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首页> 外文期刊>International journal on Semantic Web and information systems >Genetic-Fuzzy Programming Based Linkage Rule Miner (GFPLR-Miner) for Entity Linking in Semantic Web
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Genetic-Fuzzy Programming Based Linkage Rule Miner (GFPLR-Miner) for Entity Linking in Semantic Web

机译:基于遗传模糊编程的联系规则矿工(GFPLRR-MINER)在语义网络中链接的实体

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摘要

This article describes how semantic web data sources follow linked data principles to facilitate efficient information retrieval and knowledge sharing. These data sources may provide complementary, overlapping or contradicting information. In order to integrate these data sources, the authors perform entity linking. Entity linking is an important task of identifying and linking entities across data sources that refer to the same real-world entities. In this work, they have proposed a genetic fuzzy approach to learn linkage rules for entity linking. This method is domain independent, automatic and scalable. Their approach uses fuzzy logic to adapt mutation and crossover rates of genetic programming to ensure guided convergence. The authors' experimental evaluation demonstrates that our approach is competitive and make significant improvements over state of the art methods.
机译:本文介绍了语义Web数据源如何遵循链接数据原则,以便于有效的信息检索和知识共享。 这些数据源可以提供互补,重叠或矛盾的信息。 为了集成这些数据源,作者执行实体链接。 实体链接是识别和链接跨数据源的实体的重要任务,这些源引用相同的真实实体。 在这项工作中,他们提出了一种基因模糊方法来学习实体链接的联系规则。 此方法是域独立,自动和可扩展。 它们的方法使用模糊逻辑来适应遗传编程的突变和交叉速率,以确保引导收敛。 作者的实验评价表明,我们的方法是竞争力的,并对最先进的方法进行重大改进。

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