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Gender differences across correlated corpora: preliminary results
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In: http://www.aaai.org/Papers/FLAIRS/2008/FLAIRS08-052.pdf (2008)
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Genre identification and goal-focused summarization
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In: http://www.cs.fiu.edu/%7Elli003/Sum/CIKM/2007/p889-goldstein.pdf (2007)
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c○2006 The Association for Computational Linguistics
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In: http://aclweb.org/anthology//W/W06/W06-07.pdf (2006)
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CLASSY Query-Based Multi-Document Summarization
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In: http://duc.nist.gov/pubs/2005papers/ida.conroy.pdf (2005)
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Left-Brain/Right-Brain Multi-Document Summarization
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In: http://www.cs.umd.edu/users/oleary/reprints/c32.pdf (2004)
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Creating and Evaluating Multi-Document Sentence Extract Summaries
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In: http://www.cs.cmu.edu/~callan/Papers/goldstein-cikm00.pdf (2000)
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Creating and Evaluating Multi-Document Sentence Extract
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In: http://www.cs.cmu.edu/~jade/ps/cikm00.ps (2000)
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Summarizing text documents: Sentence selection and evaluation metrics
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Abstract:
Abstract Human-quality text summarization systems are dicult to design, and even more dicult to evalu-ate, in part because documents can dier along several di-mensions, such as length, writing style and lexical usage. Nevertheless, certain cues can often help suggest the selec-tion of sentences for inclusion in a summary. This paper presents our analysis of news-article summaries generated by sentence selection. Sentences are ranked for potential inclusion in the summary using a weighted combination of statistical and linguistic features. The statistical features were adapted from standard IR methods. The potential linguistic ones were derived from an analysis of news-wire summaries. To evaluate these features we use a normalized version of precision-recall curves, with a baseline of random sentence selection, as well as analyze the properties of such a baseline. We illustrate our discussions with empirical re-sults showing the importance of corpus-dependent baseline summarization standards, compression ratios and carefully crafted long queries. 1
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URL: http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.462.7721
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Selecting Text Spans for Document Summaries: Heuristics and Metrics
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In: http://www.cs.cmu.edu/~mittal/abstracts/aaai99.ps.gz (1999)
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Summarizing Text Documents: Sentence Selection and Evaluation Metrics
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In: http://www.cs.cmu.edu/~jade/ps/sigir99.ps (1999)
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Selecting text spans for document summaries: Heuristics and metrics
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In: https://www.aaai.org/Papers/AAAI/1999/AAAI99-067.pdf (1999)
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Generating Extraction-Based Summaries from Hand-Written Summaries by Aligning Text Spans
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In: http://www.jprc.com/publications/xtract/xtract.ps.gz (1999)
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Summarizing Text Documents: Sentence Selection and Evaluation Metrics
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In: http://www-connex.lip6.fr/~amini/./RelatedWorks/Gol99.ps.gz (1999)
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Summarizing Text Documents: Sentence Selection and Evaluation Metrics
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In: http://ranger.uta.edu/~alp/ix/readings/GoldsteinSigir99NewsSummarization.pdf (1999)
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The Use of MMR, Diversity-Based Reranking for Reordering Documents and Producing Summaries
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In: http://www.cs.cmu.edu/~jade/ps/sigir98.ps (1998)
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The use of MMR, diversity-based reranking for reordering documents and producing summaries
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In: http://www.cs.cmu.edu/%7Ejgc/publication/The_Use_MMR_Diversity_Based_LTMIR_1998.pdf (1998)
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Annotating Subsets of the Enron Email Corpus
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In: http://www.ceas.cc/2006/13.pdf
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