Topic and keyword re-ranking for LDA-based topic modeling
Proceedings of the 18th ACM conference on Information and knowledge management, 2009•dl.acm.org
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 …
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 …
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.
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