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Enhancing Online Knowledge Graph Population with Semantic Knowledge

机译:通过语义知识增强在线知识图形人口

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Knowledge Graphs (KG) are becoming essential to organize, represent and store the world's knowledge, but they still rely heavily on humanly-curated structured data. Information Extraction (IE) tasks, like disambiguating entities and relations from unstructured text, are key to automate KG population. However, Natural Language Processing (NLP) methods alone can not guarantee the validity of the facts extracted and may introduce erroneous information into the KG. This work presents an end-to-end system that combines Semantic Knowledge and Validation techniques with NLP methods, to provide KG population of novel facts from clustered news events. The contributions of this paper are two-fold: First, we present a novel method for including entity-type knowledge into a Relation Extraction model, improving Fl-Score over the baseline with TACRED and TypeRE datasets. Second, we increase the precision by adding data validation on top of the Relation Extraction method. These two contributions are combined in an industrial pipeline for automatic KG population over aggregated news, demonstrating increased data validity when performing online learning from unstructured web data. Finally, the TypeRE and AggregatedNewsRE datasets build to benchmark these results are also published to foster future research in this field.
机译:知识图表(千克)正变成组织,代表和存储世界知识,但它们仍然依赖于人类策划的结构化数据。信息提取(即)任务,如消除歧义实体和来自非结构化文本的关系,是自动化kg人口的关键。然而,单独的自然语言处理(NLP)方法不能保证提取的事实的有效性,并且可能将错误的信息引入KG。这项工作介绍了一个端到端系统,将语义知识和验证技术与NLP方法相结合,提供了来自集群新闻事件的KG人口。本文的贡献是两倍:首先,我们提出了一种新的方法,包括实体型知识在关系提取模型中,通过TACRED和TYPERS数据集改进了基线的FL-Scress。其次,我们通过在关系提取方法的顶部添加数据验证来提高精度。这两种贡献在工业管道中组合在汇总新闻中的自动千克人口,在从非结构化网络数据执行在线学习时展示了增加的数据有效性。最后,Typere和AggregateDnewsre数据集建立以基准测试这些结果也出版,以促进该领域的未来研究。

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