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MURI:

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Ronald Laughery, Robert Proctor, Co-Investigators. Project goals ... Basic Components of Skill Purdue, Robert Proctor, Co-investigator ... – PowerPoint PPT presentation

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Title: MURI:


1
MURI Training Knowledge and Skills for the
Networked Battlefield ARO Award No.
W9112NF-05-1-0153 Alice Healy and Lyle Bourne,
Principal Investigators Benjamin Clegg, Bengt
Fornberg, Cleotilde Gonzalez, Eric Heggestad,
Ronald Laughery, Robert Proctor,
Co-Investigators
2
  • Project goals
  • As defined in the MURI proposal executive summary
  • Construct a theoretical and empirical framework
    for training that can
  • Predict the effectiveness of different training
    methods for military tasks
  • Point to ways to optimize training for specific
    tasks.

3
  • Technical approach
  • Work will proceed in three interrelated efforts
  • Experimentation and training principle
    development
  • Breadth, interaction, and generality of training
    principles
  • Acquisition and retention of basic skill
    components
  • Effects of levels of automation, individual
    differences, and team environments on performance
  • Multi-dimensional taxonomic analysis
  • Analyze task types, training methods, performance
    measures
  • Using training principles, relate task training
    to performance
  • Computational modeling
  • Derive from data and training principles
  • Monitor and assess for performance and
    reliability
  • Use to extend the research findings to militarily
    relevant tasks

4
  • MURI personnel and their project roles
  • Overview and Coordination CU, Alice Healy,
    Principal investigator
  • Lyle Bourne, Co-principal investigator
  • Experimentation/Principles
  • Training Principles in CU, Healy and Bourne
  • simple and complex tasks
  • Basic Components of Skill Purdue, Robert Proctor,
    Co-investigator
  • Levels of automation, CSU, Benjamin Clegg,
    Co-investigator
  • individual differences, Eric Heggestad,
    Co-investigator
  • and team environments
  • Taxonomies CU, William Raymond, Research
    Associate
  • Modeling
  • ACT-R CMU, Cleotilde Gonzalez, Co-investigator
  • IMPRINT CU, Ron Laughery, Co-investigator
  • Model Assessment CU, Bengt Fornberg,
    Co-investigator

5
  • Experimentation and
  • training principle development
  • Breadth, interaction, and generality of training
    principles
  • Generality of principles across tasks Strategic
    use of knowledge
  • Multiple principles in a task serial position,
    list length, and chunking effects
  • Principles in complex, dynamic environments
    Training difficulty hypothesis
  • Acquisition and retention of basic skill
    components
  • Stimulus-response compatibility in response
    selection
  • Transfer of response associations to different
    tasks or environments
  • Effects of levels of automation, individual
    differences, and team environments on performance
  • Impact of levels of automation on performance
  • Interaction of automation level with individual
    ability (task and transfer)

6
  • Taxonomic analysis
  • Task types
  • Feature decomposition for cognitive tasks,
    aligned with IMPRINT taxons
  • Model of data entry
  • Training methods
  • Developing taxonomy from experiments, needed
    military training coverage
  • Performance measures
  • - Developing taxonomy from prior research
  • Training principles
  • 30 training principles summarized
  • Aligning training principles with other dimensions

7
  • Computational modeling
  • Cognitive modeling using ATC-R
  • Cognitive model of data entry task
  • Model interpretations for observed phenomena
  • Model predictions for optimizing skill retention
  • IMPRINT modeling
  • Researchers being trained in modeling with
    IMPRINT
  • Model assessment
  • IMPRINT and ACT-R suited for intended modeling
    purposes
  • Data mining (e.g., using radial basis
    functions) may also be useful
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