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GRAPH BASED MULTI-VIEW LEARNING FOR SEMANTIC RELATION EXTRACTION

机译:基于图的多视图语义关系学习

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摘要

To understand text contents better, many research efforts have been made exploring detection and classification of the semantic relation between a concept pair. As described herein, we present our study of a semantic relation classification task as a graph-based multi-view learning task. Semantic relation can be naturally represented from two views: entity pair view and context view. Then we construct a weighted complete graph for each view and a bipartite graph to combine information of different views. An instance’s label score is propagated on each intra-view graph and inter-view graph. The proposed algorithm is evaluated using the Concept Description Language for Natural Language (CDL) corpus and SemEval-2007 Task 04 dataset. The experimental results validate its effectiveness.
机译:为了更好地理解文本内容,已经进行了许多研究工作来探索概念对之间的语义关系的检测和分类。如本文所述,我们提出了对语义关系分类任务的研究,作为基于图的多视图学习任务。语义关系可以自然地从两个视图表示:实体对视图和上下文视图。然后,我们为每个视图构造一个加权完整图和一个二部图以组合不同视图的信息。实例的标签分数会在每个视图内图和视图间图上传播。使用自然语言概念描述语言(CDL)语料库和SemEval-2007 Task 04数据集对提出的算法进行了评估。实验结果验证了其有效性。

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