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Lessons learnt from the Named Entity rEcognition and Linking (NEEL) challenge series

机译:从命名实体识别和链接(Neel)挑战&NBSP的经验教训;系列

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摘要

The large number of tweets generated daily is providing decision makers with means to obtain insights into recent events around the globe in near real-time. The main barrier for extracting such insights is the impossibility of manual inspection of a diverse and dynamic amount of information. This problem has attracted the attention of industry and research communities, resulting in algorithms for the automatic extraction of semantics in tweets and linking them to machine readable resources. While a tweet is shallowly comparable to any other textual content, it hides a complex and challenging structure that requires domain-specific computational approaches for mining semantics from it. The NEEL challenge series, established in 2013, has contributed to the collection of emerging trends in the field and definition of standardised benchmark corpora for entity recognition and linking in tweets, ensuring high quality labelled data that facilitates comparisons between different approaches. This article reports the findings and lessons learnt through an analysis of specific characteristics of the created corpora, limitations, lessons learnt from the different participants and pointers for furthering the field of entity recognition and linking in tweets.
机译:每日生成的大量推文是为决策者提供有用手段,以便在近期实时在全球近期进入地球活动的洞察。提取此类见解的主要障碍是手动检查各种和动态的信息量不可能。这个问题引起了行业和研究社区的关注,从而导致推文中自动提取语义的算法并将它们链接到机器可读资源。虽然Tweet与任何其他文本内容呈现较浅,但它隐藏了一个复杂的和具有挑战性的结构,需要从中挖掘专用的挖掘语义的域特定的计算方法。在2013年成立的Neel Chalrenge系列已经促成了集体在领域的新兴趋势,以及标准化基准语料库的定义,并在推文中连接,确保了高质量的标记数据,这有助于不同方法之间的比较。本文通过分析所创建的语料库,限制,从不同参与者的教训以及指针进一步促进实体识别领域并在推文中进行链接的指针来报告发现和经验教训。

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