Precise tweet classification and sentiment analysis

Rabia Batool, A. Khattak, Maqbool Jahanzeb, Sungyoung Lee
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引用次数: 98

Abstract

The rise of social media in couple of years has changed the general perspective of networking, socialization, and personalization. Use of data from social networks for different purposes, such as election prediction, sentimental analysis, marketing, communication, business, and education, is increasing day by day. Precise extraction of valuable information from short text messages posted on social media (Twitter) is a collaborative task. In this paper, we analyze tweets to classify data and sentiments from Twitter more precisely. The information from tweets are extracted using keyword based knowledge extraction. Moreover, the extracted knowledge is further enhanced using domain specific seed based enrichment technique. The proposed methodology facilitates the extraction of keywords, entities, synonyms, and parts of speech from tweets which are then used for tweets classification and sentimental analysis. The proposed system is tested on a collection of 40,000 tweets. The proposed methodology has performed better than the existing system in terms of tweets classification and sentiment analysis. By applying the Knowledge Enhancer and Synonym Binder module on the extracted information we have achieved increase in information gain in a range of 0.1% to 55%. The increase in information gain has enabled our proposed system to better summarize the twitter data for user sentiments regarding a keyword from a particular category.
精确的tweet分类和情感分析
几年来,社交媒体的兴起改变了人们对网络、社会化和个性化的普遍看法。在选举预测、情感分析、营销、通信、商业、教育等不同目的上,利用社交网络数据的情况日益增多。从社交媒体(Twitter)上发布的短信中精确提取有价值的信息是一项协作任务。在本文中,我们分析推文,以更准确地分类来自推特的数据和情绪。使用基于关键字的知识提取方法提取推文中的信息。此外,利用基于特定领域种子的富集技术对提取的知识进行进一步增强。提出的方法有助于从推文中提取关键字、实体、同义词和词性,然后用于推文分类和情感分析。该系统在4万条推文中进行了测试。该方法在推文分类和情感分析方面优于现有系统。通过对提取的信息应用Knowledge Enhancer和Synonym Binder模块,我们实现了0.1%到55%范围内的信息增益增加。信息增益的增加使我们提出的系统能够更好地总结twitter数据,以便从特定类别中获取有关关键字的用户情绪。
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