Institute of Computer Science
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  2. 2018/19 fall
  3. Computational Neuroscience Seminar (MTAT.03.292)
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Computational Neuroscience Seminar 2018/19 fall

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Timetable

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

12.09 Week 1: Relational inductive biases, deep learning, and graph networks
presented by Sebastian Värv
slides | feedback |test

19.09 Week 2: A neural algorithm for a fundamental computing problem
presented by Rain Vagel
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26.09 Week 3: Encoding Spatial Relations from Natural Language
presented by Mari Liis Velner
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03.10 Week 4: Measuring abstract reasoning in neural networks
presented by Martin Liivak
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10.10 Week 5: Deep Predictive Coding Network for Object Recognition
presented by Markus Loide
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17.10 Week 6: Neural Computations Mediating One-Shot Learning in the Human Brain
presented by Elizaveta Korotkova
slides | feedback | test

24.10 Week 7: Neuroscience-Inspired Artificial Intelligence
presented by Kristjan Veskimäe
slides | feedback | test

31.10 Week 8: Neuronal Activities in the Mouse Visual Cortex Predict Patterns of Sensory Stimuli
presented by Tarun Khajuria
slides | feedback | test

07.11 Week 9: A Comprehensive Study of Activity Recognition Using Accelerometers
presented by Hristijan Sardjoski
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14.11 Week 10: Focused learning promotes continual task performance in humans
presented by Simona Micevska
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21.11 Week 11: Relational Forward Models for Multi-Agent Learning
presented by Oriol Corcoll
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28.11 Week 12: CORnet: Modeling the Neural Mechanisms of Core Object Recognition
presented by Viktor Mysko
slides | feedback | test

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