HMM-Based Dari Named Entity Recognition for Information Extraction

Ghezal Ahmad Jan Zia, Ahmad Zia Sharif
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引用次数: 1

Abstract

Named Entity Recognition (NER) is the fundamental subtask of information extraction systems that labels elements into categories such as persons, organizations or locations. The task of NER is to detect and classify words that are parts of sentences. This paper describes a statistical approach to modeling NER in Dari language. Dari and Pashto are low resources languages, spoken as official languages in Afghanistan. Unlike other languages, named entity detection approaches differ in Dari. Since in Dari language there is no capitalization for identifying named entities. We seek to bridge the gap between Dari linguistic structure and supervised learning model that predict the sequences of words paired with a sequence of tags as outputs. Dari corpus was developed from the collection of news, reports and articles based on the original orthographic structure of the Dari language. The experimental result of named entity recognition performance presents 94% accuracy.
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基于hmm的达里命名实体识别信息提取
命名实体识别(NER)是信息提取系统的基本子任务,它将元素标记为诸如人员、组织或位置之类的类别。NER的任务是检测和分类作为句子组成部分的单词。本文描述了一种用统计方法对达里语言进行NER建模的方法。达里语和普什图语是低资源语言,在阿富汗作为官方语言使用。与其他语言不同,命名实体检测方法在Dari中有所不同。因为在达里语言中,没有大写字母来标识命名实体。我们试图弥合达里语言结构和监督学习模型之间的差距,该模型预测单词序列与标记序列配对作为输出。达里语料库是根据达里语言的原始正字法结构,从新闻、报道和文章的集合发展而来的。实验结果表明,命名实体识别准确率达到94%。
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