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A probabilistic approach to modelling uncertain logical arguments

机译:一种对不确定的逻辑参数建模的概率方法

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摘要

Argumentation can be modelled at an abstract level using a directed graph where each node denotes an argument and each arc denotes an attack by one argument on another. Since arguments are often uncertain, it can be useful to quantify the uncertainty associated with each argument. Recently, there have been proposals to extend abstract argumentation to take this uncertainty into account. This assigns a probability value for each argument that represents the degree to which the argument is believed to hold, and this is then used to generate a probability distribution over the full subgraphs of the argument graph, which in turn can be used to determine the probability that a set of arguments is admissible or an extension. In order to more fully understand uncertainty in argumentation, in this paper, we extend this idea by considering logic-based argumentation with uncertain arguments. This is based on a probability distribution over models of the language, which can then be used to give a probability distribution over arguments that are constructed using classical logic. We show how this formalization of uncertainty of logical arguments relates to uncertainty of abstract arguments, and we consider a number of interesting classes of probability assignments.
机译:可以使用有向图在抽象级别上对自变量建模,其中每个节点表示一个自变量,每个弧表示一个自变量对另一个自变量的攻击。由于参数通常是不确定的,因此量化与每个参数相关的不确定性可能很有用。最近,有人提出了扩展抽象论证以考虑这种不确定性的提议。这将为每个自变量分配一个概率值,该概率值表示认为该自变量保持的程度,然后用于在自变量图的整个子图上生成概率分布,进而可用于确定概率一组参数是可接受的还是扩展的。为了更充分地理解论证的不确定性,在本文中,我们通过考虑带有不确定论证的基于逻辑的论证来扩展该思想。这是基于语言模型上的概率分布,然后可以将其用于使用经典逻辑构造的自变量上给出概率分布。我们展示了逻辑论证不确定性的形式化与抽象论证不确定性之间的关系,并考虑了许多有趣的概率分配类别。

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