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8: Neural Networks II

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Fodor & Pylyshyn's critique of connectionism. Responses. Connectionism and folk psychology ... Come comed, camed. Eat eated. 8. Implications ... – PowerPoint PPT presentation

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Title: 8: Neural Networks II


1
8 Neural Networks II
  • Outline
  • Past tense acquisition
  • Rumelhart McClellands model
  • Criticisms
  • Plunkett Marchmans model
  • Fodor Pylyshyns critique of connectionism
  • Responses
  • Connectionism and folk psychology
  • Can connectionism account for human cognition?

2
How do we learn language?
  • Chomskyan view
  • Innate knowledge of possible rules of language
  • Children create hypotheses about how these rules
    apply to the language they are learning
  • We have mental representations of these rules
  • Alternate view
  • No explicit representation of rules, although
    performance can be described in terms of rules

3
Past-tense acquisition (Brown, 1973)
  • 1) specific forms learnt both regular and
    irregular
  • 2) overgeneralisation of irregular verbs
  • e.g. wented, goed, eated
  • 3) correct pronunciation of both regular and
    irregular verbs

Correct production
time
4
Rumelhart McClellands (1986) Model
5
Rumelhart McClellands (1986) Model
  • Architecture
  • Single layer pattern associator
  • Inputs present tense (460 units)
  • Outputs past tense (460 units)
  • Words represented as sets of Wickelfeatures
  • Extra networks at back front of pattern
    associator to encode/decode Wickelfeatures from
    phonological representation

6
Rumelhart McClellands (1986) Model
  • Word representation
  • Phonological form /kAm/ came
  • But, indistinguishable from /mAk/ or /Akm/
  • Wickelphones
  • Context sensitive kA, kAm, Am
  • Can be analysed along 4 dimensions
  • e.g. /A/ long, low, vowel, front
  • Wickelfeatures

7
Training Results
  • Training sets
  • 10 high frequency words (8 irregular)
  • 410 medium frequency words (76 irregular)
  • 86 low frequency words (14 irregular)
  • Trained on high frequency only then medium
    frequency added low frequency used later
  • Results
  • U-shaped curve
  • Overgeneralisation
  • Come ? comed, camed
  • Eat ? eated

8
Implications
  • Links between regular verb stems and past tense
    forms can be described using rules, but is
    governed by a mechanism which does not use
    explicit rules
  • Knowledge of past-formation is distributed across
    the network
  • Links between irregular verb stems and past tense
    forms are encoded in same set of weights
  • In a rule-based account, there would need to be a
    rule for producing regular verbs and a list of
    exceptions (irregulars)

9
Pinker Prince (1988)
  • The U-shaped curve is a result of the way in
    which the input was presented, not anything to do
    with the properties of the network
  • The middle of the curve coincides with the
    addition of the medium frequency verbs
  • Network is flooded by regular verbs forces
    network to generalise
  • In real language input, there is no such
    discontinuity

10
Pinker Prince (1988)
  • RM model does a poor job of generalizing to some
    novel verbs
  • mail ? membled
  • tour ? toureder
  • Model doesnt conceive of stemsuffix
  • Cannot encode the formula for creating a
    past-tense ending
  • Task decomposition
  • Past tense treated as autonomous
  • Wickelphones Wickelfeatures

11
Plunkett Marchmans (1991) Response
  • Model of past-tense acquisition using
    back-propagation network
  • 3 layer network, 20 units per layer
  • No discontinuity in input
  • Didnt use wickelfeatures
  • Parametric studies
  • 74 of tokens irregular regular not learned
  • 74 of tokens regular irregular not learned
  • 50/50 (about the same as parental input) network
    performed well
  • No global U-shaped curve
  • Micro U-shaped curves corresponds better to
    child data as global U-shaped curve is a myth.

12
Fodor Pylyshyns (1988) critique of
connectionism
  • Connectionism is inadequate as a representational
    system
  • Symbolic system necessary for modelling cognitive
    processes
  • Connectionist systems lack a combinatorial syntax
    and semantics
  • Productivity
  • Systematicity
  • Coherence
  • Connectionism just provides an implementation of
    symbolic processing

13
Response 1 Approximationist approach
  • Symbolic models are approximately correct
  • cf. Newtonian physics
  • Subsymbolic models required for intuitive
    processing
  • Language does not take place at a conscious level
  • Cognitive behaviour not rule-governed, can merely
    be rule-described

14
Response 2 Externalist approach
  • Symbols are human artifacts
  • Symbol manipulation is learned
  • Initially carried out on symbols in the external
    environment
  • We are confronted with external symbols (e.g.
    written language and mathematical notation)
  • We learn to manipulate them.
  • Internalisation of these symbols occurs

15
Connectionism Folk Psychology
  • Connectionism provides a conceptual foundation
    that might replace folk psychology.
  • Neural nets show that simple cognitive tasks can
    be performed without employing features that
    could correspond to beliefs, desires and plans.
  • Provides support for eliminativism

16
Can connectionism account for human cognition?
  • Learning driven by examples
  • Knowledge of rules is emergent
  • Multitude of of sub-symbolic representations
  • Complex interaction produces behaviour which is
    rule-like
  • Knowledge of rules remains implicit
  • Cannot analyse own activity
  • Cannot form symbolic representations of rules

17
Clark Karmiloff-Smith (1993)
  • To model human development adequately,
    connectionist systems must be able to
  • Treat own representations as objects for further
    manipulation
  • Do so independently of continual training input
  • Retain copies of original networks
  • Form new structured representations

18
Learning Outcomes Reading
  • Understand connectionist models of past-tense
    acquisition
  • Understand how rule-like behaviour can emerge
    from non-rule-based systems
  • Be aware of some of the criticisms of the
    connectionist approach and the responses to those
    criticisms
  • For next week, read
  • Embodied Cognitive Science Basic Concepts from
    Pfeifer, R. Scheier, C. (1999). Understanding
    intelligence. Cambridge, MA MIT Press.
  • Further Reading
  • See lecture webpage or .pdf handout
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