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Efficiently computing extensions' probabilities over probabilistic Bipolar Abstract Argumentation Frameworks

机译:高效计算概率双极抽象论证框架上的扩展概率

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Probabilistic Bipolar Abstract Argumentation Frameworks (prBAFs), combining the possibility of specifying supports between arguments with a probabilistic modeling of the uncertainty, have been recently considered [34, 35] and the complexity of the problem of computing extensions' probabilities has been characterized [22]. In this paper we deal with the problem of computing extensions' probabilities over prBAFs where the probabilistic events that arguments, supports and defeats occur in the real scenario are assumed to be independent probabilistic events (prBAFS of type ind). Specifically an algorithm for efficiently computing extensions' probabilities under the stable and admissible semantics has been devised and its efficiency has been experimentally validated w.r.t. the exhaustive approach, i.e. the approach consisting in the generation of all the possible scenarios, showing that the proposed algorithm outperforms the exhaustive approach.
机译:概率双极抽象论证框架(PRBAFS),最近被认为[34,35]已经考虑了在不确定性的概率建模之间指定支持之间的可能性,并且已经表现了计算扩展概率问题的复杂性[22 ]。 在本文中,我们应对PRBAF的概率事件在实际方案中发生的概率事件,以实际情况发生的概率事件来处理ProBAF的概率问题,是独立的概率事件(IND类型的PRBAF)。 具体地,已经设计了一种用于有效计算稳定和可允许的语义下的扩展概率的算法,并且其效率已经通过实验验证了W.r.t. 详尽的方法,即,在生成所有可能场景的方法中,表明所提出的算法优于详尽的方法。

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