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Social Influence Estimation for Short Texts in Plurk

机译:Plurk中短文本的社会影响估计

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摘要

Social media present a user-friendly way of communication and sharing, which brings new chances to understand users and their social communication patterns. With the popularity of microblogging services, the huge volume of very short texts makes it difficult to track the latest updates or breaking news. In this paper, we propose a novel social influence model for estimating the popularity score for each short text in plurk. First, the degrees of user participation and user propagation are estimated by the number of replies, replurks, likes, and URIs. Then, we measure the influence persistence by the duration of the initial post and the last response, and the influence score can be derived from a linear combination of these simple statistics. Our experimental results on more than 300 thousand plurks collected from 1,750 users showed a good performance in determining popular messages, with the best F-measure of 0.86. From our case studies, top-ranked messages can accurately reflect the popular discussions on important events. This shows the effectiveness of our proposed approach. Further investigation of applying the influence model in event detection is needed.
机译:社交媒体呈现了一种用户友好的沟通方式和共享方式,这带来了了解用户及其社交沟通模式的新机会。随着微博服务的普及,大量的非常短的文本使得难以跟踪最新的更新或突发新闻。在本文中,我们提出了一种新的社会影响模型,用于估算Plurk中每个短文本的人气分数。首先,用户参与度和用户传播的程度由回复,repurchks,喜欢和URI的数量估算。然后,我们通过初始帖子和最后一个响应的持续时间来测量影响力,并且影响分数可以从这些简单统计的线性组合导出。我们的实验结果从1,750名用户收集的超过300,000名Plurks,在确定流行消息方面表现出良好的性能,最好的F-Measure 0.86。从我们的案例研究来看,排名排名的消息可以准确反映对重要事件的流行讨论。这表明了我们提出的方法的有效性。需要进一步调查在事件检测中应用影响模型。

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