Main Content
Courses
Lectures
Bayesian Statistics and Machine Learning in Neuroscience
Overview
This course consists of lectures and exercises about
- Foundations of Probability,
- Bayesian Reasoning and Networks,
- Stochastic Processes,
- Neural Networks and Deep Learning.
Literature suggestions for the beginner
On 'Why':
Larry Bretthorst and Edward Jaynes (2003): Probability Theory, the Logic of Science. Cambridge Univ. Press
Joseph Halpern (2003): Reasoning about Uncertainty. MIT Press.
On 'Howto':
Christopher Bishop (2006): Pattern Recognition and Machine Learning. Springer.
Carl Rasmussen and Christopher Willams (2005): Gaussian Processes
Even more in-depth 'Howto':
Daphne Koller and Nir Friedmann (2009): Probabilistic Graphical Models. MIT Press.
Kevin Murphy (2012): Machine Learning, a Probabilistic Perspective. MIT Press.
David Barber (2012): Bayesian Reasoning and Machine Learning. Cambridge Univ. Press.
Causality:
Judea Pearl (2009): Causality.
More Information
Regular cycle: winter semester
Eligible: students of Psychology, and Cognitive and Integrative Systems Neuroscience (M.Sc.)