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Integrating and Controlling Cognition with a Focus of Attention

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Generalized mental imagery: specialists can represent past, future, hypothetical, ... Neural networks for object recognition. Rules for physical dynamics. ... – PowerPoint PPT presentation

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Title: Integrating and Controlling Cognition with a Focus of Attention


1
Integrating and Controlling Cognition with a
Focus of Attention
  • Nick Cassimatis

2
Reasoning, control and integration
  • Domain-general or statistical strategies cannot
    explain all quick adaptation.
  • E.g.
  • McDonalds arches in Saratoga are pink ? look
    for big pink objects.
  • Probably not innate need no trial and error.
  • 100 200 shows hints of planning.
  • Hypothesis
  • Reasoning and planning strategies important for
    control and integration.

3
Integration problem
  • Problem How does higher-level cognition
    integrate with lower-level cognition.
  • Dont these involve memory, mental imagery,
    attention, too?
  • What are mental models?
  • Bayes Nets vs. everything else?
  • Not clear how search, BNs, rules, neural
    networks, etc. can be integrated into one system.

4
Main ideas
  • There is a cognitive focus of attention
  • Not tied to a single sensory modality.
  • Integrates modules encapsulating lower-level
    cognitive processes.
  • Mechanisms for controlling visual attention ARE
    higher-level reasoning.
  • This enables more integrated cognitive models.
  • Polyscheme cognitive architecture embodies these
    ideas.

5
Desired input
  • Up to now, just happy to have integration.
  • Now would like to more closely integrate these
    ideas with what is known empirically.
  • Empirical evidence for non-perceptual focus of
    attention.
  • Evidence either way of visual and cognitive
    attention being the same or different mechanisms.
  • Additional attention control mechanisms that are
    relevant.

6
Mind has specialized modules
  • Specialized modules, called specialists, using
    different mechanisms.
  • Spatial memory grids.
  • Physical motion prediction rules.
  • Object recognition neural networks.
  • Etc.
  • Agnostic on perceptual or motor basis.
  • Generalized mental imagery specialists can
    represent past, future, hypothetical, etc. worlds.

7
Cognitive focus of attention
  • Generalize evidence for integrative visual focus
    of attention (e.g., Stroop, dual-task and visual
    search)
  • Cognitive focus of attention.
  • All specialists focus on the same things at the
    same time and make inferences about it.
  • Evidence these extend to higher-level cognition
  • Semantic interference Semantic/emotional, Stoop
    effects.
  • ?

8
How is cognitive attention controlled
  • Suggestions from visual attention
  • Habituation
  • Dont focus on something for too long.
  • Negative priming
  • Suppress distractors.
  • Probability
  • Focus on most likely outcomes.
  • Change
  • Focus on changing aspects of scene.

9
Main point
  • These mechanisms applied to cognitive focus of
    attention with imagery implement much human
    reasoning.

10
Backtracking Search
  • Choose A or B?
  • Focus on world where B is taken because of
    probability.
  • Inhibit A because of negative priming.
  • Stop focus on B because of habituation.
  • Focus on world where A is taken.
  • Focus on world where A and then C is taken
    because of probability.
  • Focus on world where A, C and then GOAL is taken
    because of probability.

11
Backtracking Search
  • Order of foci same as that in backtracking
    search.
  • Strength and duration of negative priming
    determines whether depth-first or breadth-first
    search.

12
Other algorithms
  • Stochastic simulation (for Bayesian inference)
    implemented by focusing on more probable outcome.
  • When A is more likely than not-A, focus on the
    world where A is true more often to not-A in
    proportion to how much more likely it is.
  • P(A) of world where A is true / of worlds
    where A is false
  • Truth-maintenance by focusing on change
  • When your belief about A changes, focus on all
    the evens that involved A.

13
Recognizing problem 100200
  • Lookahead (in imagery) with brute force strategy
    because of frequency.
  • Habituation tires of that.
  • Only addition
  • Imagery.

14
Attention control is reasoning
  • Attention control mechanisms guiding a cognitive
    focus of attention implement reasoning
    algorithms.
  • Execution of a reasoning strategy is a set of
    attentional fixations
  • F1, F2, , FN
  • No need to posit a reasoning module, at least for
    a lot of reasoning.

15
Explanation of integration
  • High-level and low-level cognition
  • Reasoning strategies executed as sequence of
    fixations.
  • Each fixation involves all of the lower-level
    specialists.
  • High-level reasoning strategies with each other
  • Reasoning strategies executed as sequence of
    fixations.
  • Interleaving these is very easy.

16
Integration of perception, memory, attention and
reasoning
17
Explaining integration of high-level cognitive
processes with each other.
18
Polyscheme
19
Compare and contrast
  • Borrows from existing modeling frameworks.
  • Worlds Search, (Bayesian) stochastic simulation,
    Soar, Johns-Laird mental models, situation
    semantics.
  • Impasses Attention control strategies initiated
    during conflict.
  • Attention control ACT-R.
  • Differences
  • Designed from the ground up allow many
    representations as first-class citizens.
  • Higher-level of basic services.
  • Focus on language.

20
Why Polyscheme
  • Enables models that combine aspects of existing
    cognitive architectures.
  • E.g., physical reasoning model
  • Neural networks for object recognition.
  • Rules for physical dynamics.
  • Impasses, simulation of states and
    activation-based conflict resolution for
    reasoning about uncertainty.
  • Search.
  • Stochastic simulation.
  • Truth-maintenance for belief revision.

21
Existing Polyscheme Models
  • Used at NRL, RPI and (soon) AFRL.
  • Models
  • Infant physical reasoning.
  • Syntactic understanding.
  • Uses same mechanisms as physical reasoning model.
  • Human-robot interaction.
  • Goal
  • Only one Polyscheme model.

22
Conclusions
  • Attention control is reasoning.
  • Enables integration of reasoning and problem
    solving modeling with memory, attention,
    perception and action modeling.
  • Reasoning and problem solving strategy execution
    as sequence of fixations key to integration.
  • High-level integrated with each other through
    interleaved fixations.
  • High-and low-level integrated since each fixation
    involves all the low-level specialists.
  • Attention is not a subsystem or module, but
    fundamental organizational mechanism of cognitive
    architecture.
  • Embodied cognition not in conflict with
    old-fashioned reasoning and problem solving
  • If you have a system with imagery and focus of
    attention, then if you control that focus of
    attention, you are reasoning.
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