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首页> 外文期刊>Advanced Science Letters >Named Entity Recognition Model Based on Neural Networks Using Parts of Speech Probability and Gazetteer Features
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Named Entity Recognition Model Based on Neural Networks Using Parts of Speech Probability and Gazetteer Features

机译:基于神经网络的名称实体识别模型,使用言语概率和凝视特征

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摘要

Named entities (NEs) are informative elements that refer to proper names, such as the names of people, locations, or organizations. Named entity recognition (NER) is a subtask of information extraction that identifies NEs from texts and classifies them into predefined classes. Manyprevious studies on NER have used word-level features that can be obtained by a morphological analyzer. However, these studies raise error propagation problems and performances of NER models are significantly affected by incorrect results from the underlying morphological analyzer. To alleviatethis problem, we propose a reliable neural network model that uses syllable embedding vectors, parts-of-speech (POS’s) probability vectors, and gazetteer vectors as input features. The proposed model showed good performances in the conducted experiments, with precision = 0.7956 and recallrate = 0.9049.
机译:命名实体(NES)是指代正确名称的信息元素,例如人员,地点或组织的名称。 命名实体识别(ner)是信息提取的子任务,其标识来自文本的NE,并将它们分类为预定义的类。 对ner的许多研究已经使用了可以通过形态分析仪获得的字级功能。 然而,这些研究提出了误差传播问题和NER模型的性能受到底层形态分析仪的不正确结果的显着影响。 为了AlleViateThis问题,我们提出了一种可靠的神经网络模型,它使用音节嵌入向量,语音零件(POS)概率向量和宪录矢量作为输入特征。 所提出的模型在进行的实验中表现出良好的性能,精度= 0.7956和Recallrate = 0.9049。

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