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Topic and Keyword Re-ranking for LDA-based Topic Modeling

机译:基于LDA的主题建模的主题和关键字重新排名

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Topic-based text summaries promise to help average users quickly understand a text collection and derive insights. Recent research has shown that the Latent Dirichlet Allocation (LDA) model is one of the most effective approaches to topic analysis. However, the LDA-based results may not be ideal for human understanding and consumption. In this paper, we present several topic and keyword re-ranking approaches that can help users better understand and consume the LDA-derived topics in their text analysis. Our methods process the LDA output based on a set of criteria that model a user's information needs. Our evaluation demonstrates the usefulness of the methods in summarizing several large-scale, real world data sets.
机译:基于主题的文本摘要有望帮助普通用户快速理解文本集合并获得见解。最近的研究表明,潜在狄利克雷分配(LDA)模型是最有效的主题分析方法之一。但是,基于LDA的结果对于人类的理解和消费而言可能不是理想的。在本文中,我们提出了几种主题和关键字重新排序方法,可以帮助用户在其文本分析中更好地理解和使用LDA派生的主题。我们的方法基于为用户信息需求建模的一组标准来处理LDA输出。我们的评估证明了该方法在汇总几个大规模的,真实世界的数据集方面的有用性。

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