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Embedding Semantic Similarity in Tree Kernels for Domain Adaptation of Relation Extraction

机译:嵌入树内嵌入的语义相似性用于关系提取的域改性

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Relation Extraction (RE) is the task of extracting semantic relationships between entities in text. Recent studies on relation extraction are mostly supervised. The clear drawback of supervised methods is the need of training data: labeled data is expensive to obtain, and there is often a mismatch between the training data and the data the system will be applied to. This is the problem of domain adaptation. In this paper, we propose to combine (ⅰ) term generalization approaches such as word clustering and latent semantic analysis (LSA) and (ⅱ) structured kernels to improve the adaptability of relation extractors to new text genres/domains. The empirical evaluation on ACE 2005 domains shows that a suitable combination of syntax and lexical generalization is very promising for domain adaptation.
机译:关系提取(RE)是在文本中提取实体之间的语义关系的任务。最近关于关系提取的研究主要是监督。监督方法的清晰缺点是需要训练数据:标记数据昂贵,并且在训练数据和系统应用于数据之间通常之间存在不匹配。这是域适应的问题。在本文中,我们建议结合(Ⅰ)术语泛化方法,如词聚类和潜在语义分析(LSA)和(Ⅱ)结构化核,以提高关系提取器对新文本类型/域的适应性。 ACE 2005域的实证评估表明,语法和词汇概括的合适组合对于域适应非常有前途。

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