Comparing and extending the use of defeasible argumentation with quantitative data in real-world contexts
Lucas Rizzo, Luca Longo

TL;DR
This paper evaluates defeasible argumentation's effectiveness in non-monotonic reasoning with quantitative data, comparing it to fuzzy reasoning and expert systems in trust inference within AI.
Contribution
It empirically demonstrates the robustness of defeasible argumentation over baseline models in trust inference, with implementations publicly available for further research.
Findings
Defeasible argumentation outperforms baseline models in trust inference.
Models are robust across different datasets and knowledge bases.
The study enhances the empirical understanding of defeasible argumentation in AI.
Abstract
Dealing with uncertain, contradicting, and ambiguous information is still a central issue in Artificial Intelligence (AI). As a result, many formalisms have been proposed or adapted so as to consider non-monotonicity, with only a limited number of works and researchers performing any sort of comparison among them. A non-monotonic formalism is one that allows the retraction of previous conclusions or claims, from premises, in light of new evidence, offering some desirable flexibility when dealing with uncertainty. This research article focuses on evaluating the inferential capacity of defeasible argumentation, a formalism particularly envisioned for modelling non-monotonic reasoning. In addition to this, fuzzy reasoning and expert systems, extended for handling non-monotonicity of reasoning, are selected and employed as baselines, due to their vast and accepted use within the AI…
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Taxonomy
TopicsAccess Control and Trust · Logic, Reasoning, and Knowledge · Multi-Agent Systems and Negotiation
