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Untangling Computational Intuitions about Naturalistic Decision Making

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Title: Untangling Computational Intuitions about Naturalistic Decision Making


1
Untangling Computational Intuitions about
Naturalistic Decision Making
  • Walter Warwick
  • Micro Analysis and Design, Inc.

2
Overview
  • The old tangle
  • Our approach
  • What it means to model a naturalistic decision
    computationally in general
  • What it actually looks like in practice
  • A new tangle

3
The Old Tangle
  • It is often argued that a careful line must be
    drawn between the attempt to accomplish with
    machines the same tasks that humans perform, and
    the attempt to simulate the process humans
    actually use to accomplish these tasks. The
    program discussed in this report maximally
    confuses the two approaches
  • Newell and Simon, 1963

4
The Old Tangle
  • In 1976 I read Dreyfuss book What Computers
    Cant Do and realized that his critique of the
    Artificial Intelligence position was also a
    critique of the information-processing account of
    cognition and expertise.
  • Klein, 1998

5
The Old Tangle
  • Cognitive models are often predicated on the
    metaphor of the Human Information Processor
  • If nothing else, cognitive models are symbolic
    (even the connectionists ones)
  • The roles of the computer qua metaphor for
    theoretical model and qua modeling artifact are
    often maximally confused
  • Naturalistic theories reject computational
    accounts of cognition
  • So how do you build a computational model of a
    naturalistic process?

6
Our Approach
  • Initial Spin wheels, argue and explain away
    whatever whiffs of a rule-based implementation we
    could
  • Plan B Recognize computer simulations as tools
    and focus instead on identifying the
    naturalistic dimensions to support principled
    (i.e., human-like) variability in synthetic
    behaviors (CGFs in particular)

7
Naturalistic Dimensions (ala the RPD)
  • Experience (LTM, reinforcement criteria,
    sentinel events)
  • Judgments of significance / recognizing relevant
    cues (cue weights)
  • Differences that make a difference (cue
    discriminations)
  • Expectancy evaluation (diagnostic reasoning via
    CBN)
  • Process level effects (recall precision, variable
    certainty thresholds, workload induced
    limitations on WM)

8
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9
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10
CGF Applications
  • Meso-level behaviors in the IUSS
  • Tactical adjustments to course (posture, speed
    route)
  • Obstacle avoidance
  • Exploiting cover and concealment
  • Sensitive to stressors

11
CGF Applications
  • Actions on Contact in JointSAF
  • Capture the notion of a force multiplier
    naturalistically

12
CGF Applications
  • Building clearing in DISAF
  • Which door, Which team, How to enter,
    Fire-permissions
  • Reactive model for seemingly intentional behavior

13
Lead Balloons
  • Naturalistic decision making isnt algorithmic
  • Whats a probability calculus doing in a model of
    decision making?
  • These new algorithms arent naturalistic
  • Why dont we use this approach to improve pattern
    matching algorithms?
  • Why model decision making at all?
  • The OJ Defense Humans dont really make
    decisions, but if they did, why should we take a
    naturalistic approach when we already have a long
    normative tradition in place?

14
Lead Balloons (cont.)
  • Important to distinguish between computational
    models of cognition and models of cognition as a
    computational process
  • Likewise, its important to recognize that AI and
    cognitive modeling are distinct endeavors
    (maximally confusing the two often leads to
    maximal confusion)
  • The assumption that humans really do make
    decisions we can model is certainly no stronger
    than the assumption that cognition is symbolic
  • No useful alternative in either case
  • Naturalistic view suggests new sources of
    variability for HBRs

15
The New Tangle
  • In the context of CGFs, the really pressing
    questions are of a different sort
  • Top-down versus bottom-up
  • Integrative cognitive architecture versus modular
    approaches (e.g., a model of single decision
    embedded via a client-server architecture)
  • Where do the physical-models stop and the
    cognitive models start (e.g., DIs in ModSAF as
    lightly armored tanks)?
  • How can we make CGFs more accessible to cognitive
    modelers?
  • CGFs as testbeds rather than just as the target
    applications
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