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Title: Chapter Seven


1
Chapter Seven
  • The Network Approach Mind as a Web

2
Connectionism
  • The major field of the network approach.
  • Connectionists construct Artificial Neural
    Networks (ANNs), which are computer simulations
    of how groups of neurons might perform some task.

3
Information processing
  • ANNs utilize a processing strategy in which large
    numbers of computing units perform their
    calculations simultaneously. This is known as
    parallel distributed processing.
  • In contrast, traditional computers are serial
    processors, performing one computation at a time.

4
Serial and parallel processing architectures
5
Serial vs. Parallel Computing
  • No difference in computing power.
  • Parallel computing is simulated by general
    purpose computers.
  • Modern general purpose computers are not strictly
    serial.

6
Approaches
  • The traditional approach in cognition and AI to
    solving problems is to use an algorithm in which
    every processing step is planned. (Not really.)
    It relies on symbols and operators applied to
    symbols. This is the knowledge-based approach.
  • Connectionists instead let the ANN perform the
    computation on its own without any (with less)
    planning. They are concerned with the behavior of
    the network. This is the behavior-based approach.
    (Not really.)

7
Knowledge representation
  • Information in an ANN exists as a collection of
    nodes and the connections between them. This is a
    distributed representation.
  • Information in semantic networks, however, can be
    stored in a single node. This is a form of local
    representation.

8
Characteristics of ANNs
  • A node is a basic computing unit.
  • A link is the connection between one node and the
    next.
  • Weights specify the strength of connections.
  • A node fires if it receives activation above
    threshold.

9
Characteristics of ANNs
  • A basis function determines the amount of
    stimulation a node receives.
  • An activation function maps the strength of the
    inputs onto the nodes output.

A sigmoidal activation function
10
Early neural networks
  • Hebb (1949) describes two type of cell groupings.
  • A cell assembly is a small group of neurons that
    repeatedly stimulate themselves.
  • A phase sequence is a set of cell assemblies that
    activate each other.
  • Hebb Rule When one cell repeatedly activates
    another, the strength of the connection increases.

11
Early neural networks
  • Perceptrons were simple networks that could
    detect and recognize visual patterns.
  • Early perceptrons had only two layers, an input
    and an output layer.

12
Modern ANNs
  • More recent ANNs contain three layers, an input,
    hidden, and output layer.
  • Input units activate hidden units, which then
    activate the output units.

13
Backpropagation learning in ANNs
  • An ANN can learn to make a correct response to a
    particular stimulus input.
  • The initial response is compared to a desired
    response represented by a teacher.
  • The difference between the two, an error signal,
    is sent back to the network.
  • This changes the weights so that the actual
    response is now closer to the desired.

14
Criteria of different ANNs
  • Supervised networks have a teacher. Unsupervised
    networks do not.
  • Networks can be either single-layer or
    multilayer.
  • Information in a network can flow forward only, a
    feed-forward network, or it can flow back and
    forth between layers, a recurrent network.

15
Network typologies
  • Hopfield-Tank networks. Supervised, single-layer,
    and laterally connected. Good at recovering
    clean versions of noisy patterns.
  • Kohonen networks. An example of a two-layer,
    unsupervised network. Able to create topological
    maps of features present in the input.
  • Adaptive Resonance Networks (ART). An
    unsupervised multilayer recurrent network that
    classifies input patterns.

16
Evaluating connectionism
  • Advantages
  • Biological plausibility
  • Graceful degradation
  • Interference
  • Generalization
  • Disadvantages
  • No massive parallelism
  • Convergent dynamic
  • Stability-plasticity dilemma
  • Catastrophic interference

17
Semantic networks
  • Share some features in common with ANNs.
  • Individual nodes represent meaningful concepts.
  • Used to explain the organization and retrieval of
    information from LTM.

18
Characteristics of semantic networks
  • Spreading activation. Activity spreads outward
    from nodes along links and activates other nodes.
  • Retrieval cues. Nodes associated with others can
    activate them indirectly.
  • Priming. Residual activation can facilitate
    responding.

19
A hierarchical semantic network
  • Sentence verification tasks suggest a
    hierarchical organization of concepts in semantic
    memory (Collins and Quillian, 1969).
  • Meaning for concepts such as animals may be
    arranged into superordinate, ordinate, and
    subordinate categories.
  • Vertical distance in the network corresponds to
    category membership.
  • Horizontal distance corresponds to property
    information.

20
Example ofA Hierarchical Semantic Network
From S. C. Shapiro, Knowledge Representation. In
L. Nadel, Ed., Encyclopedia of Cognitive Science,
Macmillan, 2003.
21
Propositional networks
  • Can represent propositional or sentence-like
    information. Example The man threw the ball.
  • Allow for more complex relationships between
    concepts such as agents, objects, and relations.
  • Can also code for episodic knowledge.

22
Example of A Propositional Semantic Network
From S. C. Shapiro, Knowledge Representation. In
L. Nadel, Ed., Encyclopedia of Cognitive Science,
Macmillan, 2003.
23
Episodic Memoryin Cassiea SNePS-Based Agent
  • NOW contains SNePS term representing current
    time.
  • NOW moves when Cassie acts or perceives a change
    of state.

24
Representation of Time
before
after
before
after
!
!
!
event
?????????????
time
agent
act
B1
action
object
B6
I
lex
NOW
25
Movement of Time
t1
26
Performing a Punctual Act
t1
27
Performing a Durative Act
t1
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