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Linking Fine-Grained Locations in User Comments

机译:链接用户评论中的细粒度位置

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摘要

Many domain-specific websites host a profile page for each entity (e.g., locations on Foursquare, movies on IMDb, and products on Amazon) for users to post comments on. When commenting on an entity, users often mention other entities for reference or comparison. Compared with web pages and tweets, the problem of disambiguating the mentioned entities in user comments has not received much attention. This paper investigates linking fine-grained locations in Foursquare comments. We demonstrate that the focal location, i.e., the location that a comment is posted on, provides rich contexts for the linking task. To exploit such information, we represent the Foursquare data in a graph, which includes locations, comments, and their relations. A probabilistic model named FocalLink is proposed to estimate the probability that a user mentions a location when commenting on a focal location, by following different kinds of relations. Experimental results show that FocalLink is consistently superior under different collective linking settings.
机译:许多特定于域的网站为每个实体托管一个个人资料页面(例如,Foursquare上的位置,IMDb上的电影以及亚马逊上的产品),供用户在其中发表评论。在评论实体时,用户经常提及其他实体以供参考或比较。与网页和推文相比,在用户评论中对所提及实体进行歧义消除的问题并未引起太多关注。本文研究了在Foursquare注释中链接细粒度位置的方法。我们证明了焦点位置,即发表评论的位置,为链接任务提供了丰富的上下文。为了利用这些信息,我们在图形中表示Foursquare数据,其中包括位置,注释及其关系。提出了一种名为FocalLink的概率模型,以通过遵循不同的关系来估计用户在评论焦点位置时提及位置的概率。实验结果表明,FocalLink在不同的集体链接设置下始终具有优越的性能。

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