A Phrase Mining Framework For Recursive Construction Of A Topical Hierarchy

KDD(2013)

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摘要
A high quality hierarchical organization of the concepts in a dataset at different levels of granularity has many valuable applications such as search, summarization, and content browsing. In this paper we propose an algorithm for recursively constructing a hierarchy of topics from a collection of content-representative documents. We characterize each topic in the hierarchy by an integrated ranked list of mixed-length phrases. Our mining framework is based on a phrase-centric view for clustering, extracting, and ranking topical phrases. Experiments with datasets from different domains illustrate our ability to generate hierarchies of high quality topics represented by meaningful phrases.
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关键词
Topic Modeling,Ontology Learning,Network Analysis,Keyphrase Extraction,Keyphrase Ranking
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