Title: The Physics of the Brain
1Learning, memory, development and their cellular
basis synaptic plasticity.
2Classical Conditioning
3Neuron cell body
Action potentials
Axon output
Synapse
Dendrite input
4Classical Conditioning Hebbs rule
Ear
A
salivation
tone
Nose
c
d
B
Tongue
When an axon in cell A is near enough to excite
cell B and repeatedly and persistently takes
part in firing it, some growth process or
metabolic change takes place in one or both
cells such that As efficacy in firing B is
increased
D. O. Hebb (1949)
5Neuron cell body
Action potentials
Axon output
Synapse
Dendrite input
6Various different protocols for inducing
bidirectional synaptic plasticity
- Pairing induced
- (postsynaptic voltage clamp)
- Spike time dependent plasticity
- (STDP)
7The generalized Hebb rule where di are the
inputs and c the output is assumed
linear Results in 2D
8Example of Hebb in 2D
9Mathematics of the generalized Hebb rule
The change in synaptic weight m is where d are
input vectors and c is the neural
response. Assume for simplicity a linear
neuron So we get
10Averaging over the input environment
using and In matrix form where
11Often use the substitution
If k1 is not zero, this has a fixed point,
however it is not stable.
12If k1 0 And the solution has the form What
are these elements?
13The Hebb rule is unstable how can it be
stabilized while preserving its properties? The
stabilized Hebb (Oja) rule.
This is has a fixed point at Where The only
stable fixed point is for ?max
14Therefore a stabilized Hebb (Oja neuron) carries
out Eigen-vector, or principal component analysis
(PCA).
15Homework 5 (due 4/19) 5a) Implement a simple
Hebb neuron with random 2D input, tilted at an
angle, ?30o with variances 1 and 3 and mean 0.
Show the synaptic weight evolution. (200 patterns
at least) 5b) Calculate the correlation matrix of
the input data. Find the eigen-values,
eigen-vectors of this matrix. Compare to 5a. 5c)
Repeat 5a for an Oja neuron, compare to 5b.
16Visual Pathway
Visual Cortex
Receptive fields are
- Binocular
- Orientation Selective
Area 17
LGN
Receptive fields are
- Monocular
- Radially Symmetric
Retina
17Right
Left
18Orientation Selectivity
Binocular Deprivation
Normal
Adult
Response (spikes/sec)
Response (spikes/sec)
Adult
angle
angle
Eye-opening
Eye-opening
19Monocular Deprivation
Normal
Left
Right
Right
Left
Response (spikes/sec)
angle
angle
20
30
of cells
15
10
1 2 3 4 5 6 7
1 2 3 4 5 6 7
Rittenhouse et. al.
group
group
20Aim get selective neurons using a Hebb/PCA
rule Simple exmple
21Show examples with plasticity package for q1 and
q4 Why?
22The eigen-value equation has the form Can be
rewritten in the equivalent form And a
possible solution can be written as the sum
23Inserting, and by orthogonality get So
for get three solutions and with
24Orientation selectivity from a natural
environment The Images
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26 Raw images (fig 5.8) Show how to do
this in plasticity.
27 Preprocessed images (fig 5.9) Show how
to do this in plasticity.
28Monocular Deprivation
Normal
Left
Right
Right
Left
Response (spikes/sec)
angle
angle
20
30
of cells
15
10
1 2 3 4 5 6 7
1 2 3 4 5 6 7
Rittenhouse et. al.
group
group
29Binocularity simple examples. Q is a 2-eye
correlation function. What is the solution of
the eigen-value equation
30In a higher dimensional case Qll, Qlr etc.
are now matrixes. And QlrQrl. The eigen-vectors
now have the form
31In a simpler case This implies QllQrr, that
is eyes are equivalent. And the cross eye
correlation is a scaled version of the one eye
correlation. If
then with
32Positive correlations (?0.2)
Hebb with lower saturation at 0
Negative correlations (?-0.2)
33Lets now assume that Q is as above for the
1D selectivity example.
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35With 2D space included
362 partially overlapping eyes using natural images
37Orientation selectivity and Ocular Dominance
PCA
Right
Left
No. of Cells
1
2
3
Bin
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