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Cooperation of Complementary Learning Systems in Memory

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Title: PowerPoint Presentation Author: Jay McClelland Last modified by: Jay McClelland Created Date: 3/12/2000 8:26:23 PM Document presentation format – PowerPoint PPT presentation

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Title: Cooperation of Complementary Learning Systems in Memory


1
Cooperation of Complementary Learning Systems in
Memory
  • James L. McClelland
  • Stanford University

2
A Playwrights Take on Memory
  • What interests me a great deal is the
    mistiness of the past Harold Pinter,
    Conversation prior to the opening of Old Times,
    1971

3
What is a Memory?
  • The trace left by an experience.
  • A representation of the experience brought back
    to mind later.
  • In some theories, these things are one and the
    same
  • Not so in a connectionist approach to memory!

4
In a connectionist approach
  • An experience produces a pattern of activation
    over an ensemble of processing units.
  • The memory trace is a pattern of adjustments to
    connections among simple processing units.
  • The memory as recalled is a pattern of activation
    constructed with the help of the affected
    connections.
  • Connections are affected by many experiences, so
    recall is always subject to influence from
    traces of other experiences.
  • Remembering is thus always a process of
    reconstruction.

5
Outline
  • What is a memory?
  • The essence of the connectionist/PDP perspective
  • Contrasting systems-level approaches to the
    neural basis of memory
  • The Complementary Learning Systems framework
  • McClelland, McNaughton, and OReilly, 1995
  • How the complementary learning systems work
    together to create episodic and semantic
    memory.

6
Outline
  • What is a memory?
  • The essence of the connectionist/PDP perspective
  • Contrasting systems-level approaches to the
    neural basis of memory
  • The complementary learning systems approach
  • McClelland, McNaughton, and OReilly, 1995
  • How the complementary learning systems work
    together to create episodic and semantic
    memory.

7
Multiple Memory Systems
  • Seeks dissociations of different forms of
    learning and memory.
  • Explicit vs. implicit memory
  • Declarative vs. procedural memory
  • Semantic vs. episodic memory
  • Familiarity vs. recollection
  • Although more than one system can contribute to
    performance in a given task, the contributions
    are simply alternative paths to correct
    performance.
  • E.g., in a recognition memory task
  • One can respond either by familiarity or
    recollection
  • p(old) p(recall) (1-p(recall))
    p(familiar)

8
An Alternative Approach
  • Complementary and Cooperating Brain Systems
  • Memory task performance depends on multiple
    contributing brain systems.
  • Contributions of each system to overall task
    performance depend on their neuro-mechanistic
    properties.
  • Systems work together so that overall performance
    may be better than the sum of the independent
    contributions of the parts.

9
The Complementary Learning Systems
Theory(McClelland, McNaughton OReilly, 1995)
  • Neuropsychological motivation
  • The basic theory
  • Neurophysiology consistent with the account
  • Why there should be complementary systems

10
Bi-lateral destruction of hippocampus and related
areas produces
- Profound deficit in forming new arbitrary
associations and new episodic memories. -
Preserved acquisition of skills and item-specific
priming. - Loss of recently learned material w/
preservation of prior knowledge, acquired skills,
and remote memory.
11
Control groups
Lesioned groups
Time from experience to lesion in days
12
The Neuro-Mechanistic Theory Processing and
Learning in Neocortex
  • An input and a response to it result in
    activation distributed across many areas in the
    neocortex.
  • Small connection weight changes occur as a
    result, producing
  • Item-specific effects
  • Gradual skill acquisition
  • These small changes are not sufficient to support
    rapid acquisition of arbitrary new associations.

13
Complementary Learning System in the Hippocampus
  • Bi-directional connections produce a reduced
    description of the cortical pattern in the
    hippocampus.
  • Large connection weight changes bind bits of
    reduced description together
  • Cued recall depends on pattern completion within
    the hippocampal network
  • Consolidation occurs through repeated
    reactivation, leading to cumulation of small
    changes in cortex.

14
Supporting Neurophysiological Evidence
  • The necessary pathways exist.
  • Anatomy and physiology of the hippocampus support
    its role in fast learning.
  • Reactivation of hippocampal representations
    during sleep.

