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Handling defeasibilities in action domains

Published online by Cambridge University Press:  13 May 2003

YAN ZHANG
Affiliation:
School of Computing and Information Technology, University of Western Sydney, Locked Bag 1797, Penrith South DC, NSW 1797, Australia (e-mail: [email protected])

Abstract

Representing defeasibility is an important issue in common sense reasoning. In reasoning about action and change, this issue becomes more difficult because domain and action related defeasible information may conflict with general inertia rules. Furthermore, different types of defeasible information may also interfere with each other during the reasoning. In this paper, we develop a prioritized logic programming approach to handle defeasibilities in reasoning about action. In particular, we propose three action languages ${\cal AT}^{0}$, ${\cal AT}^{1}$, and ${\cal AT}^{2}$ which handle three types of defeasibilities in action domains named defeasible constraints, defeasible observations and actions with defeasible and abnormal effects respectively. Each language with a higher superscript can be viewed as an extension of the language with a lower superscript. These action languages inherit the simple syntax of ${\cal A}$ language but their semantics is developed in terms of transition systems where transition functions are defined based on prioritized logic programs. By illustrating various examples, we show that our approach eventually provides a powerful mechanism to handle various defeasibilities in temporal prediction and postdiction. We also investigate semantic properties of these three action languages and characterize classes of action domains that present more desirable solutions in reasoning about action within the underlying action languages.

Type
Research Article
Copyright
© 2003 Cambridge University Press

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