CCN: Computational Cognitive Neuroscience
Welcome to Computational Cognitive Neuroscience
Course Contacts
Course Content
This course should appeal to students who are interested in models of computation in human and animal brains, as well as mental illness. It complements other courses in the cognitive sciences, offering a more biological perspective.
For whom is it not?
The topics discussed in the course have inspired many machine learning solutions to real-life problems, however, we shall hardly discuss those. It should also be noted that, although interest is growing, the course has limited direct practical applicability outside academic research.
Prerequisites
No prior biology/neuroscience/psychiatry knowledge is required. The course was built assuming some background in computer science or related quantitative field, in particular familiarity with coding. We use a small subset of not very advanced math and machine learning in the lectures. Keywords: linear differential equations, Bayesian inference models, model fitting and model comparison. Please make sure you have experience with these concepts before enrolling in the course.
Basics of Python is thus required. Prior experience with programming is required.
Learning Outcomes
On successful completion of this course, you should be able to:
1. describe current computational theories of the brain and mental illness
2. read, understand, and have a critical opinion on scientific articles related to computational cognitive neuroscience and computational psychiatry
3. write and analyse simple computational models related to brain function in Python or MATLAB
4. write scientific reports on topics related to computational cognitive neuroscience
Course Outline
- Overview of computational neuroscience basics (models of neurons and networks)
- Reinforcement learning models for computational neuroscience
- Bayesian models for computational neuroscience (The Bayesian Brain)
- Computational modelling of behavioural data
- Models of decision-making
- Application to individual differences (e.g., autism) and mental disorders (e.g.,schizophrenia, addiction, and depressionm anxiety): introduction to Computational Psychiatry