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An Incremental and Distributed Inference Method for Large-Scale Ontologies Based on MapReduce Paradigm

机译:基于MapReduce范式的大规模本体增量式和分布式推理方法

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摘要

With the upcoming data deluge of semantic data, the fast growth of ontology bases has brought significant challenges in performing efficient and scalable reasoning. Traditional centralized reasoning methods are not sufficient to process large ontologies. Distributed reasoning methods are thus required to improve the scalability and performance of inferences. This paper proposes an incremental and distributed inference method for large-scale ontologies by using MapReduce, which realizes high-performance reasoning and runtime searching, especially for incremental knowledge base. By constructing transfer inference forest and effective assertional triples, the storage is largely reduced and the reasoning process is simplified and accelerated. Finally, a prototype system is implemented on a Hadoop framework and the experimental results validate the usability and effectiveness of the proposed approach.
机译:随着语义数据的即将来临的数据泛滥,本体库的快速增长为执行有效和可扩展的推理带来了重大挑战。传统的集中式推理方法不足以处理大型本体。因此,需要分布式推理方法来提高推理的可伸缩性和性能。本文提出了一种利用MapReduce的大规模本体增量分布式推理方法,该方法可以实现高性能的推理和运行时搜索,特别是对于增量知识库。通过构建传输推理林和有效的断言三元组,可以大大减少存储量,并简化和加速推理过程。最后,在Hadoop框架上实现了原型系统,实验结果验证了该方法的可用性和有效性。

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