中文多文档摘要句子排序的子主题丰富MMR方法

P. Hu, Tingting He, Hai Wang
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引用次数: 0

摘要

本文提出了一种基于最大边际关联(maximum Marginal Relevance, MMR)的基于子主题的中文多文档摘要句子排序方法SEMMR。MMR是在统一框架内平衡主题相关性和内容冗余的最流行的排序算法之一,在文本检索和文档摘要中得到了很好的应用。对于多文档摘要任务,现有的基于mmr的方法通常将每个句子与主主题之间的主题相关性直接纳入句子排序过程,而忽略了更细粒度的潜在子主题信息。实际上,一个主题上的文档集通常由几个隐式子主题组成,不同的子主题对句子排名的影响可能是不相等的。具体来说,与靠近主题的子主题相关度较高的句子被认为比与远离主题的子主题相关的句子更相关。为了解决这一问题,并考虑到子主题对句子排名性能的影响,本文扩展了传统的MMR算法,将子主题相关性和句子到子主题的接近性整合到统一的排名过程中。初步实验结果表明了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A subtopic-enriched MMR approach to sentence ranking for Chinese multi-document summarization
In this paper, we present SEMMR, a novel subtopic-enriched sentence ranking method for Chinese multi-document summarization derived from Maximal Marginal Relevance (MMR). MMR is one of the most popular ranking algorithms for balancing the topical relevance and content redundancy in a unified framework, which has been well employed in the context of text retrieval and document summarization. For multi-document summarization task, existing MMR-based approaches usually directly incorporate the topical relevance between each sentence and the main topic into the sentence ranking process while ignoring the latent subtopic information of finer granularity. Actually, a document set on a main topic usually consists of a few implicit subtopics, and different subtopic may have unequal impact on the sentence ranking. Specifically, the sentences having higher proximity with the subtopics close to the main topic are deemed more relevant than the sentences related with the subtopics far away from the main topic. To address this issue and take into account the subtopic's impact on sentence ranking performance, this paper extends the traditional MMR algorithm by integrating the sub-topical relevance as well as the sentence-to-subtopic proximity into the unified ranking process. Preliminary experimental results indicate the effectiveness of our proposed methods.
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