Handling Uncertainty during Plan Recognition in Task-Oriented Consultation Systems
Bhavani Raskutti, Ingrid Zukerman

TL;DR
This paper introduces a probabilistic approach to handle uncertainty in plan recognition within task-oriented consultation systems, improving interpretation accuracy despite partial or inaccurate user input.
Contribution
It presents a novel mechanism combining probability theory and information content to better interpret user statements in consultation systems.
Findings
Effective handling of uncertain user input in travel agency domain
Improved accuracy in plan recognition through information content assessment
Guided inference process towards more specific interpretations
Abstract
During interactions with human consultants, people are used to providing partial and/or inaccurate information, and still be understood and assisted. We attempt to emulate this capability of human consultants; in computer consultation systems. In this paper, we present a mechanism for handling uncertainty in plan recognition during task-oriented consultations. The uncertainty arises while choosing an appropriate interpretation of a user?s statements among many possible interpretations. Our mechanism handles this uncertainty by using probability theory to assess the probabilities of the interpretations, and complements this assessment by taking into account the information content of the interpretations. The information content of an interpretation is a measure of how well defined an interpretation is in terms of the actions to be performed on the basis of the interpretation. This…
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Taxonomy
TopicsAI-based Problem Solving and Planning · Semantic Web and Ontologies · Logic, Reasoning, and Knowledge
