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Functional Link Network
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Page 1: Functional Link Network. Support Vector Machines.

Functional Link Network

Page 2: Functional Link Network. Support Vector Machines.

Support Vector Machines

Page 3: Functional Link Network. Support Vector Machines.
Page 4: Functional Link Network. Support Vector Machines.

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Support Vector Machines

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Page 7: Functional Link Network. Support Vector Machines.

Support Vector Machines

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Page 8: Functional Link Network. Support Vector Machines.

Support Vector Machines

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Page 9: Functional Link Network. Support Vector Machines.

Support Vector Machines

Page 10: Functional Link Network. Support Vector Machines.

Support Vector Machines

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Page 11: Functional Link Network. Support Vector Machines.

Support Vector Machines

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Page 12: Functional Link Network. Support Vector Machines.

Support Vector Machines

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Page 13: Functional Link Network. Support Vector Machines.

Support Vector Machines

Page 14: Functional Link Network. Support Vector Machines.

Support Vector Machines

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Page 15: Functional Link Network. Support Vector Machines.

Two Spiral Problem

Page 16: Functional Link Network. Support Vector Machines.

SVM architecture

Page 17: Functional Link Network. Support Vector Machines.

Application: text classification

• Reuters “newswire” messages

• Bag-of-words representation

• Dimension reduction

• Training SVM

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Results

Break-even point = precision value at which precision and recall are nearly equal

Page 19: Functional Link Network. Support Vector Machines.

Results

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Application 2: face recognition

Page 21: Functional Link Network. Support Vector Machines.

False detections

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System architecture

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Results

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Results

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Skin detection and real-time recognition

Page 26: Functional Link Network. Support Vector Machines.

Neural Networks

Page 27: Functional Link Network. Support Vector Machines.

Ccortex is a massive spiking neuron network emulation and will mimic the human cortex, the outer layer of gray matter at the cerebral hemispheres, largely responsible for higher brain functions. The emulation covers up to 20 billion layered neurons and 2 trillion 8-bit connections.

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Spiking Neural Networks

• From neurones to neurons• Artificial Spiking Neural Networks

(ASNN)– Dynamic Feature Binding– Computing with spike-times

Page 29: Functional Link Network. Support Vector Machines.

Neural Networks

• Artificial Neural Networks– (neuro)biology -> Artificial Intelligence (AI)

– Model of how we think the brain processes information

• New data on how the brain works!– Artificial Spiking Neural Networks

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Real Neurons

• Real cortical neurons communicate with spikes or action potentials

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Real Neurons

• The artificial sigmoidal neuron models the rate at which spikes are generated

• artificial neuron computes function of weighted input:

x = f( )w x ij ijjx

w x ij i

Page 32: Functional Link Network. Support Vector Machines.

Artificial Neural Networks

• Artificial Neural Networks can:– approximate any function

• (Multi-Layer Perceptrons)

– act as associative memory• (Hopfield networks, Sparse Distributed Memory)

– learn temporal sequences• (Recurrent Neural Networks)

Page 33: Functional Link Network. Support Vector Machines.

ANN’s

• BUT....

for understanding the brain the neuron model is wrong

• individual spikes are important, not just rate

Page 34: Functional Link Network. Support Vector Machines.

Binding Problem

• When humans view a scene containing a red circle and a green square, some neurons – signal the presence of red,– signal the presence of green, – signal the circle shape,– Signal the square shape.

• The binding problem: – how does the brain represent the pairing of color and shape?

• Specifically, are the circles red or green?

Page 35: Functional Link Network. Support Vector Machines.

Binding

• Synchronizing spikes?

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New Data!

• neurons belonging to same percept tend to synchronize (Gray & Singer, Nature 1987)

• timing of (single) spikes can be remarkably reproducible

• Spikes are rare: average brain activity < 1Hz– “rates” are not energy efficient

Page 37: Functional Link Network. Support Vector Machines.

Computing with Spikes

• Computing with precisely timed spikes is more powerful than with “rates”.(VC dimension of spiking neuron models)[W. Maass and M. Schmitt., 1999]

• Artificial Spiking Neural Networks??[W. Maass Neural Networks, 10, 1997]

Page 38: Functional Link Network. Support Vector Machines.

Artificial Spiking Neuron

• The “state” (= membrane potential) is a weighted sum of impinging spikes– spike generated when potential crosses threshold, reset

potential

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Artificial Spiking Neuron

• Spike-Response Model:

where ε(t) is the kernel describing how a single spike changes the potential:

t e (1-t/ )

PS P:

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Artificial Spiking Neural Network

• Network of spiking neurons:

Page 41: Functional Link Network. Support Vector Machines.

Error-backpropagation in ASNN

• Encode “X-OR” in (relative) spike-times

Page 42: Functional Link Network. Support Vector Machines.

XOR in ASNN

• Change weights according to gradient descent using error-backpropagation (Bohte et al, Neurocomputing 2002)

• Also effective for unsupervised learning(Bohte etal, IEEE Trans Neural Net. 2002)

Page 43: Functional Link Network. Support Vector Machines.

Oil Application