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首页> 外文期刊>The Journal of Artificial Intelligence Research >Declarative Algorithms and Complexity Results for Assumption-Based Argumentation
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Declarative Algorithms and Complexity Results for Assumption-Based Argumentation

机译:基于假设的论证的声明性算法和复杂性结果

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The study of computational models for argumentation is a vibrant area of artificial intelligence and, in particular, knowledge representation and reasoning research. Arguments most often have an intrinsic structure made explicit through derivations from more basic structures. Computational models for structured argumentation enable making the internal structure of arguments explicit. Assumption-based argumentation (ABA) is a central structured formalism for argumentation in AI. In this article, we make both algorithmic and complexity-theoretic advances in the study of ABA. In terms of algorithms, we propose a new approach to reasoning in a commonly studied fragment of ABA (namely the logic programming fragment) with and without preferences. While previous approaches to reasoning over ABA frameworks apply either specialized algorithms or translate ABA reasoning to reasoning over abstract argumentation frameworks, we develop a direct declarative approach to ABA reasoning by encoding ABA reasoning tasks in answer set programming. We show via an extensive empirical evaluation that our approach significantly improves on the empirical performance of current ABA reasoning systems. In terms of computational complexity, while the complexity of reasoning over ABA frameworks is well-understood, the complexity of reasoning in the ABA+ formalism integrating preferences into ABA is currently not fully established. Towards bridging this gap, our results suggest that the integration of preferential information into ABA via so-called reverse attacks results in increased problem complexity for several central argumentation semantics.
机译:争论的计算模型的研究是人工智能的充满活力区域,特别是知识表示和推理研究。争论最常具有从更多基本结构的派生明确明确的内在结构。结构化参数的计算模型使得使参数的内部结构显式。基于假设的论证(ABA)是AI中的论证的中央结构形式主义。在本文中,我们在ABA研究中进行了算法和复杂性 - 理论步。在算法方面,我们提出了一种新的方法,以常见的方式推理ABA(即逻辑编程片段)的常用片段,而没有偏好。虽然以前推理ABA框架的方法应用了专用算法或翻译ABA推理以推理抽象的论证框架,但我们通过在答案集编程中编码ABA推理任务来开发直接的声明性方法。我们通过广泛的实证评估显示,我们的方法显着提高了当前ABA推理系统的实证性能。在计算复杂性方面,虽然推理对ABA框架的复杂性很好地理解,但目前没有完全建立将偏好与ABA相结合的ABA +形式主义的复杂性。我们的结果表明,我们的结果表明,通过所谓的反向攻击将优先信息集成到ABA中,导致几个中央论证语义的问题复杂性增加。

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