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Automatic topic labelling for text document using ontology of graph-based concepts and dependency graph

机译:使用基于图形的概念和依赖图的本体,自动主题标记文本文档

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摘要

Topic labelling is an important task of text mining. It supports assigning proper topic labels to the text documents. In this paper, we present a novel approach of using graph-based concept matching approach in solving automatic topic labelling task. Our proposed model demonstrates that the quality of automatic topic labelling task for text documents can be improved, in comparison with traditional keyword-based concept matching approach. In this paper, we propose a novel approach of automatic ontology-driven topic labelling. Our proposed model is considered as a semi-supervised approach. It uses existed ontologies as the pre-knowledge base for topic identification in text documents. We performed the experiments on the real-world ACM's documents to show the effectiveness of our proposed model in solving topic labelling task. The experimental results on real-world and standard datasets demonstrate that our proposed model can leverage the output accuracy of topic labelling task in text documents.
机译:主题标签是文本挖掘的重要任务。它支持将正确的主题标签分配给文本文档。在本文中,我们提出了一种使用基于图形的概念匹配方法在解决自动主题标签任务中的新方法。我们提出的模型表明,与传统的基于关键字的概念匹配方法相比,可以改进文本文档的自动主题标签任务的质量。在本文中,我们提出了一种新的自动本体驱动主题标签的方法。我们所提出的模型被视为半监督方法。它使用存在的本体,作为文本文档中主题标识的预知基础。我们对真实世界ACM文件进行了实验,以表明我们提出的模型在解决主题标签任务方面的有效性。现实世界和标准数据集的实验结果表明,我们的建议模型可以利用文本文档中的标签任务的输出准确性。

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