This paper introduces Probabilistic Deduction (PD) as an approach to probabilistic structured argumentation. A PD framework is composed of probabilistic rules (p-rules). As rules in classical structured argumentation frameworks, p-rules form deduction systems. In addition, p-rules also represent conditional probabilities that define joint probability distributions. With PD frameworks, one performs probabilistic reasoning by solving Rule-Probabilistic Satisfiability. At the same time, one can obtain an argumentative reading to the probabilistic reasoning with arguments and attacks. In this work, we introduce a probabilistic version of the Closed-World Assumption (P-CWA) and prove that our probabilistic approach coincides with the complete extension in classical argumentation under P-CWA and with maximum entropy reasoning. We present several approaches to compute the joint probability distribution from p-rules for achieving a practical proof theory for PD. PD provides a framework to unify probabilistic reasoning with argumentative reasoning. This is the first work in probabilistic structured argumentation where the joint distribution is not assumed form external sources.
翻译:本文介绍概率推理,作为概率结构化理论的一种方法。PD框架由概率规则组成。作为典型结构化理论框架的规则,p规则构成推算制度。此外,p规则还代表了确定联合概率分布的有条件概率。PD框架通过解决规则-概率性可满足性原则来进行概率推理。同时,人们可以对逻辑推理和论点及攻击进行论证。在这项工作中,我们引入了封闭世界假设(P-CWA)的概率化版本,并证明我们的概率推理方法与P-CWA下经典推理的完整延伸相吻合。我们提出了几种从p规则中计算联合概率分布的方法,以获得PD的实际证据理论。PD提供了将概率推理与推理统一的框架。这是在假设联合分布为外部分布的概率结构论中的第一个工作。