An Evidential Classifier with Multiple Pre-trained Language Models for Nested Named Entity Recognition

Haitao Liu, Jihua Song, Weiming Peng
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引用次数: 0

Abstract

Nested named entity recognition (NER) is an important and challenging task in information extraction. One effective approach is to detect regions in sentences that are later classified by neural networks. Since pre-trained language models (PLMs) were proposed, nested NER models have benefited a lot from them. However, it is common that only one PLM is utilized for a given model, and the performance varies with different PLMs. We note that there exist some conflicting predictions which lead to the final variation. Thus, there is still room for investigation as to whether a model could achieve even better performance by conducting a comprehensive analysis of results from various PLMs. In this paper, we propose an evidential classifier with multiple PLMs for nested NER. First, the well-known deep exhaustive model is trained separately with different PLMs, whose predictions are then treated as pieces of evidence that can be represented in the framework of Dempster-Shafer theory. Finally, the pooled evidence is obtained using a combination rule, based on which the inference is performed. Experiments are conducted on the GENIA dataset, and detailed analysis demonstrates the merits of our model.
基于多个预训练语言模型的嵌套命名实体识别证据分类器
嵌套命名实体识别(NER)是信息抽取中的一项重要且具有挑战性的任务。一种有效的方法是检测句子中的区域,然后用神经网络进行分类。自预训练语言模型(plm)提出以来,嵌套NER模型从中获益良多。然而,对于给定的模型,通常只使用一个PLM,并且性能随不同的PLM而变化。我们注意到,存在一些相互矛盾的预测,导致最终的变化。因此,对于一个模型是否可以通过对各种plm的结果进行综合分析来获得更好的性能,仍然有研究的余地。在本文中,我们提出了一个具有多个plm的证据分类器用于嵌套NER。首先,用不同的plm分别训练著名的深度穷举模型,然后将其预测作为可以在Dempster-Shafer理论框架中表示的证据片段。最后,使用组合规则获得汇集的证据,并在此基础上进行推理。在GENIA数据集上进行了实验,详细的分析证明了该模型的优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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