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A Learning Method based on Bisimulation in Inconsistent Knowledge Systems

机译:不一致知识系统中基于双仿真的学习方法

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Inconsistencies may naturally occur in the considered application domains in Artificial Intelligence, for example as a result of data mining works in distributed sources. In order to solve inconsistent knowledge, several paraconsistent description logics have been proposed. In this paper, we face the problem of concept learning for an inconsistent knowledge base system based on bisimulation. This algorithm allows learning a concept from a training information system in a paraconsistent descriptive logic system with a set of positive items, negative items, and inconsistent items. Here, we present a system for learning concept in an inconsistent knowledge base and discuss preliminary experimental results obtained in the electronic application domain.
机译:例如,由于分布式源中数据挖掘工作的结果,在考虑的人工智能应用领域中自然会发生不一致。为了解决不一致的知识,已经提出了几种超一致的描述逻辑。在本文中,我们面对基于双仿真的不一致知识库系统的概念学习问题。该算法允许在具有一组肯定项,否定项和不一致项的超一致描述逻辑系统中从训练信息系统学习概念。在这里,我们提出了一个用于在不一致的知识库中学习概念的系统,并讨论了在电子应用领域获得的初步实验结果。

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