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Biological Based Networks

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Presentation on theme: "Biological Based Networks"— Presentation transcript:

1 Biological Based Networks

2 Why? Modeling of brain function
Model of very distributed parallel systems Existence proof for AI

3 Human Brain Neuron Speed - 10-3 seconds per operation
Brain weights about 3 pounds and at rest consumes 20% of the bodies oxygen. Estimates place neuron count at 1012 to 1014 Connectivity can be 10,000

4 What is the capacity of the brain?
Estimate the MIPS of a brain Estimate the MIPS needed by a computer to simulate the brain

5 Structure The cortex is estimated to be 6 layers
The brain does recognition type computations is milliseconds The brain clearly uses some specialized structures.

6 Alan Turing’s Idea X1 X2 1

7 Turing (Cont) B type link

8 B type link

9 Biowall

10 Structure Cortex is 6 layers A mosaic of hexagons
Top three are internal Middle in input Bottom two area output A mosaic of hexagons Lots of feedback Can excite surrounding hexs

11 Language Language develops from a proto language
Full language is structured into clauses and phrases Brains don’t do syntax! Parsing is by thematic roles 7 plus or minus 2

12 Igor Aleksander “Impossible Minds, My neurons, My consciousness”
“Seeing is believing: Depictive Neuromodeling of Visual Awareness”

13 Igor Aleksander WISARD and MAGNUS Visual input by arrays of sensors
Neural systems viewed as having a state transition form Iconic States Iconic states is the brain state upon perceiving an object

14 Input Z drives learning
Atrophies in time

15 Build a simple creature

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20 Magnus

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22 Vision Mechanisms Superior Colliculus – eye movement has direct input from the retina Vision path goes to V1, V2, V3 Extrastriate Cortex is selected areas of Cortex Pathway X is a hypothesis for this work

23 Neuro-Physical Model Extrastriate Areas Movable retinal projection
Superior Colliculus Main Visual Pathway Movement Primary Areas (V1, V2, …) Extrastriate Areas Auditory Triggers Gaze Locking j Pathway X Non-ocular Motor Activity

24 Hypothesis Feedback loop in the preceding slide is a state machine with learning memory Recall of detail and shape is related to gaze locking signals

25 Experimental System 24 neural areas 30,000 neurons

26 Experimental System

27 Consciousness What is it? Descartes theater of them mind
An answer to the wrong question?

28 Randall Beer “Intelligence as Adaptive Behavior” A simple creature:

29 Leg Controller P = pacemaker LC – command (shared)

30 Pacemaker coupling

31 Studies Produced the same gaits as real insects
Speed control by LC also produced realistic gaits Lesion studies show survivability

32 M Arbib A two level methodology Neurons at the bottom layer
Schema – Functional Entities Example Frogs: Snap a small creatures Run from larger ones Behaviors found to happen in different areas

33 Naïve Schema Eye Small Obj Large Obj + + Jump Snap Movement

34 Lesioning Studies Eye All Obj Large Obj + + - Jump Snap Movement

35 William H. Calvin University of Washington in Seattle
‘The Cerebral Code” “Lingua Ex Machina”

36 Brain Operation as Darwinian
Requires a complex pattern Pattern must be copied Variant patterns by chance Pattern and variant compete Competition based on multi faceted environment Most successful patterns survive

37 Jeff Hawkens “On Intelligence”

38 Criterion Inclusion of time in the brain Feedback
Physical Architecture must be part of the theory

39 Mountcastle Proposal The algorithm of the cortex is independent of an particular sense or function The brain uses the same mechanism for all!

40 State Machines The brain used state machine to sequence patterns of firing Short term memory Visual systems

41 Summary The brain is the prototype for intelligence
Brain structure and brain function are being studied Can a symbol system compete with the brain? How does symbolic behavior arise from the neural level of the brain?


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