Model Confidence

Kathryn Blackmond Laskey
Department of Systems Engineering
George Mason UniversityPresented to Summer Institute on Probability in Artificial Intelligence
University of Oregon, July, 1994

An intelligent agent uses a model of the world to reason about the effects of its actions and decide on the best course of action. Except on the simplest and least interesting problems, the agent's model of the world may be incorrect. Intelligent age nts need to be robust to model misspecification and to be able to reason appropriately with fallible models. This presentation describes methods for representing information about confidence in a model, methods for revising assessments of model confidenc e based on performance of the model, and approaches to reasoning with fallible models.
 
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