Performance Measurement of Multiple Supervised Learning Algorithms for Bengali News Headline Sentiment Classification

Md. Majedul Islam, Abu Kaisar Mohammad Masum, Md. Golam Rabbani, Raihana Zannat, Mushfiqur Rahman
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引用次数: 3

Abstract

The reading newspaper is a common habit in today's life. Before reading news article all are focused on the news headline. Understanding the meaning of news headline everybody can easily identify the news types. That means the containing news article provides positive or negative news. Analysis of the sentiment of the news headline is a good solution for this kind of problem. Sentiment Analysis is a chief part of Natural Language Processing. It mines any kinds of opinion and set the sentiment of any text. We proposed a method for Bengali news headline sentiment measurement with different kinds of the supervised learning algorithm and their performance. Firstly, we set sentiment of each news headline then used the classification method to predicting the news headline which was containing a positive or negative headline. After all, Bengali is one of the most used languages in this world. A lot of research work done previously in a different language but very few in the Bengali language. So, increasing the Bengali language research resource need to develop different kinds of tools and technology.
多种监督学习算法在孟加拉语新闻标题情感分类中的性能度量
读报是当今生活中的一个普遍习惯。在阅读新闻之前,所有的注意力都集中在新闻标题上。了解新闻标题的含义,每个人都可以很容易地识别新闻类型。这意味着包含新闻的文章提供了积极或消极的新闻。分析新闻标题的情绪是解决这类问题的一个很好的方法。情感分析是自然语言处理的重要组成部分。它挖掘各种观点,设定任何文本的情感。本文提出了一种基于不同监督学习算法的孟加拉语新闻标题情感度量方法及其性能。首先,我们设置每个新闻标题的情绪,然后使用分类方法预测新闻标题包含正面或负面的标题。毕竟,孟加拉语是世界上使用最多的语言之一。以前有很多研究工作是用另一种语言完成的,但很少用孟加拉语。因此,增加孟加拉语研究资源需要开发不同类型的工具和技术。
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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