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Linking Online News and Social Media

机译:链接在线新闻和社交媒体

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摘要

Much of what is discussed in social media is inspired by events in the news and, vice versa, social media provide us with a handle on the impact of news events. We address the following linking task: given a news article, find social media utterances that implicitly reference it. We follow a three-step approach: we derive multiple query models from a given source news article, which are then used to retrieve utterances from a target social media index, resulting in multiple ranked lists that we then merge using data fusion techniques. Query models are created by exploiting the structure of the source article and by using explicitly linked social media utterances that discuss the source article. To combat query drift resulting from the large volume of text, either in the source news article itself or in social media utterances explicitly linked to it, we introduce a graph-based method for selecting discriminative terms.For our experimental evaluation, we use data from Twitter, Digg, Delicious, the New York Times Community, Wikipedia, and the bl-ogosphere to generate query models. We show that different query models, based on different data sources, provide complementary information and manage to retrieve different social media utterances from our target index. As a consequence, data fusion methods manage to significantly boost retrieval performance over individual approaches. Our graph-based term selection method is shown to help improve both effectiveness and efficiency.
机译:社交媒体中讨论的许多内容都受到新闻事件的启发,反之亦然,社交媒体为我们提供了处理新闻事件影响的方法。我们解决以下链接任务:给定新闻文章,找到隐式引用该文章的社交媒体言论。我们采用三步法:从给定的源新闻文章中得出多个查询模型,然后将其用于从目标社交媒体索引中检索话语,从而生成多个排名列表,然后使用数据融合技术进行合并。查询模型是通过利用源文章的结构并使用讨论源文章的显式链接的社交媒体话语来创建的。为了解决源新闻文章本身或与之显式链接的社交媒体言论中大量文本导致的查询漂移,我们引入了一种基于图的方法来选择歧视性术语。在实验评估中,我们使用来自Twitter,Digg,Delicious,纽约时报社区,Wikipedia和bl-ogosphere来生成查询模型。我们表明,基于不同数据源的不同查询模型可提供补充信息,并设法从目标索引中检索不同的社交媒体话语。结果,数据融合方法设法显着提高了各个方法的检索性能。我们的基于图的术语选择方法可以帮助提高有效性和效率。

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