正、反抽象论证问题的贝叶斯方法

Q1 Arts and Humanities
Hiroyuki Kido, B. Liao
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引用次数: 0

摘要

本文研究了论点之间的冲突是由关于论点可接受性的情绪引起的基本机制。给定一组参数,逆抽象论证问题寻求参数之间的攻击关系,使得可接受性语义将参数集中的每个参数解释为在每个攻击关系中都是可接受的。它是传统问题的逆问题,我们称之为正向抽象论证问题。给定一个攻击关系,前向抽象论证问题寻求这样的论证集,即可接受语义将论证集中的每个论证解释为在攻击关系中是可接受的。我们给出了一个论证理论推理的概率模型。它是一个生成模型,形式化了可接受语义解释给定攻击关系中参数的可接受性的过程。我们证明了它给出了正、逆抽象论证问题的广义解法。具体地说,逆向和正向抽象论证问题的解分别等价于极大似然估计和极大似然预测,这两者都可以用生成模型得到。此外,它们分别是后验分布和证据的特例,它们都是通过生成模型上的概率推理得到的。本文报道了生成模型在反问题中的一个实验结果和应用实例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Bayesian approach to forward and inverse abstract argumentation problems
This paper studies a fundamental mechanism by which conflicts between arguments are drawn from sentiments regarding acceptability of the arguments. Given sets of arguments, an inverse abstract argumentation problem seeks attack relations between arguments such that acceptability semantics interprets each argument in the sets of arguments as being acceptable in each of the attack relations. It is an inverse problem of the traditional problem we refer to as the forward abstract argumentation problem. Given an attack relation, the forward abstract argumentation problem seeks sets of arguments such that acceptability semantics interprets each argument in the sets of arguments as being acceptable in the attack relation. We give a probabilistic model of argumentation-theoretic inference. It is a generative model formalising the process by which acceptability semantics interprets acceptability of arguments in a given attack relation. We show that it gives a broad view of solutions to the forward and inverse abstract argumentation problems. Specifically, solutions to the inverse and forward abstract argumentation problems are shown to be equivalent to a maximum likelihood estimate and maximum likelihood prediction, respectively, which are both available with the generative model. In addition, they are shown to be special cases of the posterior distribution and the evidence, respectively, which are both obtained by probabilistic inference on the generative model. We report an experiment result and application example of the generative model in the inverse problems.
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来源期刊
Journal of Applied Non-Classical Logics
Journal of Applied Non-Classical Logics Arts and Humanities-Philosophy
CiteScore
1.30
自引率
0.00%
发文量
8
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