Formulating Semantics of Probabilistic Argumentation by Characterizing Subgraphs: Theory and Empirical Results
August 01, 2016 Β· Declared Dead Β· π Logic, Rationality, and Interaction
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Authors
Beishui Liao, Kang Xu, Huaxin Huang
arXiv ID
1608.00302
Category
cs.AI: Artificial Intelligence
Citations
12
Venue
Logic, Rationality, and Interaction
Last Checked
4 months ago
Abstract
In existing literature, while approximate approaches based on Monte-Carlo simulation technique have been proposed to compute the semantics of probabilistic argumentation, how to improve the efficiency of computation without using simulation technique is still an open problem. In this paper, we address this problem from the following two perspectives. First, conceptually, we define specific properties to characterize the subgraphs of a PrAG with respect to a given extension, such that the probability of a set of arguments E being an extension can be defined in terms of these properties, without (or with less) construction of subgraphs. Second, computationally, we take preferred semantics as an example, and develop algorithms to evaluate the efficiency of our approach. The results show that our approach not only dramatically decreases the time for computing p(E^Ο), but also has an attractive property, which is contrary to that of existing approaches: the denser the edges of a PrAG are or the bigger the size of a given extension E is, the more efficient our approach computes p(E^Ο). Meanwhile, it is shown that under complete and preferred semantics, the problems of determining p(E^Ο) are fixed-parameter tractable.
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