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Descriptive document clustering via discriminant learning in a co‐embedded space of multilevel similarities
Author(s) -
Mu Tingting,
Goulermas John Y.,
Korkontzelos Ioannis,
Ananiadou Sophia
Publication year - 2016
Publication title -
journal of the association for information science and technology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.903
H-Index - 145
eISSN - 2330-1643
pISSN - 2330-1635
DOI - 10.1002/asi.23374
Subject(s) - document clustering , computer science , cluster analysis , ranking (information retrieval) , linear discriminant analysis , information retrieval , similarity (geometry) , hierarchical clustering , space (punctuation) , document classification , artificial intelligence , scheme (mathematics) , cluster (spacecraft) , natural language processing , data mining , pattern recognition (psychology) , mathematics , mathematical analysis , image (mathematics) , programming language , operating system
Descriptive document clustering aims at discovering clusters of semantically interrelated documents together with meaningful labels to summarize the content of each document cluster. In this work, we propose a novel descriptive clustering framework, referred to as CEDL . It relies on the formulation and generation of 2 types of heterogeneous objects, which correspond to documents and candidate phrases, using multilevel similarity information. CEDL is composed of 5 main processing stages. First, it simultaneously maps the documents and candidate phrases into a common co‐embedded space that preserves higher‐order, neighbor‐based proximities between the combined sets of documents and phrases. Then, it discovers an approximate cluster structure of documents in the common space. The third stage extracts promising topic phrases by constructing a discriminant model where documents along with their cluster memberships are used as training instances. Subsequently, the final cluster labels are selected from the topic phrases using a ranking scheme using multiple scores based on the extracted co‐embedding information and the discriminant output. The final stage polishes the initial clusters to reduce noise and accommodate the multitopic nature of documents. The effectiveness and competitiveness of CEDL is demonstrated qualitatively and quantitatively with experiments using document databases from different application fields.