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What Kind of #Conversation is Twitter? Mining #Psycholinguistic Cues for Emergency Coordination

机译:Twitter是哪种#Conversation?挖掘#心理语言线索以进行紧急情况协调

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摘要

The information overload created by social media messages in emergency situations challenges response organizations to find targeted content and users. We aim to select useful messages by detecting the presence of conversation as an indicator of coordinated citizen action. Using simple linguistic indicators associated with conversation analysis in social science, we model the presence of conversation in the communication landscape of Twitter in a large corpus of 1.5M tweets for various disaster and non-disaster events spanning different periods, lengths of time and varied social significance. Within Replies, Retweets and tweets that mention other Twitter users, we found that domain-independent, linguistic cues distinguish likely conversation from non-conversation in this online (mediated) communication. We demonstrate that conversation subsets within Replies, Retweets and tweets that mention other Twitter users potentially contain more information than non-conversation subsets. Information density also increases for tweets that are not Replies, Retweets or mentioning other Twitter users, as long as they reflect conversational properties. From a practical perspective, we have developed a model for trimming the candidate tweet corpus to identify a much smaller subset of data for submission to deeper, domain-dependent semantic analyses for the identification of actionable information nuggets for coordinated emergency response.
机译:社交媒体消息在紧急情况下造成的信息过载使响应组织难以找到目标内容和用户。我们旨在通过检测对话的存在来选择有用的消息,以作为协调公民行动的指标。使用与社会科学中的会话分析相关联的简单语言指标,我们以150万条推文的大型语料库对Twitter的传播格局中会话的存在进行了建模,以应对跨越不同时期,时间长度和各种社交活动的各种灾难和非灾难事件意义。在提到其他Twitter用户的回复,转发和推文中,我们发现与域无关的语言提示在此在线(中介)通信中将可能的对话与非对话区分开。我们证明,提到其他Twitter用户的回复,转发和推文中的对话子集比非对话子集可能包含更多信息。只要不是反映回复,转发或提及其他Twitter用户的推文,信息密度也会增加,只要它们反映了对话的属性。从实践的角度来看,我们已经开发出一种用于修剪候选推文语料库的模型,以识别出要提交给更深的,依赖于域的语义分析的较小数据子集,以识别可采取行动的信息块,以协调应急响应。

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