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Pocket Knowledge Base Population

机译:掌上知识库

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摘要

Existing Knowledge Base Population methods extract relations from a closed relational schema with limited coverage, leading to sparse KBs. We propose Pocket Knowledge Base Population (PKBP), the task of dynamically constructing a KB of entities related to a query and finding the best characterization of relationships between entities. We describe novel Open Information Extraction methods which leverage the PKB to find informative trigger words. We evaluate using existing KBP shared-task data as well as new annotations collected for this work. Our methods produce high quality KBs from just text with many more entities and relationships than existing KBP systems.
机译:现有的知识库填充方法从覆盖范围有限的封闭关系模式中提取关系,从而导致知识库稀疏。我们提出了“袖珍知识库”(PKBP),它是动态构建与查询相关的实体KB并查找实体之间关系的最佳表征的任务。我们描述了新颖的开放信息提取方法,该方法利用PKB来找到信息丰富的触发词。我们评估使用现有的KBP共享任务数据以及为此工作收集的新注释。与现有的KBP系统相比,我们的方法仅从具有更多实体和关系的文本中生成高质量的KB。

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