Performance analysis of Ensemble methods on Twitter sentiment analysis using NLP techniques

M. Kanakaraj, R. R. Guddeti
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引用次数: 96

Abstract

Mining opinions and analyzing sentiments from social network data help in various fields such as even prediction, analyzing overall mood of public on a particular social issue and so on. This paper involves analyzing the mood of the society on a particular news from Twitter posts. The key idea of the paper is to increase the accuracy of classification by including Natural Language Processing Techniques (NLP) especially semantics and Word Sense Disambiguation. The mined text information is subjected to Ensemble classification to analyze the sentiment. Ensemble classification involves combining the effect of various independent classifiers on a particular classification problem. Experiments conducted demonstrate that ensemble classifier outperforms traditional machine learning classifiers by 3-5%.
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基于NLP技术的集成方法在Twitter情感分析中的性能分析
从社交网络数据中挖掘意见和分析情绪有助于各个领域,例如甚至预测,分析公众对特定社会问题的整体情绪等等。这篇论文涉及到从Twitter帖子中分析社会对某一特定新闻的情绪。本文的核心思想是通过引入自然语言处理技术,特别是语义和词义消歧技术来提高分类的准确性。对挖掘的文本信息进行集成分类,进行情感分析。集成分类涉及将各种独立分类器对特定分类问题的影响结合起来。实验表明,集成分类器优于传统机器学习分类器3-5%。
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