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Entity Attribute Relation Extraction with Attribute-Aware Embeddings

机译:实体属性关系与属性感知嵌入式提取

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Entity-attribute relations are a fundamental component for building large-scale knowledge bases, which are widely employed in modern search engines. However, most such knowledge bases are manually curated, covering only a small fraction of all attributes, even for common entities. To improve the precision of model-based entity-attribute extraction, we propose attribute-aware embeddings, which embeds entities and attributes in the same space by the similarity of their attributes. Our model, EANET, learns these embeddings by representing entities as a weighted sum of their attributes and concatenates these embeddings to mention level features. EANET achieves up to 91% classification accuracy, outperforming strong baselines and achieves 83% precision on manually labeled high confidence extractions, outperforming Biperpedia (Gupta et al., 2014), a previous state-of-the-art for large scale entity-attribute extraction.
机译:实体属性关系是建立大规模知识库的基本组件,这些基础广泛采用现代搜索引擎。然而,大多数此类知识库是手动策划,甚至只为共同实体覆盖所有属性的一小部分。为了提高基于模型的实体属性提取的精度,我们提出了属性感知eMbeddings,它通过其属性的相似性嵌入同一空间中的实体和属性。我们的模型Ieanet,通过表示实体作为其属性的加权之和并连接这些嵌入物来提及级别功能来了解这些嵌入式。 EANET达到了高达91%的分类准确性,优于强大的基线,并在手动标记的高置信处取得了83%的精确度,表现优于Biperpedia(Gupta等,2014),以前的大规模实体属性萃取。

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