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Natural Language Generation for Intelligent Tutoring Systems

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Deploy NL interfaces to support computer-supported instruction and ... need to remove a wire from the circuit before attaching the leads of the ammeter? ... – PowerPoint PPT presentation

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Title: Natural Language Generation for Intelligent Tutoring Systems


1
Natural Language Generation for Intelligent
Tutoring Systems
  • Barbara Di Eugenio, Michael Glass, Michael J.
    Trolio, Heena Raval
  • Collaborators
  • Johanna D. Moore (U. Edinburgh, UK)
  • Carolyn P. Rose (U. of Pittsburgh)
  • Susan Haller (U. Wisconsin, Parkside)
  • Stellan Ohlsson (Psychology, UIC)
  • Supported by Office of Naval Research

2
Focus
  • Deploy NL interfaces to support
    computer-supported instruction and educational
    technology
  • NL interfaces crucial to next generation of
    Intelligent Tutoring Systems (ITS) the 2 Sigma
    effect Bloom 82
  • Question how to inform production of NL feedback
    by ITS

3
A Tutoring Dialogue Excerpt
  • TUTOR Can you understand why you would need to
    remove a wire from the circuit before attaching
    the leads of the ammeter?
  • STUDENT Yes you cannot work with the power on
    and the power needs to be off or disconnected
  • TUTOR So if the wire was not removed, you think
    the power would be on in the circuit eventhough
    the switch is open?
  • STUDENT The power would not be on but it is
    possible for energy to still be going through the
    wire
  • TUTOR Actually, that is not the case.

4
Research Questions
  • Which tutoring strategies should an ITS adopt,
    and how are they expressed in NL?
  • Which features of conventional dialogue carry
    over to tutoring? (e.g., requests)
  • How to generate reactively? Need ability to
    replan
  • How to evaluate? Need to positively affect
    student learning

5
Research Methodology
  • Mark-up. Annotate language data
  • Mine. Extract information from annotated corpus,
    via statistical techniques or machine learning
  • Develop computational model based on results in
    (2)
  • Conduct systematic evaluation of implemented
    system

6
One illustrative project DIAG-NLP
  • Goal Evaluate the added value of NL
    interfaces to DIAG Towne97, an ITS shell to
    teach students how to troubleshoot complex
    systems
  • Two versions of the system. They differ in how
    language feedback to student query is generated,
  • DIAG-orig uses simple templates. Resulting text
    is repetitive
  • DIAG-NLP uses NL generation technology

7
Results so far
  • Between-subject study shows cumulative effect in
    favor of DIAG-NLP (9 measures out of 11)
  • Three types of measures knowledge of subject
    matter usability of system recollection of
    actions

8
Current work
  • Completed Data collection.
  • 25 dialogues three tutors who verbalize
    output DIAG-orig provides
  • In progress Data Analysis.
  • Focus Domain modeling Tutorss actions
    portion of feedback produced by DIAG-orig the
    tutor verbalizes
  • Next Computational model. Data Analysis will
    inform NL interface
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