用HMM开发阿萨姆语词性标注器

Surjya Kanta Daimary, Vishal Goyal, Madhumita Barbora, Umrinderpal Singh
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引用次数: 4

摘要

本文介绍了基于隐马尔可夫模型的阿萨姆语词性标注器的研究工作。多年来,西方和南亚语言已经完成了许多语言处理任务。然而,阿萨姆语的工作做得很少。因此,从这个角度来看,使用随机方法的阿萨姆邦POS标记器正在开发中。阿萨姆语是一种词序自由、凝集度高、形态丰富的语言,因此开发出准确率高的词性标注器将有助于阿萨姆语其他自然语言处理任务的开发。在这项工作中,使用了一个包含271,890个单词的带注释的语料库和一个由38个标签组成的BIS标签集。模型训练了256,690个单词,剩下的单词用于测试。该系统获得了89.21%的准确率,并与其他已有的随机模型进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of Part of Speech Tagger for Assamese Using HMM
This article presents the work on the Part-of-Speech Tagger for Assamese based on Hidden Markov Model (HMM). Over the years, a lot of language processing tasks have been done for Western and South-Asian languages. However, very little work is done for Assamese language. So, with this point of view, the POS Tagger for Assamese using Stochastic Approach is being developed. Assamese is a free word-order, highly agglutinate and morphological rich language, thus developing POS Tagger with good accuracy will help in development of other NLP task for Assamese. For this work, an annotated corpus of 271,890 words with a BIS tagset consisting of 38 tag labels is used. The model is trained on 256,690 words and the remaining words are used in testing. The system obtained an accuracy of 89.21% and it is being compared with other existing stochastic models.
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