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Weibo-Oriented Chinese News Summarization via Multi-feature Combination

机译:通过多功能组合的微博导向中国新闻摘要

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The past several years have witnessed the rapid development of social media services, and the UGCs (User Generated Contents) have been increased dramatically, such as tweets in Twitter and posts in Sina Weibo. In this paper, we describe our system at NLPCC2015 on the Weibo-oriented Chinese news summarization task. Our model is established based on multi-feature combination to automatically generate summary for the given news article. In our system, we mainly utilize four kinds of features to compute the significance score of a sentence, including term frequency, sentence position, sentence length and the similarity between sentence and news article title, and then the summary sentences are chosen according to the significance score of each sentence from the news article. The evaluation results on Weibo news document sets show that our system is efficient in Weibo-oriented Chinese news summarization and outperforms all the other systems.
机译:过去的几年目睹了社交媒体服务的快速发展,UGC(用户生成的内容)已急剧增加,例如在新浪微博的推特和帖子中的推文。在本文中,我们在Weiboi为导向的中国新闻总结任务上描述了我们在NLPCC2015的系统。我们的模型是基于多特征组合建立的,以自动生成给定新闻文章的摘要。在我们的系统中,我们主要利用四种功能来计算句子的重要性分数,包括术语频率,句子位置,句子长度和句子和新闻文章标题之间的相似性,然后根据意义选择摘要句子来自新闻文章的每个句子的分数。 Weibo新闻文件集的评估结果表明,我们的系统在Weiboi为导向的中国新闻摘要中有效,优于所有其他系统。

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