15
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16
Different Learning and Coding Characteristics of
Hippocampus and Neocortex
  • Hippocampus learns quickly to allow one-trial
    learning of particulars of individual items and
    events.
  • Cortex learns slowly to allow sensitivity to
    overall statistical structure of experience.
  • Hippocampus uses sparse conjunctive
    representations to maintain the distinctness of
    specific items and events.
  • Cortex uses representations that start out highly
    overlapping and differentiate gradually to allow
  • Generalization where warranted
  • Differentiation where necessary

17
Examples of neurons found in entorhinal cortex
and hippocampal area CA3, consistent with the
idea that the hippocampus but not cortex uses
sparse conjunctive coding
Recording was made while animal traversed an
eight-arm radial maze.
18
Why Are There Complementary Learning Systems?
  • Discovery of structure requires gradual
    interleaved learning with dense (overlapping)
    patterns of activation. (Many aspects of
    semantic cognition and conceptual development are
    explained by this approach).
  • Rapid learning of new information in such systems
    leads to catastrophic interference.
  • The hippocampus (working with the cortex) can
    solve this problem.

19
Keil, 1979
20
The Model of Rumelhart (1990)
21
Differentiation in Development
22
Catastrophic Interference
  • First observed by McClosky and Cohen (1989) when
    they tried to teach first one, then another list
    to a neural network.
  • All items on the first list were forgotten before
    even one item from the second list was learned.
  • Catastrophic interference also occurs if one
    tries to teach the trained Rumelhart network some
    partially inconsistent new information.

23
How can we solve the problem?
  • Hippocampus provides a separate system that can
    learn the new information rapidly.
  • Once in the hippocampus, the information can be
    reinstated, allowing cortical learning.
  • If these hippocampal reinstatements are
    interleaved with ongoing exposure to other items,
    the new information will be integrated into the
    cortical system without interfering with what is
    already known.

24
How can we solve the problem?
  • Hippocampus provides a separate system that can
    learn the new information rapidly.
  • Once in the hippocampus, the information can be
    reinstated, allowing cortical learning.
  • If these hippocampal reinstatements are
    interleaved with ongoing exposure to other items,
    the new information will be integrated into the
    cortical system without interfering with what is
    already known.

25
How can we solve the problem?
  • Hippocampus provides a separate system that can
    learn the new information rapidly.
  • Once in the hippocampus, the information can be
    reinstated, allowing cortical learning.
  • If these hippocampal reinstatements are
    interleaved with ongoing exposure to other items,
    the new information will be integrated into the
    cortical system without interfering with what is
    already known.

26
Overview
  • What is a memory?
  • The essence of the connectionist/PDP perspective
  • Contrasting systems-level approaches to the
    neural basis of memory
  • The complementary learning systems approach
  • McClelland, McNaughton, and OReilly, 1995
  • How the complementary learning systems work
    together to create episodic and semantic
    memory.

27
Kwok McClelland Model ofSemantic and Episodic
Memory
  • A slow learning cortical system and a
    fast-learning hippocampal system.
  • Cortex contains units representing both content
    and context of an experience.
  • Semantic memory is gradually built up through
    repeated presentations of the same content in
    different contexts.
  • Memory for a specific episode depends on
    hippocampus and the relevant cortical areas,
    including context.
  • Episodic memories benefit from relevant semantic
    learning.
  • Virtually all memories are partly semantic and
    partly episodic.

Hippocampus
Relation
Cue
Context
Target
Neo-Cortex
28
Effect of Prior Association on Paired-Associate
Learning in Control and Amnesic Populations
Base rates
29
Kwok McClelland Simulation Cortical
Pre-Training
  • Cortical network is pre-trained using CHL with 4
    cue-relation-target triples for each of 20
    different cues.
  • Dog chews bone
  • Dog chases cat
  • Context varies randomly throughout cortical
    pretraining.
  • Words and context are patterns of activation over
    units in the appropriate pool.
  • Training frequency was varied to create strong
    and weak associates for each cue.

Hippocampus
Relation
Cue
Context
Target
Neo-Cortex
30
Kwok McClelland Simulation Experiment
  • Study phase is simulated by presenting a set of
    cue-target pairs in a fixed context.
  • Cortex fills in relation as mediator.
  • Hippocampal network assigns sparse conjunctive
    representation to the combined cue and context.
  • Hebbian learning is used to associate this
    representation with the corresponding target
    pattern.
  • At test, context and cue are presented, cortex
    and hippocampus collaborate to fill in target.
  • Amnesia is simulated by removing some (or all) of
    the hippocampal units.

31
Simulation Results From KM Model
32
Summary
  • Memory traces are in your connections memories
    are constructed using these traces (and those of
    other experiences) to constrain the construction
    process.
  • Memory task performance involves cooperation
    among brain regions
  • Cortical regions that gradually learn to
    represent content and context
  • Medial temporal regions that can learn
    conjunctive associations of cortical patterns
    rapidly
  • There are no separate systems dedicated to
    different kinds of memory. These functions
    depend on cooperating brain systems.
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