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Connecting content to community in social media via image content, user tags and user communication

机译:通过图像内容,用户标签和用户通信将内容与社交媒体中的社区连接到社区

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In this paper we develop a recommendation framework to connect image content with communities in online social media. The problem is important because users are looking for useful feedback on their uploaded content, but finding the right community for feedback is challenging for the end user. Social media are characterized by both content and community. Hence, in our approach, we characterize images through three types of features: visual features, user generated text tags, and social interaction (user communication history in the form of comments). A recommendation framework based on learning a latent space representation of the groups is developed to recommend the most likely groups for a given image. The model was tested on a large corpus of Flickr images comprising 15,689 images. Our method outperforms the baseline method, with a mean precision 0.62 and mean recall 0.69. Importantly, we show that fusing image content, text tags with social interaction features outperforms the case of only using image content or tags.
机译:在本文中,我们开发了一个推荐框架,以将图像内容与在线社交媒体中的社区连接。问题很重要,因为用户正在寻找有关其上传内容的有用反馈,但查找有关反馈的合适社区是对最终用户有挑战性的。社交媒体的特点是内容和社区。因此,在我们的方法中,我们通过三种类型的特征表征图像:视觉功能,用户生成的文本标记和社交交互(以评论形式的用户通信历史)。基于学习组的潜在空间表示的推荐框架是开发的,以推荐给定图像的最有可能的群体。该模型在包含15,689个图像的庞大的Flickr图像的大语料库上进行测试。我们的方法优于基线方法,平均精度0.62,平均召回0.69。重要的是,我们表明,融合图像内容,具有社交交互的文本标签才能使用图像内容或标签的情况。

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