A Comparative Study of Dictionary-based and Machine Learning-based Named Entity Recognition in Pashto

R. Momand, Shakirullah Waseeb, Ahmad Masood Latif Rai
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引用次数: 1

Abstract

Information Extraction (IE) is the process of extracting structured information from unstructured text using natural language processing (NLP). One important sub-task of IE is the extraction of names of persons, places, and organizations, called Named Entity Recognition (NER). NER plays an important role in many NLP applications such as Question Answering, Machine Translation, and Text Summarization. It has been widely studied for high-resource languages like English. However, no research has taken place in this regard for Pashto. We hypothesized that based on the research done for English and other languages in the area of NER a system can be developed for Pashto. We have developed two NER systems for detecting names of persons, places, and organizations in Pashto text. First, a dictionary-based NER that uses three dictionaries containing names of persons, locations, and organizations, respectively. Second, a learning-based approach that uses Hidden Markov Model (HMM) for the task. We have evaluated both systems on a dataset collected from sports news. Our evaluation showed F-Measure of 82% for HMM and 60% for dictionary-based NER. Our findings highlight that HMM outperforms dictionary based NER.
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普什图语基于词典和基于机器学习的命名实体识别的比较研究
信息抽取(IE)是利用自然语言处理(NLP)从非结构化文本中提取结构化信息的过程。IE的一个重要子任务是提取人员、地点和组织的名称,称为命名实体识别(NER)。NER在问答、机器翻译、文本摘要等NLP应用中发挥着重要作用。人们对英语等资源丰富的语言进行了广泛的研究。然而,普什图语在这方面还没有进行过研究。基于对英语和其他语言在NER领域所做的研究,我们假设可以为普什图语开发一个系统。我们开发了两个NER系统,用于检测普什图语文本中的人物、地点和组织的名称。首先是基于字典的NER,它使用三个字典,分别包含人员、地点和组织的名称。第二,基于学习的方法,使用隐马尔可夫模型(HMM)来完成任务。我们在从体育新闻中收集的数据集上对这两个系统进行了评估。我们的评估显示,HMM的F-Measure为82%,而基于词典的NER为60%。我们的研究结果强调HMM优于基于字典的NER。
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