A Sentiment Classification Approach of Sentences Clustering in Webcast Barrages

Jun Li, Guimin Huang, Ya Zhou
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引用次数: 6

Abstract

Conducting sentiment analysis and opinion mining are challenging tasks in natural language processing. Many of the sentiment analysis and opinion mining applications focus on product reviews, social media reviews, forums and microblogs whose reviews are topic-similar and opinion-rich. In this paper, we try to analyze the sentiments of sentences from online webcast reviews that scroll across the screen, which we call live barrages. Contrary to social media comments or product reviews, the topics in live barrages are more fragmented, and there are plenty of invalid comments that we must remove in the preprocessing phase. To extract evaluative sentiment sentences, we proposed a novel approach that clusters the barrages from the same commenter to solve the problem of scattering the information for each barrage. The method developed in this paper contains two subtasks: in the data preprocessing phase, we cluster the sentences from the same commenter and remove unavailable sentences; and we use a semi-supervised machine learning approach, the naïve Bayes algorithm, to analyze the sentiment of the barrage. According to our experimental results, this method shows that it performs well in analyzing the sentiment of online webcast barrages.
网络广播中句子聚类的情感分类方法
情感分析和意见挖掘是自然语言处理中具有挑战性的任务。许多情感分析和意见挖掘应用侧重于产品评论、社交媒体评论、论坛和微博,这些评论与主题相似,观点丰富。在本文中,我们试图分析在线网络直播评论中滚动在屏幕上的句子的情感,我们称之为实时弹幕。与社交媒体评论或产品评论相反,实时弹幕中的主题更加碎片化,并且有大量无效评论我们必须在预处理阶段删除。为了提取评价性情感句,我们提出了一种新的方法,将来自同一评论者的弹幕聚类,以解决每个弹幕的信息分散问题。本文提出的方法包含两个子任务:在数据预处理阶段,我们将来自同一评论者的句子聚类并去除不可用的句子;我们使用半监督机器学习方法,naïve贝叶斯算法,来分析弹幕的情绪。实验结果表明,该方法可以很好地分析网络直播的情感。
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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