580.630
Theoretical Neuroscience (Spring 2008)
Time: M/W 8:30-9:45am
Location:
Course
Director:
Prof. Xiaoqin Wang (xiaoqin.wang AT
jhu.edu)
Instructors:
Prof. Xiaoqin
Wang (xiaoqin.wang AT jhu.edu)
Prof. Eric Young (eyoung
AT jhu.edu)
Prof. Kechen
Zhang (kzhang4 AT jhmi.edu)
Course
web site: http://webhost5.nts.jhu.edu/xwang/courses/580_630.html
Grading: Pass/Fail
Reference
books:
Theoretical Neuroscience by Peter Dayan and L. F.
Abbott (MIT Press, 2001)
Spikes: Exploring the neural
code by
Fred Rieke et al. (MIT Press, 1997)
Format
and requirement:
Lectures
by instructors. Students
are required to complete three projects
during the semester.
Subjects
and schedule [Reading assignment]:
1/28 Introduction (Prof. Wang)
The role of theoretical tools in systems
neuroscience
Methodological
considerations in spike recordings [Lewicki 1998] [Quiroga et al. 2004]
1/30 Poisson process as the model for spike trains: homogeneous and inhomogeneous Poisson processes [Johnson 1996]
2/4
Simulating point
process [Johnson
and Swami 1983]
2/6 No class (NIH
meeting)
2/11
Analyzing spike data [Softky and Koch 1993]
2/13
Fundamentals of signal
detection
theory: the Gaussian model, decision criteria
2/18 No class (ARO
conference)
2/20 No class (ARO
conference)
2/25
Receiver operating
characteristic
(ROC) analysis, maximum likelihood estimation (MLE)
2/27
Applications to neural data [Britten et al. 1992]
3/3
Feedforward
network: From perceptron to support vector machine
3/5
Recurrent network 1: Hopfield network and
variants
3/10
Recurrent network 2: Continuous attractor
models
3/12
Recurrent network 3: Oscillations and
synchrony
3/17 No class (Spring
break)
3/19 No class (Spring
break)
3/24 Project 1 due
3/24
Unsupervised learning and reinforcement
learning
3/26
Self-organization and map formation
3/31
Statistical theory of population coding
4/2
Theoretical issues of large-scale brain
organization
4/7
The concept of a receptive field,
examples
4/9
Nonlinear systems, basic Wiener
4/14
Reverse correlation: from deBoer to
the STRF
4/16 Project
2
due
4/16
Examples of receptive fields derived from
reverse correlation. Does it work?
4/21 Basic information
theory: The
Gaussian channel
4/23 Application to
neurons: S-R
mutual information, bias
4/28
Systems redone: maximally informative
dimensions, spike-based information
5/2 Project discussions (Prof. Wang)
5/12 Project 3 due