冬天来了:总结与预先安排的事件相关的Twitter流

Anietie U Andy, D. Wijaya, Chris Callison-Burch
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引用次数: 5

摘要

预先安排好的活动,如电视节目和体育比赛,通常会引起公众的极大关注。Twitter实时捕获了大量与这些事件相关的讨论和消息。与预先安排的事件相关的Twitter流具有以下特征:(1)发布推文数量的峰值反映了事件的亮点;(2)一些发布的推文参考了事件中涉及的人物,在当前子事件中描述了这些人物。在本文中,我们利用这些特征来识别推文流中预先安排的事件的亮点,并展示了一种总结这些亮点的方法。我们通过收集热门电视剧《权力的游戏》第七季两集左右的推文来评估我们的算法。
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Winter is here: Summarizing Twitter Streams related to Pre-Scheduled Events
Pre-scheduled events, such as TV shows and sports games, usually garner considerable attention from the public. Twitter captures large volumes of discussions and messages related to these events, in real-time. Twitter streams related to pre-scheduled events are characterized by the following: (1) spikes in the volume of published tweets reflect the highlights of the event and (2) some of the published tweets make reference to the characters involved in the event, in the context in which they are currently portrayed in a subevent. In this paper, we take advantage of these characteristics to identify the highlights of pre-scheduled events from tweet streams and we demonstrate a method to summarize these highlights. We evaluate our algorithm on tweets collected around 2 episodes of a popular TV show, Game of Thrones, Season 7.
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