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A General Framework for Graph Matching and Its Application in Ontology Matching

机译:图匹配的通用框架及其在本体匹配中的应用

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Graph matching (GM) is a fundamental problem in computer science. Two issues severely limit the application of GM algorithms. (1) Due to the NP-hard nature, providing a good approximation solution for GM problem is challenging. (2) With large scale data, existing GM algorithms can only process graphs with several hundreds of nodes. We propose a matching framework, which contains nine different objective functions for describing, constraining, and optimizing GM problems. By holistically utilizing these objective functions, we provide GM approximated solutions. Moreover, a fragmenting method for large GM problem is introduced to our framework which could increase the scalability of the GM algorithm. The experimental results show that the proposed framework improves the accuracy when compared to other methods. The experiment for the fragmenting method unveils an innovative application of GM algorithms to ontology matching. It achieves the best performance in matching two large real-world ontologies compared to existing approaches.
机译:图匹配(GM)是计算机科学中的一个基本问题。两个问题严重限制了GM算法的应用。 (1)由于NP的坚硬性质,为GM问题提供良好的近似解是一项挑战。 (2)对于大规模数据,现有的GM算法只能处理具有数百个节点的图。我们提出了一个匹配框架,该框架包含九个不同的目标函数,用于描述,约束和优化GM问题。通过全面利用这些目标函数,我们提供了GM近似解决方案。此外,在我们的框架中引入了一种针对大型GM问题的分段方法,该方法可以提高GM算法的可扩展性。实验结果表明,与其他方法相比,该框架提高了精度。片段化方法的实验揭示了GM算法在本体匹配中的创新应用。与现有方法相比,它在匹配两个大型现实世界时可获得最佳性能。

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