Introduction to Computational Neuroscience
9.29J · Brain and Cognitive Sciences, Physics · Undergraduate · Spring 2004
Prof. Sebastian Seung
<p>This course gives a mathematical introduction to neural coding and dynamics. Topics include convolution, correlation, linear systems, game theory, signal detection theory, probability theory, information theory, and reinforcement learning. Applications to neural coding, focusing on the visual system are covered, as well as Hodgkin-Huxley and other related models of neural excitability, stochastic models of ion channels, cable theory, and models of synaptic transmission.</p> <p>Visit the Seun…
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Prof. Sebastian Seung. 9.29J Introduction to Computational Neuroscience. Spring 2004. Massachusetts Institute of Technology: MIT OpenCourseWare, https://ocw.mit.edu. License: CC BY-NC-SA 4.0.
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