Institute of Computer Science
  1. Courses
  2. 2019/20 fall
  3. Computational Neuroscience Seminar (MTAT.03.292)
ET
Log in

Computational Neuroscience Seminar 2019/20 fall

  • Main
  • Process
  • Timetable
  • Papers
  • Tips

Timetable

You can book when to present from this sheet. You can book a time even if you didn't select or found a paper yet. The earlier you book the better you can manage your schedule.

05.09 Week 0: Kick-off seminar
Introduction, organization of the seminar, questions.
presented by Oriol Corcoll
slides

12.09 Week 1: Two papers
A Framework for Intelligence and Cortical Function Based on Grid Cells in the Neocortex.

presented by Sergei Tsimbalist
feedback |test

A Critique of Pure Learning: What Artificial Neural Networks can Learn from Animal Brains
presented by Taavi Luik
feedback | test

19.09 Week 2: Two papers
The generative adversarial brain.

presented by Tarun Khajuria
feedback|test

What does it mean to understand a neural network?
presented by Youssef Sherif Mansour
feedback| test

26.09 Week 3: What Is a Cognitive Map? Organizing Knowledge for Flexible Behavior
presented by Laura Leman
feedback| test

03.10 Week 4: Two papers
Prioritized memory access explains planning and hippocampal replay.

presented by Hannes Liik
feedback|test

Open-ended Learning in Symmetric Zero-sum Games.
presented by Viacheslav Komisarenko
feedback| test

10.10 Week 5: Training Neural Networks with Local Error Signals
presented by Kyrylo Medianovskyi
feedback|test

17.10 Week 6: Prefrontal Cortex as a Meta-Reinforcement Learning System
presented by Laura Ruusmann
feedback|test

31.10 Week 8: Human Replay Spontaneously Reorganizes Experience
presented by Alessandro Stranieri
feedback| test

07.11 Week 9: Dense Associative Memory is Robust to Adversarial Inputs.
presented by Andreas Baum
feedback| test

14.11 Week 10: Deep Image Prior.
presented by Abdul Wahab
feedback| test

21.11 Week 11: Policy Distillation.
presented by Dmytro Kolesnykov
feedback| test

28.11 Week 12: Semantic Folding Theory And its Application in Semantic Fingerprinting.
presented by Mariia Godgildieva
feedback| test

5.12 Week 13: Grandmaster level in StarCraft II using multi-agent reinforcement learning.
presented by Roman Ring
feedback| test| video

12.12 Week 14: Learning to Decompose and Disentangle Representations for Video Prediction.
presented by Adil Yatkin
feedback| test

19.12 Week 15: two papers
Theories of Error Back-Propagation in the Brain.
presented by Enes Özipek
feedback| test

Q-learning.
presented by Joonas Kriisk
feedback| test

  • Institute of Computer Science
  • Faculty of Science and Technology
  • University of Tartu
In case of technical problems or questions write to:

Contact the course organizers with the organizational and course content questions.
The proprietary copyrights of educational materials belong to the University of Tartu. The use of educational materials is permitted for the purposes and under the conditions provided for in the copyright law for the free use of a work. When using educational materials, the user is obligated to give credit to the author of the educational materials.
The use of educational materials for other purposes is allowed only with the prior written consent of the University of Tartu.
Terms of use for the Courses environment