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Sentiment Classification-How to Quantify Public Emotions Using Twitter

机译:情绪分类-如何使用Twitter量化公众情绪

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This article describes how with the tremendous popularity in the usage of social media has led to the explosive growth in unstructured data available on various social networking sites. Sentiment analysis of textual data collected from such platforms has become an important research area. In this article, the sentiment classification approach which employs an emotion detection technique is presented. To identify the emotions this paper uses the NRC lexicon based approach for identifying polarity of emotions. A score is computed to quantify emotions obtained from NRC lexicon approach. The method proposed has been tested on twitter datasets of government policies and reforms, more about current NDA government initiatives in India. The polarity components apply and classify the tweets into eight predefined emotions. This article performs both quantitative and sentiment analysis processes with the objective of analyzing the opinion conveyed to each social content, assign a category (+ve, -ve & neutral) or numbered sentiment score. The assigned scores have been classified using six different machine classification algorithms. Good classification results are achieved with the data.
机译:本文介绍了随着社交媒体的广泛使用,如何导致各种社交网站上可用的非结构化数据的爆炸性增长。从这样的平台收集的文本数据的情感分析已经成为重要的研究领域。在本文中,提出了一种采用情感检测技术的情感分类方法。为了识别情绪,本文使用基于NRC词典的方法来识别情绪的极性。计算分数以量化从NRC词典方法获得的情绪。提议的方法已经在政府政策和改革的Twitter数据集上进行了测试,更多地涉及了印度目前的NDA政府举措。极性组件将推文应用并分类为八个预定义的情绪。本文执行定量和情感分析过程,目的是分析传达给每个社交内容的观点,分配类别(+ ve,-ve和中性)或编号的情感分数。使用六种不同的机器分类算法对分配的分数进行了分类。数据可以实现良好的分类结果。

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