A vast amount of geographic information exists in natural language texts, such as tweets and news. Extracting geographic information from texts is called Geoparsing, which includes two subtasks: toponym recognition and toponym disambiguation, i.e., to identify the geospatial representations of toponyms. This paper focuses on toponym disambiguation, which is usually approached by toponym resolution and entity linking. Recently, many novel approaches have been proposed, especially deep learning-based approaches, such as CamCoder, GENRE, and BLINK. In this paper, a spatial clustering-based voting approach that combines several individual approaches is proposed to improve SOTA performance in terms of robustness and generalizability. Experiments are conducted to compare a voting ensemble with 20 latest and commonly-used approaches based on 12 public datasets, including several highly ambiguous and challenging datasets (e.g., WikToR and CLDW). The datasets are of six types: tweets, historical documents, news, web pages, scientific articles, and Wikipedia articles, containing in total 98,300 places across the world. The results show that the voting ensemble performs the best on all the datasets, achieving an average Accuracy@161km of 0.86, proving the generalizability and robustness of the voting approach. Also, the voting ensemble drastically improves the performance of resolving fine-grained places, i.e., POIs, natural features, and traffic ways.
翻译:在自然语言文本中,例如推文和新闻中存在着大量地理信息。从文本中提取的地理信息称为Geoparsing,其中包括两个子任务:地名识别和地名模糊不清,即确定地名的地理空间代表。本文侧重于地名模糊不清,通常通过地名分辨率和实体链接处理。最近,提出了许多新颖办法,特别是深层次的学习方法,如CamCoder、GENRE和BLINK。在本文件中,提议采用基于空间集群的投票方法,将若干单个方法结合起来,以提高SOTA在稳健性和可概括性方面的性能。进行了实验,以比较20个最新和常用的方法,这些方法基于12个公共数据集,包括一些非常模糊和具有挑战性的数据集(例如WikToR和W)。数据集分为六种:推文、历史文件、新闻、网页、科学文章和维基百科文章,这些方法以稳健性方法结合了若干个具体的方法,从稳健性和可概括性角度提高SOTATA的绩效。在98 300页上展示了全世界最高选举结果。