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Temporal patterns in social media streams: Theme discovery and evolution using joint analysis of content and context

机译:社交媒体流中的时间模式:使用联合分析内容和背景的主题发现和演变

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Online social networking sites such as Flickr and Facebook provide a diverse range of functionalities that foster online communities to create and share media content. In particular, Flickr groups are increasingly used to aggregate and share photos about a wide array of topics or themes. Unlike photo repositories where images are typically organized with respect to static topics, the photo sharing process as in Flickr often results in complex time-evolving social and visual patterns. Characterizing such time-evolving patterns can enrich media exploring experience in a social media repository. In this paper, we propose a novel framework that characterizes distinct time-evolving patterns of group photo streams. We use a nonnegative joint matrix factorization approach to incorporate image content features and contextual information, including associated tags, photo owners and post times. In our framework, we consider a group as a mixture of themes - each theme exhibits similar patterns of image content and context. The theme extraction is to best explain the observed image content features and associations with tags, users and times. Extensive experiments on a Flickr dataset suggest that our approach is able to extract meaningful evolutionary patterns from group photo streams. We evaluate our method through a tag prediction task. Our prediction results outperform baseline methods, which indicate the utility of our theme based joint analysis.
机译:Flickr和Facebook等在线社交网站提供各种功能,促进在线社区创建和共享媒体内容。特别是,Flickr组越来越多地用于聚合和分享各种主题或主题的照片。与通常在静态主题组织图像的照片存储库不同,像Flickr中的照片共享过程往往会导致复杂的时间不断发展的社交和视觉模式。表征这种时间不断发展的模式可以丰富媒体探索社交媒体存储库的经验。在本文中,我们提出了一种新颖的框架,其特征是组照片流的独特时间不断发展模式。我们使用非负联合矩阵分解方法来合并图像内容特征和上下文信息,包括相关标签,照片所有者和帖子时间。在我们的框架中,我们将一个小组视为主题的混合 - 每个主题都表现出类似的图像内容模式和上下文。主题提取是最好地解释观察到的图像内容特征和关联,具有标签,用户和时间。 Flickr DataSet上的广泛实验表明,我们的方法能够从组照片流中提取有意义的进化模式。我们通过标签预测任务评估我们的方法。我们的预测结果优于基线方法,表明基于主题的联合分析的效用。

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