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Knowledge Graph Construction from Unstructured Text with Applications to Fact Verification and Beyond

机译:从非结构化文本的知识图形建设与应用程序以事实验证及超越

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We present a scalable, open-source platform that "distills" a potentially large text collection into a knowledge graph. Our platform takes documents stored in Apache Solr and scales out the Stanford CoreNLP toolkit via Apache Spark integration to extract mentions and relations that are then ingested into the Neo4j graph database. The raw knowledge graph is then enriched with facts extracted from an external knowledge graph. The complete product can be manipulated by various applications using Neo4j's native Cypher query language: We present a subgraph-matching approach to align extracted relations with external facts and show that fact verification, locating textual support for asserted facts, detecting inconsistent and missing facts, and extracting distantly-supervised training data can all be performed within the same framework.
机译:我们提供了一个可扩展的开源平台,即“蒸馏”一个潜在的大文本收集到知识图形中。 我们的平台将存储在Apache Solr中的文档,并通过Apache Spark Integration缩放Stanford Corenlp Toolkit,以提取在Neo4J图数据库中摄取的提升和关系。 然后,原始知识图是从外部知识图中提取的事实中富集。 可以使用Neo4J的本机Cypeher查询语言进行各种应用程序操作,我们提出了一种与外部事实的提取关系的子图匹配方法,并显示了对断言事实的文本支持,检测不一致和丢失的事实 提取遥控监督的培训数据都可以在同一框架内执行。

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