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Cutting Cycles of Conditional Preference Networks with Feedback Set Approach

机译:具有反馈装置方法的条件偏好网络的切割周期

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摘要

As a tool of qualitative representation, conditional preference network (CP-net) has recently become a hot research topic in the field of artificial intelligence. The semantics of CP-nets does not restrict the generation of cycles, but the existence of the cycles would affect the property of CP-nets such as satisfaction and consistency. This paper attempts to use the feedback set problem theory including feedback vertex set (FVS) and feedback arc set (FAS) to cut cycles in CP-nets. Because of great time complexity of the problem in general, this paper defines a class of the parent vertices in a ring CP-nets firstly and then gives corresponding algorithm, respectively, based on FVS and FAS. Finally, the experiment shows that the running time and the expressive ability of the two methods are compared.
机译:作为定性表示的工具,条件偏好网络(CP-Net)最近成为人工智能领域的热门研究主题。 CP-Nets的语义不限制周期的产生,但周期的存在会影响CP-网的性质,如满意度和一致性。 本文试图使用反馈设定问题理论,包括反馈顶点集(FVS)和反馈弧集(FAS)以在CP-Net中剪切周期。 由于问题的繁重时间很大,本文首先定义环CP-网中的一类父顶点,然后基于FVS和FAS给出相应的算法。 最后,实验表明,比较了两种方法的运行时间和表现力。

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