Explaining Sentiment Spikes in Twitter

Anastasia Giahanou, I. Mele, F. Crestani
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引用次数: 24

Abstract

Tracking public opinion in social media provides important information to enterprises or governments during a decision making process. In addition, identifying and extracting the causes of sentiment spikes allows interested parties to redesign and adjust strategies with the aim to attract more positive sentiments. In this paper, we focus on the problem of tracking sentiment towards different entities, detecting sentiment spikes and on the problem of extracting and ranking the causes of a sentiment spike. Our approach combines LDA topic model with Relative Entropy. The former is used for extracting the topics discussed in the time window before the sentiment spike. The latter allows to rank the detected topics based on their contribution to the sentiment spike.
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解释推特上的情绪波动
在社会媒体上跟踪民意为企业或政府在决策过程中提供了重要信息。此外,识别和提取情绪峰值的原因允许相关方重新设计和调整策略,以吸引更多的积极情绪。在本文中,我们专注于跟踪对不同实体的情绪,检测情绪峰值以及提取和排序情绪峰值原因的问题。我们的方法将LDA主题模型与相对熵相结合。前者用于提取情绪峰值前的时间窗口内讨论的话题。后者允许根据对情绪峰值的贡献对检测到的主题进行排名。
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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