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MGraph: multimodal event summarization in social media using topic models and graph-based ranking

机译:MGraph:使用主题模型和基于图的排名在社交媒体中进行多模式事件汇总

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摘要

Due to the increasing popularity of social media platforms, the amount of messages (posts) related to public events, especially posts sharing multimedia content, is steadily increasing. Sharing images can contribute to a rich and live coverage of the event. Yet, despite the value and interestingness of some posts, there is a lot of spam and redundancy, which makes it challenging to select the most important and characteristic posts for the event. In this work, we describe MGraph, a summarization framework that, given a set of social media posts about an event, selects a subset of shared images, simultaneously maximizing their relevance and minimizing their visual redundancy. MGraph employs a topic modelling technique based on different modalities to capture the relevance of posts to event topics, and a graphbased ranking algorithm to produce a diverse ranking of the selected high-relevance images.Auser-centred evaluation on a dataset comprising a variety of real-world events demonstrates that MGraph considerably outperforms a number of state-of-the-art summarization algorithms in terms of relevance and diversity (25 and 7 % improvement respectively).
机译:由于社交媒体平台的日益普及,与公共事件有关的消息(帖子)的数量(尤其是共享多媒体内容的帖子)的数量正在稳定增长。共享图像可以为活动提供丰富而实时的报道。然而,尽管某些帖子具有价值和趣味性,但仍有大量垃圾邮件和冗余信息,这使得为该活动选择最重要和最具特色的帖子具有挑战性。在这项工作中,我们描述了MGraph,这是一个摘要框架,给定一组有关事件的社交媒体帖子,该框架选择共享图像的子集,同时最大化其相关性并最小化其视觉冗余。 MGraph使用基于不同模式的主题建模技术来捕获帖子与事件主题的相关性,并使用基于图的排名算法来对所选的高相关性图像进行多样化的排名。世界事件表明,在相关性和多样性方面,MGraph大大优于许多最新的摘要算法(分别提高了25%和7%)。

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