A new model of plan recognition

  • Authors:
  • Robert P. Goldman;Christopher W. Geib;Christopher A. Miller

  • Affiliations:
  • Honeywell Technology Center, Minneapolis, MN;Honeywell Technology Center, Minneapolis, MN;Honeywell Technology Center, Minneapolis, MN

  • Venue:
  • UAI'99 Proceedings of the Fifteenth conference on Uncertainty in artificial intelligence
  • Year:
  • 1999

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Abstract

We present a new abductive, probabilistic theory of plan recognition. This model differs from previous theories in being centered around a model of plan execution: most previous methods have been based on plans as formal objects or on rules describing the recognition process. We show that our new model accounts for phenomena omitted from most previous plan recognition theories: notably the cumulative effect of a sequence of observations of partially-ordered, interleaved plans and the effect of context on plan adoption. The model also supports inferences about the evolution of plan execution in situations where another agent intervenes in plan execution. This facility provides support for using plan recognition to build systems that will intelligently assist a user.