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arXiv 提交日期: 2026-02-16
📄 Abstract - From User Preferences to Base Score Extraction Functions in Gradual Argumentation

Gradual argumentation is a field of symbolic AI which is attracting attention for its ability to support transparent and contestable AI systems. It is considered a useful tool in domains such as decision-making, recommendation, debate analysis, and others. The outcomes in such domains are usually dependent on the arguments' base scores, which must be selected carefully. Often, this selection process requires user expertise and may not always be straightforward. On the other hand, organising the arguments by preference could simplify the task. In this work, we introduce \emph{Base Score Extraction Functions}, which provide a mapping from users' preferences over arguments to base scores. These functions can be applied to the arguments of a \emph{Bipolar Argumentation Framework} (BAF), supplemented with preferences, to obtain a \emph{Quantitative Bipolar Argumentation Framework} (QBAF), allowing the use of well-established computational tools in gradual argumentation. We outline the desirable properties of base score extraction functions, discuss some design choices, and provide an algorithm for base score extraction. Our method incorporates an approximation of non-linearities in human preferences to allow for better approximation of the real ones. Finally, we evaluate our approach both theoretically and experimentally in a robotics setting, and offer recommendations for selecting appropriate gradual semantics in practice.

顶级标签: agents systems theory
详细标签: gradual argumentation preference modeling bipolar argumentation framework base score extraction symbolic ai 或 搜索:

从用户偏好到渐进论辩中的基础分值提取函数 / From User Preferences to Base Score Extraction Functions in Gradual Argumentation


1️⃣ 一句话总结

这篇论文提出了一种新方法,能够将用户对论点的偏好自动转换为计算所需的基础分值,从而简化了渐进论辩系统的构建过程,使其更易于在实际决策或推荐等场景中应用。

源自 arXiv: 2602.14674