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Topic Derivation in Weibo through Both Interactions and Content

机译:通过互动和内容主题推导在微博中

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Social media represented by Weibo has become one of the most important platforms, covering all kinds of topics for information dissemination and day-to-day communications. As a result, topic derivation in Weibo can support various applications scenarios, including sentiment analysis, opinion controlling, market forecasting, etc. As traditional topic derivation in Weibo is mainly based on the short text of a weibo post, these methods usually encounter the data sparsity problem. To solve this problem, we find that both content and interactions can help improve the quality of topic derivation in Weibo. Thus, this paper proposed a method that additionally takes three typical interactions into features: mentioning, forwarding and the topic tags. The proposed method clusters the weibo posts and identifies the representative terms for each topic by matrix factorization technique. Our experimental results show that the proposed method performs better than advanced baseline methods in both topic clustering accuracy and keywords extraction.
机译:由微博代表的社交媒体已成为最重要的平台之一,涵盖信息传播和日常通信的各种主题。因此,随着微博的传统主题推导主要基于微博邮政的短文本,我们可以支持各种应用方案,包括情景,包括情感分析,包括情景,包括情感分析,意见控制,市场预测等。这些方法通常会遇到数据稀疏问题。为了解决这个问题,我们发现内容和交互都可以帮助提高微博中主题推导的质量。因此,本文提出了一种方法,其另外需要三个典型的交互:提及,转发和主题标签。该方法通过矩阵分解技术委托了Weibo帖子并识别每个主题的代表性术语。我们的实验结果表明,该方法在主题聚类精度和关键字提取中表现优于高级基线方法。

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