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A Knowledge Graph Based Solution for Entity Discovery and Linking in Open-Domain Questions

机译:基于知识图的实体发现解决方案和开放式域问题中的链接

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Named entity discovery and linking is the fundamental and core component of question answering. In Question Entity Discovery and Linking (QEDL) problem, traditional methods are challenged because multiple entities in one short question are difficult to be discovered entirely and the incomplete information in short text makes entity linking hard to implement. To overcome these difficulties, we proposed a knowledge graph based solution for QEDL and developed a system consists of Question Entity Discovery (QED) module and Entity Linking (EL) module. The method of QED module is a tradeoff and ensemble of two methods. One is the method based on knowledge graph retrieval, which could extract more entities in questions and guarantee the recall rate, the other is the method based on Conditional Random Field (CRF), which improves the precision rate. The EL module is treated as a ranking problem and Learning to Rank (LTR) method with features such as semantic similarity, text similarity and entity popularity is utilized to extract and make full use of the information in short texts. On the official dataset of a shared QEDL evaluation task, our approach could obtain 64.44% F1 score of QED and 64.86% accuracy of EL, which ranks the 2nd place and indicates its practical use for QEDL problem.
机译:命名实体发现和链接是问题应答的基本和核心组成部分。在问题实体发现和链接(QEDL)问题中,传统方法受到质疑,因为难以完全发现一个简短的问题中的多个实体,并且短文本中的不完整信息使实体链接难以实现。为了克服这些困难,我们提出了一种基于QEDL的基于知识图,并且开发了一个系统由问题实体发现(QED)模块和实体链接(EL)模块组成。 QED模块的方法是两种方法的权衡和集合。一个是基于知识图检索的方法,可以提取问题的更多实体并保证召回率,另一个是基于条件随机字段(CRF)的方法,这提高了精度速率。 EL模块被视为排名问题,并学习具有语义相似性等特征的秩(LTR)方法,文本相似性和实体流行度被用于提取和充分利用短文本中的信息。在共享QEDL评估任务的官方数据集上,我们的方法可以获得QED的64.44%F1分数和el的64.86%的准确性,这对第二个位置进行排名并表明其对QEDL问题的实际用途。

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