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Cross-Modality Sentiment Analysis for Social Multimedia

机译:社交多媒体的跨模式情感分析

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Sentiment analysis is important for understanding the social media contents and user opinions. Along with the development of social media applications, an increasing number of people combine texts and images to express their opinions. However, text based sentiment analysis methods cannot process other medias except texts. Therefore, visual sentiment analysis is born at the right moment. In this article, we review two multimodal-based visual sentiment analysis models proposed in our group. Both model exploit the multimodal content from correlation and hyper graph view respectively. In the Multimodal Correlation Model (MCM), we observe the correlation among different modalities and model then through a probabilistic graphical model. In the Hyper graph Learning Model (HLM), we use hyper graph to model the independence of each modality. We further discuss the underneath challenges and foresee potential opportunities of this direction.
机译:情绪分析对于理解社交媒体内容和用户意见很重要。随着社交媒体应用程序的发展,越来越多的人将文本和图像结合起来表达自己的观点。但是,基于文本的情感分析方法无法处理文本以外的其他媒体。因此,视觉情感分析应运而生。在本文中,我们回顾了我们小组中提出的两个基于多模式的视觉情感分析模型。两种模型分别从相关性和超图视图中利用多峰内容。在多模态关联模型(MCM)中,我们然后通过概率图形模型观察不同模态和模型之间的关联。在超图学习模型(HLM)中,我们使用超图对每个模态的独立性进行建模。我们将进一步讨论潜在的挑战,并预见该方向的潜在机会。

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