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Multiple Feature Fusion for Social Media Applications

机译:社交媒体应用的多个特征融合

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The emergence of social media as a crucial paradigm has posed new challenges to the research and industry communities, where media are designed to be disseminated through social interaction. Recent literature has noted the generality of multiple features in the social media environment, such as textual, visual and user information. However, most of the studies employ only a relatively simple mechanism to merge the features rather than fully exploit feature correlation for social media applications. In this paper, we propose a novel approach to fusing multiple features and their correlations for similarity evaluation. Specifically, we first build a Feature Interaction Graph (FIG) by taking features as nodes and the correlations between them as edges. Then, we employ a probabilistic model based on Markov Random Field to describe the graph for similarity measure between multimedia objects. Using that, we design an efficient retrieval algorithm for large social media data. Further, we integrate temporal information into the probabilistic model for social media recommendation. We evaluate our approach using a large real-life corpus collected from Flickr, and the experimental results indicate the superiority of our proposed method over state-of-the-art techniques.
机译:社会媒体作为一个关键范式的出现对研究和行业社区构成了新的挑战,媒体旨在通过社会互动传播。最近的文献已经注意到社交媒体环境中的多个功能的一般性,例如文本,视觉和用户信息。然而,大多数研究只能使用相对简单的机制来合并特征,而不是完全利用社交媒体应用的功能相关性。在本文中,我们提出了一种融合多种特征的新方法及其相似性评估的相关性。具体地,我们首先通过将功能作为节点和它们之间的相关性来构建特征交互图(图)。然后,我们使用基于Markov随机字段的概率模型来描述多媒体对象之间的相似度量的图表。使用此,我们为大型社交媒体数据设计有效的检索算法。此外,我们将时间信息集成到社交媒体推荐的概率模型中。我们使用从Flickr收集的大型真实寿命来评估我们的方法,实验结果表明我们提出的方法的优势在最先进的技术上。

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