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Weighted Generalized Fuzzy Petri Nets and Rough Sets for Knowledge Representation and Reasoning

机译:知识表示和推理的加权广义模糊Petri网和粗糙集

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In this paper, we consider the decision tables provided by experts in the field. We construct an algorithm for executing a highly parallel program represented by a fuzzy Petri net from a given decision table. The constructed net allows objects to be identified in decision tables to the extent that appropriate decisions can be made. Conditional attribute values given by experts are propagated by the net at maximum speed. This is done by properly organizing the net's work. Our approach is based on rough set theory and weighted generalized fuzzy Petri nets.
机译:在本文中,我们考虑了该领域专家提供的决策表。我们构造了一种算法,用于从给定的决策表执行由模糊Petri网表示的高度并行程序。所构建的网络允许在可以做出适当决策的范围内在决策表中标识对象。专家给出的条件属性值以最大速度通过网络传播。这是通过适当地组织网络的工作来完成的。我们的方法基于粗糙集理论和加权广义模糊Petri网。

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