Argumentation Frameworks Induced by Assumption-Based Argumentation: Relating Size and Complexity

Anna Rapberger, Markus Ulbricht, J. Wallner
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引用次数: 3

Abstract

A key ingredient of computational argumentation in AI is the generation of arguments in favor of or against claims under scrutiny. In this paper we look at the complexity of argument construction and reasoning in the prominent structured formalism of assumption-based argumentation (ABA). We point out that reasoning in ABA by means of constructing an abstract argumentation framework (AF) gives rise to two main sources of complexity: (i) constructing the AF and (ii) reasoning within the constructed graph. Since both steps are intractable in general, it is no surprise that the best performing state-of-the-art ABA reasoners skip the instantiation procedure entirely and perform tasks directly on the input knowledge base. Driven by this observation, we identify and study atomic and symmetric ABA, two ABA fragments that preserve the expressive power of general ABA, and that can be utilized to have milder complexity in the first or second step. We show that using atomic ABA allows for an instantiation procedure for general ABA leading to polynomially-bounded AFs and that symmetric ABA can be used to create AFs that have mild complexity to reason on. By an experimental evaluation, we show that using the former approach with modern AF solvers can be competitive with state-of-the-art ABA solvers, improving on previous AF instantiation approaches that are hindered by intractable argument construction.
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基于假设的论证诱发的论证框架:规模与复杂性的关系
人工智能计算论证的一个关键要素是生成支持或反对审查下的主张的论证。在本文中,我们着眼于论点的复杂性建设和推理的突出结构形式主义的假设为基础的论证(ABA)。我们指出,通过构造抽象论证框架(AF)在ABA中的推理产生了两个主要的复杂性来源:(i)构造AF和(ii)在构造图内进行推理。由于这两个步骤通常都是难以处理的,因此性能最好的最先进的ABA推理器完全跳过实例化过程并直接在输入知识库上执行任务也就不足为奇了。在这种观察的驱动下,我们鉴定并研究了原子ABA和对称ABA,这两种ABA片段保留了一般ABA的表达能力,并且可以在第一步或第二步中使用较温和的复杂性。我们表明,使用原子ABA允许一般ABA的实例化过程,导致多项式有界的AFs,而对称ABA可用于创建具有轻度复杂性的AFs。通过实验评估,我们表明,在现代AF求解器中使用前一种方法可以与最先进的ABA求解器竞争,改进了以前的AF实例化方法,这些方法受到难以处理的参数构建的阻碍。
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