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首页> 外文期刊>IEEE Transactions on Knowledge and Data Engineering >CoRE: A Context-Aware RelationExtraction Method for Relation Completion
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CoRE: A Context-Aware RelationExtraction Method for Relation Completion

机译:CoRE:一种用于关系完成的上下文感知关系提取方法

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摘要

We identify relation completion (RC) as one recurring problem that is central to the success of novel big data applications such as Entity Reconstruction and Data Enrichment. Given a semantic relation ${cal R}$, RC attempts at linking entity pairs between two entity lists under the relation ${cal R}$. To accomplish the RC goals, we propose to formulate search queries for each query entity $alpha$ based on some auxiliary information, so that to detect its target entity $beta$ from the set of retrieved documents. For instance, a pattern-based method (PaRE) uses extracted patterns as the auxiliary information in formulating search queries. However, high-quality patterns may decrease the probability of finding suitable target entities. As an alternative, we propose CoRE method that uses context terms learned surrounding the expression of a relation as the auxiliary information in formulating queries. The experimental results based on several real-world web data collections demonstrate that CoRE reaches a much higher accuracy than PaRE for the purpose of RC.
机译:我们将关系完成(RC)确定为一个反复出现的问题,这对于新型大数据应用程序(例如实体重构和数据充实)的成功至关重要。给定语义关系$ {cal R} $,RC尝试在关系$ {cal R} $下的两个实体列表之间链接实体对。为了实现RC目标,我们建议根据一些辅助信息为每个查询实体$ alpha $制定搜索查询,以便从检索到的文档集中检测其目标实体$ beta $。例如,基于模式的方法(PaRE)在制定搜索查询时将提取的模式用作辅助信息。但是,高质量模式可能会降低找到合适目标实体的可能性。作为替代方案,我们提出了CoRE方法,该方法使用围绕关系表达学习的上下文术语作为制定查询时的辅助信息。基于多个实际Web数据集的实验结果表明,就RC而言,CoRE的准确性比PaRE更高。

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