基于混合深度学习的罗马乌尔都语POS标注器

Alishba Laeeq, Masham Zahid, Abdulwadood Waseem, Muhammad Umair Arshad
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引用次数: 0

摘要

词性标注是自然语言处理领域一个备受关注的研究课题。POS包含许多实际应用,如文本索引、信息检索、语料库标记研究和语言学工作。本文概述了罗马乌尔都语词性标注的多种方法。罗马乌尔都语没有足够的工作和相关所需的语料库。我们已经确定,乌尔都语中有几个词性类,对注释良好的语料库的访问有限。手动验证的语料库已用于评估和报告上述任务的多种方法。我们的实验基于乌尔都语的语境要求,处理了23个独特的词类。我们的实验包括几种基于人工神经网络的方法,如多层神经网络、反馈循环网络和自注意模型。我们使用的语料库不是特定领域的,涵盖了巴基斯坦感兴趣的几个主题。我们的实验在一定程度上成功地展示并超越了许多机器学习和深度学习的基线模型。
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Hybrid deep learning based POS tagger for Roman Urdu
Parts-of-Speech (POS) tagging is a highly encouraged research topic in the field of Natural Language Processing. POS entails numerous practical applications such as text indexing, information retrieval, corpus tagging for research, and linguistic work. This paper outlines multiple methods for part-of-speech tagging in Roman Urdu. Sufficient work and relevant required corpora are not available for Roman Urdu. We have identified that there are several parts-of-speech classes in the Urdu Language, with limited access to a well-annotated corpus. A manually verified corpus has been used to evaluate and report multiple methods for the said task. Our experiments deal with twenty-three unique parts-of-speech classes based on the contextual requirements of the Urdu Language. Our experiments include several methods built upon artificial neural networks, based on approaches such as multi-layered neural networks, feedback recurrent networks, and self-attention models. The corpus we used is not domain specific and covers several topics of Pakistani interest. Our experiments varied to a certain degree in the success demonstrated and outperformed numerous baseline models of machine learning and deep learning.
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