Corpus ID: 17224077

Towards a Unified Approach to Simultaneous Single-Document and Multi-Document Summarizations

@inproceedings{Wan2010TowardsAU,
  title={Towards a Unified Approach to Simultaneous Single-Document and Multi-Document Summarizations},
  author={Xiaojun Wan},
  booktitle={COLING},
  year={2010}
}
Single-document summarization and multi-document summarization are very closely related tasks and they have been widely investigated independently. This paper examines the mutual influences between the two tasks and proposes a novel unified approach to simultaneous single-document and multi-document summarizations. The mutual influences between the two tasks are incorporated into a graph model and the ranking scores of a sentence for the two tasks can be obtained in a unified ranking process… Expand
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