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A Novel Convolution Kernel Model for Chinese Relation Extraction Based on Semantic Feature and Instances Partition

机译:基于语义特征和实例划分的中文关系抽取卷积核模型

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Relation extraction is an important part of the information extraction. Nowadays, researches focus on tree kernels based solutions that employ different tree structures and kernel functions. since those solutions fail to employ semantic feature effectively and have a low Recall, this paper proposes a novel convolution kernel model based on semantic feature and instances partition. This model involves synonym information as a node in a parse tree, varies partial trees as instances partition and uses the convolution tree kernel function for similarity calculation which outputs data for SVM classifier. the experimental results show that the uses of synonyms and instances partition improve the performance of relation extraction.
机译:关系提取是信息提取的重要部分。如今,研究集中在基于树核的解决方案上,这些解决方案采用了不同的树结构和内核功能。由于这些解决方案不能有效地利用语义特征并且召回率较低,因此本文提出了一种基于语义特征和实例划分的卷积核模型。该模型将同义词信息作为解析树中的节点,将部分树作为实例分区而变化,并使用卷积树内核函数进行相似度计算,该函数为SVM分类器输出数据。实验结果表明,同义词和实例分区的使用提高了关系提取的性能。

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