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Synthesizing correlated RSS news articles based on a fuzzy equivalence relation

机译:基于模糊等价关系合成相关RSS新闻文章

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Purpose - Tens of thousands of news articles are posted online each day, covering topics from politics to science to current events. To better cope with this overwhelming volume of information, RSS (news) feeds are used to categorize newly posted articles. Nonetheless, most RSS users must filter through many articles within the same or different RSS feeds to locate articles pertaining to their particular interests. Due to the large number of news articles in individual RSS feeds, there is a need for further organizing articles to aid users in locating non-redundant, informative, and related articles of interest quickly. This paper aims to address these issues.rnDesign/methodology/approach - The paper presents a novel approach which uses the word-correlation factors in a fuzzy set information retrieval model to: filter out redundant news articles from RSS feeds; shed less-informative articles from the non-redundant ones; and cluster the remaining informative articles according to the fuzzy equivalence classes on the news articles. Findings - The clustering approach requires little overhead or computational costs, and experimental results have shown that it outperforms other existing, well-known clustering approaches. Research limitations/implications - The clustering approach as proposed in this paper applies only to RSS news articles; however, it can be extended to other application domains. Originality/value - The developed clustering tool is highly efficient and effective in filtering and classifying RSS news articles and does not employ any labor-intensive user-feedback strategy. Therefore, it can be implemented in real-world RSS feeds to aid users in locating RSS news articles of interest.
机译:目的-每天在线发布数以万计的新闻文章,涵盖从政治到科学再到时事的话题。为了更好地应对这种压倒性的信息量,RSS(新闻)提要用于对新发布的文章进行分类。尽管如此,大多数RSS用户必须在相同或不同RSS提要中过滤掉许多文章,才能找到与他们的特定兴趣有关的文章。由于各个RSS feed中的新闻文章数量众多,因此需要进一步组织新闻文章,以帮助用户快速找到感兴趣的非冗余,翔实和相关文章。本文旨在解决这些问题。设计/方法/方法-本文提出了一种新颖的方法,该方法在模糊集信息检索模型中使用单词相关因子来:从RSS提要中过滤掉多余的新闻;从非冗余的文章中删除信息较少的文章;并根据新闻文章的模糊对等类对其余的信息文章进行聚类。结果-聚类方法所需的开销或计算成本很少,实验结果表明,该聚类方法优于其他现有的众所周知的聚类方法。研究限制/意义-本文提出的聚类方法仅适用于RSS新闻;但是,它可以扩展到其他应用程序域。原创性/价值-所开发的群集工具在RSS新闻的筛选和分类方面非常高效且有效,并且不采用任何劳动密集型的用户反馈策略。因此,它可以在现实的RSS提要中实现,以帮助用户查找感兴趣的RSS新闻文章。

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