A Filtering-based General Approach to Learning Rational Constraints of Epistemic Graphs
November 05, 2022 Β· Declared Dead Β· π Chinese Conference on Logic and Argumentation
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Authors
Xiao Chi
arXiv ID
2211.02918
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.LG
Citations
0
Venue
Chinese Conference on Logic and Argumentation
Last Checked
4 months ago
Abstract
Epistemic graphs are a generalization of the epistemic approach to probabilistic argumentation. Hunter proposed a 2-way generalization framework to learn epistemic constraints from crowd-sourcing data. However, the learnt epistemic constraints only reflect users' beliefs from data, without considering the rationality encoded in epistemic graphs. Meanwhile, the current framework can only generate epistemic constraints that reflect whether an agent believes an argument, but not the degree to which it believes in it. The major challenge to achieving this effect is that the computational complexity will increase sharply when expanding the variety of constraints, which may lead to unacceptable time performance. To address these problems, we propose a filtering-based approach using a multiple-way generalization step to generate a set of rational rules which are consistent with their epistemic graphs from a dataset. This approach is able to learn a wider variety of rational rules that reflect information in both the domain model and the user model. Moreover, to improve computational efficiency, we introduce a new function to exclude meaningless rules. The empirical results show that our approach significantly outperforms the existing framework when expanding the variety of rules.
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