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Reader Comment Digest through Latent Event Facets and News Specificity

机译:读者评论摘录了潜在事件的各个方面和新闻的特质

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摘要

When a significant event occurs, many news articles from different newsagents often report it. Moreover, these newsagents also provide platforms for their readers to write comments expressing their views or understanding. Through digesting these reader comments, we can gain insights into the reactions, suggestions, personal experiences, or public opinions with respect to the emerging event. However, these reader comments from different sources are often rapidly accumulated resulting in an enormous volume. It becomes difficult to manually analyze these comments. In this paper, we propose a framework that can digest reader comments automatically through latent event facets and news specificity. An event facet refers to the aspect of the event concerned by many readers. Specifically, some of the reader comments, despite coming from different sources, discuss a certain facet of the event. Such facets provide an effective means for organizing news comments in a global manner. On the other hand, some comments discuss the specific topic of the corresponding news article. These specific topics demonstrate the specific focus of readers on the piece of news locally. Such reader comment digest in different granularities facilitates readers deeper understanding of these enormous comments. To achieve the above desirable goal of digesting reader comments, we propose an unsupervised model called EFNS which is capable of capturing the intricate fine-grained associations among events, news, and comments. We also develop a multiplicative-update method to infer the parameters and prove the convergence of our algorithm. Our framework can also visualize reader comments according to the relationship with latent event facets and the degree of news specificity. Experimental results show that our proposed EFNS model can provide an effective way to digest news reader comments and outperform the state-of-the-art method.
机译:当发生重大事件时,许多来自不同报社的新闻文章经常对其进行报道。而且,这些新闻代理还为读者提供了发表评论或观点的平台。通过消化这些读者的评论,我们可以洞悉与事件有关的反应,建议,个人经验或公众意见。但是,这些来自不同来源的读者评论通常会迅速积累,从而产生巨大的数量。手动分析这些评论变得困难。在本文中,我们提出了一个框架,该框架可以通过潜在事件的方面和新闻的特殊性自动消化读者的评论。事件方面是指许多读者关注的事件方面。具体来说,尽管来自不同的来源,一些读者的评论还是讨论了该事件的某个方面。这些方面提供了一种以全局方式组织新闻评论的有效手段。另一方面,一些评论讨论了相应新闻文章的特定主题。这些特定主题说明了读者对本地新闻的特别关注。这样的读者评论摘要以不同的粒度便于读者对这些巨大评论的更深刻理解。为了实现上述消化读者评论的理想目标,我们提出了一种称为EFNS的无监督模型,该模型能够捕获事件,新闻和评论之间的复杂细粒度关联。我们还开发了一种乘法更新方法来推断参数并证明算法的收敛性。我们的框架还可以根据与潜在事件方面的关系以及新闻的特定性,将读者的评论可视化。实验结果表明,我们提出的EFNS模型可以提供一种有效的方法来消化新闻阅读者的评论,并且胜过最新的方法。

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