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IJCAI 1995

Default-Reasoning with Models

Conference Paper DEFAULTS Artificial Intelligence

Abstract

Reasoning with model-based representations is an intuitive paradigm, which has been shown to be theoretically sound and to possess some computational advantages over reasoning with formula-based representations of knowledge. In this paper we present more evidence to the util­ ity of such representations. In real life situations, one normally completes a lot of missing "context" information when answering queries. We model this situation by augmenting the available knowledge about the world with context-specific information; we show that reasoning with model-based repre­ sentations can be done efficiently in the pres­ ence of varying context information. We then consider the task of default reasoning. We show that default reasoning is a generalization of reasoning within context, in which the reasoner has many "context" rules, which may be conflicting. We characterize the cases in which model-based reasoning supports efficient default reasoning and develop algorithms that handle efficiently fragments of Reiter's default logic. In particular, this includes cases in which performing the default reasoning task with the traditional, formula-based, representation is in­ tractable. Further, we argue that these results support an incremental view of reasoning in a natural way.

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Context

Venue
International Joint Conference on Artificial Intelligence
Archive span
1969-2025
Indexed papers
14525
Paper id
560304827284582939