Modelling Emotion Dynamics on Twitter via Hidden Markov Model

Debashis Naskar, E. Onaindía, M. Rebollo, Subhashis Das
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引用次数: 5

Abstract

Exploring the mechanism about users' emotion dynamics towards social events and further predicting their future emotions have attracted great attention to the researchers. One of the unexplored components of human communication found online in written form is an emotional expression. However, despite the concreteness of the online expressions in written form, it remains unpredictable which kinds of emotions will be expressed in individual messages of Twitter users. To investigate this, we perform an investigation on observing emotions unfolding in a consecutive sequence of tweets for a particular user based on his/her past history. In this paper, we propose a method on given a set of tweets related with some events (identified by the usage of a hashtag), determines how those sentiments will be distributed on behalf of a person within a conversation. We present the Hidden Markov Model (HMM) to understand the nature of emotion dynamics in Twitter messages.
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基于隐马尔可夫模型的Twitter情绪动态建模
探索用户对社交事件的情绪动态机制,进而预测其未来情绪,是研究者们关注的焦点。在网上发现的书面形式的人类交流的一个未开发的组成部分是情感表达。然而,尽管书面形式的网络表达具有具体性,但Twitter用户的个人信息中究竟会表达出什么样的情绪,仍然是不可预测的。为了研究这一点,我们根据特定用户的过去历史,在连续的tweet序列中观察情绪展开。在本文中,我们提出了一种方法,给定一组与某些事件相关的推文(通过使用hashtag来识别),确定这些情绪将如何在对话中代表一个人分布。我们提出隐马尔可夫模型(HMM)来理解Twitter消息中情感动态的本质。
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