ch.8
04.12. Fuzzy systems, fuzzy logic and reasoning. Engelbrecht (2007), ch.20-21, Scholarpedia: Zadeh (2007)

References

Course grading

  • Active participation during the semester (max. 14 points).
  • Written mid-term test (max. 12 points).
  • Final written-oral exam (max. 24 points, 3 questions).
  • Overall grading: A (50-46), B (45-41), C (40-36), D (35-31), E (30-26), Fx (25-0).