首页> 外文会议>Twentieth International Joint Conference on Artificial Intelligence(IJCAI-07) >Multi-Document Summarization by Maximizing Informative Content-Words
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Multi-Document Summarization by Maximizing Informative Content-Words

机译:通过最大化内容性内容词来进行多文档摘要

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摘要

We show that a simple procedure based on maximizing the number of informative content-words can produce some of the best reported results for multi-document summarization. We first assign a score to each term in the document cluster, using only frequency and position information, and then we find the set of sentences in the document cluster that maximizes the sum of these scores, subject to length constraints. Our overall results are the best reported on the DUC-2004 summarization task for the ROUGE-1 score, and are the best, but not statistically significantly different from the best system in MSE-2005. Our system is also substantially simpler than the previous best system.
机译:我们展示了一个基于最大程度增加信息量内容词的简单过程,可以为多文档摘要生成一些报告效果最好的结果。我们首先仅使用频率和位置信息为文档群中的每个术语分配一个分数,然后在长度受限的情况下,在文档群中找到使这些分数之和最大化的句子集。在DUC-2004摘要任务的ROUGE-1分数上,我们的总体结果是最好的,也是最好的,但与MSE-2005的最佳系统在统计学上没有显着差异。我们的系统也比以前的最佳系统简单得多。

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