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Adaptive Topic Modeling with Probabilistic Pseudo Feedback in Online Topic Detection

机译:在线主题检测中的概率伪反馈建模自适应主题

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Online topic detection (OTD) system seeks to analyze sequential stories in a real-time manner so as to detect new topics or to associate stories with certain existing topics. To handle new stories more precisely, an adaptive topic modeling method that incorporates probabilistic pseudo feedback is proposed in this paper to tune every topic model with a changed environment. Differently, this method considers every incoming story as pseudo feedback with certain probability, which is the similarity between the story and the topic. Experiment results show that probabilistic pseudo feedback brings promising improvement to online topic detection.
机译:在线主题检测(OTD)系统旨在以实时方式分析顺序故事,以便检测新主题或将故事与某些现有主题联系起来。为了更准确地处理新故事,在本文中提出了一种包含概率伪反馈的自适应主题建模方法,以调整具有更改环境的每个主题模型。不同地,该方法认为每个传入的故事都是伪反馈的某些概率,这是故事与主题之间的相似性。实验结果表明,概率伪反馈带来了对在线主题检测的有希望的改进。

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