Modular Semantics and Characteristics for Bipolar Weighted Argumentation Graphs
July 17, 2018 Β· Declared Dead Β· π arXiv.org
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Authors
Till Mossakowski, Fabian Neuhaus
arXiv ID
1807.06685
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.LO
Citations
41
Venue
arXiv.org
Last Checked
4 months ago
Abstract
This paper addresses the semantics of weighted argumentation graphs that are bipolar, i.e. contain both attacks and supports for arguments. It builds on previous work by Amgoud, Ben-Naim et. al. We study the various characteristics of acceptability semantics that have been introduced in these works, and introduce the notion of a modular acceptability semantics. A semantics is modular if it cleanly separates aggregation of attacking and supporting arguments (for a given argument $a$) from the computation of their influence on $a$'s initial weight. We show that the various semantics for bipolar argumentation graphs from the literature may be analysed as a composition of an aggregation function with an influence function. Based on this modular framework, we prove general convergence and divergence theorems. We demonstrate that all well-behaved modular acceptability semantics converge for all acyclic graphs and that no sum-based semantics can converge for all graphs. In particular, we show divergence of Euler-based semantics (Amgoud et al.) for certain cyclic graphs. Further, we provide the first semantics for bipolar weighted graphs that converges for all graphs.
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