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Explicit sarcasm handling in emotion level computation of tweets - a big data approach

机译:在发布的情感级别计算中的显式讽刺处理 - 一种大数据方法

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Social media like Twitter offers an important window into the emotions of those who use the platform to share opinions on various topics. Nearly 79% of the world population use social media to express their opinions on various topics. Various commercial organizations like E-commerce sites, health departments, disaster management activities, etc. may want to compute the emotion levels of tweets for analyzing and gaining useful insights into the user's opinions and preferences and using the result of the analysis for various purposes like determining social influence, information diffusion modeling, sentiment analysis, etc. The existing tools for computing the emotion level polarity, however, do not consider sarcasm that most predominantly exist in short texts like tweets. This paper presents a big data approach for computing emotion levels of each tweet for a given day, with handling of explicit sarcasm in tweets. The goal is to provide an efficient and, at the same time, a scalable approach for computing emotion levels in tweets.
机译:像Twitter这样的社交媒体为那些使用平台与各种主题分享意见的人的情感提供了重要的窗口。近79岁的世界人口使用社交媒体对各种主题表达意见。像电子商务网站,卫生部门,灾难管理活动等各种商业组织可能希望计算推文的情绪水平,以便分析和获得对用户意见和偏好的有用见解,并使用分析的结果,以便为各种目的确定社会影响,信息扩散建模,情感分析等。然而,用于计算情绪水平极性的现有工具,不考虑最主要存在于鸣叫等短文本中的讽刺。本文提出了一种大数据方法,用于在给定日期计算每个推文的情绪水平,并在推文中处理显式讽刺。目标是提供一种有效的,同时提供可扩展方法,用于计算推文中的情绪水平。

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