Parts-of-Speech (PoS) Analysis and Classification of Various Text Genres

Akshay Mendhakar, Darshan H S
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Abstract

Abstract Natural language processing (NLP) has made significant leaps over the past two decades due to the advancements in machine learning algorithms. Text classification is pivotal today due to a wide range of digital documents. Multiple feature classes have been proposed for classification by numerous researchers. Genre classification tasks form the basis for advanced techniques such as native language identification, readability assessment, author identification etc. These tasks are based on the linguistic composition and complexity of the text. Rather than extracting hundreds of variables, a simple premise of text classification using only the text feature of parts-of-speech (PoS) is presented here. A new dataset gathered from Project Gutenberg is highlighted in this study. PoS analysis of each text in the created dataset was carried out. Further grouping of these texts into fictional and non-fictional texts was carried out to measure their classification accuracy using the artificial neural networks (ANN) classifier. The results indicate an overall classification accuracy of 98 and 35 % for the genre and sub-genre classification, respectively. The results of the present study highlight the importance of PoS not only as an important feature for text processing but also as a sole text feature classifier for text classification.
语音部分 (PoS) 分析和各种文本类型的分类
摘要 由于机器学习算法的进步,自然语言处理(NLP)在过去二十年里取得了重大飞跃。如今,由于数字文档种类繁多,文本分类变得至关重要。许多研究人员提出了多种分类特征。体裁分类任务是母语识别、可读性评估、作者识别等高级技术的基础。这些任务基于文本的语言构成和复杂性。与提取数以百计的变量相比,本文提出了一个仅使用语音部分(PoS)文本特征进行文本分类的简单前提。本研究重点介绍了从古腾堡计划收集的新数据集。对创建的数据集中的每个文本都进行了 PoS 分析。将这些文本进一步分为虚构文本和非虚构文本,使用人工神经网络(ANN)分类器测量其分类准确性。结果表明,体裁和子体裁分类的总体分类准确率分别为 98% 和 35%。本研究的结果凸显了 PoS 的重要性,它不仅是文本处理的重要特征,也是文本分类的唯一文本特征分类器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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