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Collective Named Entity Disambiguation using Graph Ranking and Clique Partitioning Approaches

机译:集体命名实体歧义使用曲线图排名和Clique分区方法

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Disambiguating named entities (NE) in running text to their correct interpretations in a specific knowledge base (KB) is an important problem in NLP. This paper presents two collective disambiguation approaches using a graph representation where possible KB candidates for NE textual mentions are represented as nodes and the coherence relations between different NE candidates are represented by edges. Each node has a local confidence score and each edge has a weight. The first approach uses Page-Rank (PR) to rank all nodes and selects a candidate based on PR score combined with local confidence score. The second approach uses an adapted Clique Partitioning technique to find the most weighted clique and expands this clique until all NE textual mentions are disambiguated. Experiments on 27,819 NE textual mentions show the effectiveness of both approaches, outperforming both baseline and state-of-the-art approaches.
机译:在特定知识库(KB)中,在运行文本中歧视命名实体(NE)在其正确的解释中(KB)是NLP中的一个重要问题。 本文呈现了使用图形表示的两个集体消歧方法,其中NE文本提及的可能的KB候选表示为节点,并且不同NE候选之间的相干关系由边缘表示。 每个节点都有一个局部置信度分数,每个边缘都有重量。 第一个方法使用页面(PR)对所有节点进行排序,并基于PR分数与局部置信度分数选择一个候选者。 第二种方法使用适应的Clique分区技术来查找最加权的集团,并扩展此集团,直到所有NE文本提及消除消除歧义。 在27,819个文本提到的实验表明两种方法的有效性,优于基线和最先进的方法。

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