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Efficient Computation of Extensions for Dynamic Abstract Argumentation Frameworks: An Incremental Approach

机译:有效计算动态抽象论证框架的扩展:增量方法

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Abstract argumentation frameworks (AFs) are a well-known formalism for modelling and deciding many argumentation problems. Computational issues and evaluation algorithms have been deeply investigated for static AFs, whose structure does not change over the time. However, AFs are often dynamic as a consequence of the fact that argumentation is inherently dynamic. In this paper, we tackle the problem of incrementally computing extensions for dynamic AFs: given an initial extension and an update (or a set of up-dates), we devise a technique for computing an extension of the updated AF under four well-known semantics (i.e., complete, preferred, stable, and grounded). The idea is to identify a reduced (up-dated) AF sufficient to compute an extension of the whole AF and use state-of-the-art algorithms to recompute an extension of the reduced AF only. The experiments reveal that, for all semantics considered and using different solvers, the incremental technique is on average two orders of magnitude faster than computing the semantics from scratch.
机译:抽象论证框架(AFS)是一种众所周知的形式主义,用于建模和决定许多论证问题。对静态AFS进行了对计算问题和评估算法,其结构不会随着时间的变化而变化。然而,由于论证本质上是动态的事实,AFS通常是动态的。在本文中,我们解决了动态AFS递增计算扩展的问题:给定初始扩展和更新(或一组Up-Date),我们设计了一种用于计算在四个众所周知的四个众所周知的更新的AF的扩展技术语义(即,完整,优选,稳定和接地)。该想法是识别足以计算整个AF的扩展并使用最先进的算法来重新计算减少的AF的扩展。实验表明,对于考虑和使用不同的求解器的所有语义,增量技术平均比计算语义从头计算出来的两个数量级。

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