Extending a Single-Document Summarizer to Multi-Document: a Hierarchical Approach

07/10/2015
by   Luís Marujo, et al.
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The increasing amount of online content motivated the development of multi-document summarization methods. In this work, we explore straightforward approaches to extend single-document summarization methods to multi-document summarization. The proposed methods are based on the hierarchical combination of single-document summaries, and achieves state of the art results.

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