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Scalable graph-based method for individual named entity identification

机译:基于可伸缩图的个人命名实体识别方法

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In this paper, we consider the named entity linking (NEL) problem. We assume a set of queries, named entities, that have to be identified within a knowledge base. This knowledge base is represented by a text database paired with a semantic graph, endowed with a classification of entities (ontology). We present state-of-the-art methods in NEL, and propose a new method for individual identification requiring few annotated data samples. We demonstrate its scalability and performance over standard datasets, for several ontology configurations. Our approach is well-motivated for integration in real systems. Indeed, recent deep learning methods, despite their capacity to improve experimental precision, require lots of parameter tuning along with large volume of annotated data.
机译:在本文中,我们考虑了命名实体链接(NEL)问题。我们假设必须在知识库中标识一组名为实体的查询。该知识库由与语义图配对的文本数据库表示,该语义图具有实体分类(本体)。我们介绍了NEL中的最新方法,并提出了一种用于个人识别的新方法,该方法几乎不需要带注释的数据样本。我们针对几种本体配置论证了其在标准数据集上的可扩展性和性能。我们的方法非常适合在实际系统中进行集成。实际上,尽管能够提高实验精度,但最近的深度学习方法仍需要大量参数调整以及大量带注释的数据。

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