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OpenKI: Integrating Open Information Extraction and Knowledge Bases with Relation Inference

机译:OpenKi:与关系推断集成开放信息提取和知识库

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In this paper, we consider advancing web-scale knowledge extraction and alignment by integrating OpenIE extractions in the form of (subject, predicate, object) triples with Knowledge Bases (KB). Traditional techniques from universal schema and from schema mapping fall in two extremes: either they perform instance-level inference relying on embedding for (subject, object) pairs, thus cannot handle pairs absent in any existing triples; or they perform predicate-level mapping and completely ignore background evidence from individual entities, thus cannot achieve satisfying quality. We propose OpenKI to handle sparsity of Ope-nIE extractions by performing instance-level inference: for each entity, we encode the rich information in its neighborhood in both KB and OpenIE extractions, and leverage this information in relation inference by exploring different methods of aggregation and attention. In order to handle unseen entities, our model is designed without creating entity-specific parameters. Extensive experiments show that this method not only significantly improves state-of-the-art for conventional OpenIE extractions like ReVerb, but also boosts the performance on OpenIE from semi-structured data, where new entity pairs are abundant and data are fairly sparse.
机译:在本文中,我们考虑通过以知识库(KB)的(谓词,谓词,物体)三元组形式的Openie提取集成Openie提取来推进Web级知识提取和对齐。来自Universal Schema的传统技术和模式映射下降两个极端:它们执行依赖于嵌入(受试者,对象)对的实例级推断,因此无法处理任何现有三元组中的对。或者他们执行谓词级映射并完全忽略各个实体的背景证据,因此无法实现满意的质量。我们提出Openki通过执行实例级推断来处理Ope-Nie提取的稀疏性:对于每个实体,我们通过探索不同的聚合方法,在KB和Openie提取中编码其附近的丰富信息,并通过探索不同的聚合方法来利用关系推断。和注意力。为了处理取消实体,我们的模型是在不创建特定实体的参数的情况下设计的。广泛的实验表明,这种方法不仅显着提高了传统的Openie提取的最先进,而且还可以从半结构数据中提升Openie上的性能,其中新实体对丰富,数据相当稀疏。

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