Multi-topic Based Query-Oriented Summarization

@inproceedings{Tang2009MultitopicBQ,
  title={Multi-topic Based Query-Oriented Summarization},
  author={J. Tang and Limin Yao and D. Chen},
  booktitle={SDM},
  year={2009}
}
  • J. Tang, Limin Yao, D. Chen
  • Published in SDM 2009
  • Computer Science
  • Query-oriented summarization aims at extracting an informative summary from a document collection for a given query. It is very useful to help users grasp the main information related to a query. Existing work can be mainly classified into two categories: supervised method and unsupervised method. The former requires training examples, which makes the method limited to predefined domains. While the latter usually utilizes clustering algorithms to find ‘centered’ sentences as the summary… CONTINUE READING
    107 Citations
    Multi-document summarization via submodularity
    • J. Li, L. Li, Tao Li
    • Computer Science
    • Applied Intelligence
    • 2012
    • 42
    • PDF
    Topic aspect analysis for multi-document summarization
    • 6
    Query-oriented Unsupervised Multi-document Summarization on Big Data
    Exploring heterogeneous features for query-focused summarization of categorized community answers
    • 16
    • Highly Influenced
    • PDF
    A survey on existing extractive techniques for query-based text summarization
    • Nazreena Rahman, B. Borah
    • Computer Science
    • 2015 International Symposium on Advanced Computing and Communication (ISACC)
    • 2015
    • 13
    Content Modeling for Automatic Document Summarization
    • 1
    • PDF
    Multi-Document Summarization via the Minimum Dominating Set
    • C. Shen, Tao Li
    • Computer Science
    • COLING
    • 2010
    • 123
    • PDF
    Aligning Gaussian-Topic with Embedding Network for Summarization Ranking
    • 1
    • Highly Influenced

    References

    SHOWING 1-10 OF 34 REFERENCES
    Document Summarization Using Conditional Random Fields
    • 351
    • PDF
    A survey for Multi-Document Summarization
    • 35
    • Highly Influential
    • PDF
    Multi-Document Summarization by Maximizing Informative Content-Words
    • 155
    • PDF
    A compositional context sensitive multi-document summarizer: exploring the factors that influence summarization
    • 228
    • Highly Influential
    • PDF
    Inferring Strategies for Sentence Ordering in Multidocument News Summarization
    • 328
    • PDF
    Bayesian Query-Focused Summarization
    • 239
    • PDF
    Machine Learning of Generic and User-Focused Summarization
    • 136
    • PDF
    Topic themes for multi-document summarization
    • 159
    • PDF