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Context-Aware Topic Modeling for Content Tracking in Social Media

机译:社交媒体内容跟踪的上下文感知主题建模

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Content in social media is difficult to analyse because of its short and informal feature. Fortunately, some social media data like tweets have rich hashtags information, which can help identify meaningful topic information. More importantly, hashtags can express the context information of a tweet better. To enhance the significant effect of hashtags via topic variables, this paper, we propose a context-aware topic model to detect and track the evolution of content in social media by integrating hashtag and time information named hashtag-supervised Topic over Time (hsToT). In hsToT, a document is generated jointly by the existing words and hashtags (the hashtags are treated as topic indicators of the tweet). Experiments on real data show that hsToT capture hashtags distribution over topics and topic changes over time simultaneously. The model can detect the crucial information and track the meaningful content and topics successfully.
机译:由于其简短和非正式特征,社交媒体内容难以分析。幸运的是,一些社交媒体数据如推文有丰富的Hashtags信息,可以帮助识别有意义的主题信息。更重要的是,HASHTAG可以更好地表达推文的上下文信息。为了通过主题变量来增强HashTags的显着效果,我们提出了一种背景感知主题模型来通过集成名为HashTag监督主题的Hashtag和时间信息来检测和跟踪社交媒体中内容的演变。在HSTOT中,由现有单词和HASHTAG共同生成文档(HASHTAG被视为Tweet的主题指示)。实验数据显示,HSTOT捕获主题分布在主题和主题同时随时间变化。该模型可以检测至关重要的信息并成功跟踪有意义的内容和主题。

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