微博中细粒度位置的联合识别和链接

Zongcheng Ji, Aixin Sun, G. Cong, Jialong Han
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引用次数: 52

摘要

许多用户在推特上随意地透露他们的位置,如餐馆、地标和商店。从tweet中识别这种细粒度的位置,然后将位置提到链接到定义良好的位置配置文件(例如,具有正式名称、详细地址和地理坐标等),为许多应用程序提供了巨大的机会。与现有的将位置识别和链接作为两个子任务在管道设置中依次执行的解决方案不同,本文提出了一种新的联合框架,在联合搜索空间中同时执行位置识别和位置链接。我们将这种端到端位置连接问题表述为结构化预测问题,并提出了一种基于波束搜索的算法。基于多视图学习的概念,我们进一步使算法能够从未标记的数据中学习,以缓解标记数据的缺乏。他们进行了大量的实验来识别推文中提到的地点,并将它们链接到Foursquare上的位置资料。实验结果表明,所提出的联合学习算法优于当前的解决方案,并且从未标记数据中学习可以提高识别和链接的准确性。
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Joint Recognition and Linking of Fine-Grained Locations from Tweets
Many users casually reveal their locations such as restaurants, landmarks, and shops in their tweets. Recognizing such fine-grained locations from tweets and then linking the location mentions to well-defined location profiles (e.g., with formal name, detailed address, and geo-coordinates etc.) offer a tremendous opportunity for many applications. Different from existing solutions which perform location recognition and linking as two sub-tasks sequentially in a pipeline setting, in this paper, we propose a novel joint framework to perform location recognition and location linking simultaneously in a joint search space. We formulate this end-to-end location linking problem as a structured prediction problem and propose a beam-search based algorithm. Based on the concept of multi-view learning, we further enable the algorithm to learn from unlabeled data to alleviate the dearth of labeled data. Extensive experiments are conducted to recognize locations mentioned in tweets and link them to location profiles in Foursquare. Experimental results show that the proposed joint learning algorithm outperforms the state-of-the-art solutions, and learning from unlabeled data improves both the recognition and linking accuracy.
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