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Geo-semantic-parsing: AI-powered geoparsing by traversing semantic knowledge graphs

机译:地理语义 - 解析:通过穿越语义知识图来源的地形标ar

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摘要

Online social networks convey rich information about geospatial facets of reality. However in most cases, geographic information is not explicit and structured, thus preventing its exploitation in real-time applications. We address this limitation by introducing a novel geoparsing and geotagging technique called Geo-Semantic-Parsing (Gs P). GSP identifies location references in free text and extracts the corresponding geographic coordinates. To reach this goal, we employ a semantic annotator to identify relevant portions of the input text and to link them to the corresponding entity in a knowledge graph. Then, we devise and experiment with several efficient strategies for traversing the knowledge graph, thus expanding the available set of information for the geoparsing task. Finally, we exploit all available information for learning a regression model that selects the best entity with which to geotag the input text. We evaluate GSP on a well-known reference dataset including almost 10 k event-related tweets, achieving F1 = 0.66. We extensively compare our results with those of 2 baselines and 3 state-of-the-art geoparsing techniques, achieving the best performance. On the same dataset, competitors obtain F1 = 0.55. We conclude by providing in-depth analyses of our results, showing that the overall superior performance of GSP is mainly due to a large improvement in recall, with respect to existing techniques.
机译:在线社交网络传达了有关现实地理空间方面的丰富信息。然而,在大多数情况下,地理信息不是显式和结构化,从而防止其在实时应用中的利用。我们通过引入一种名为地理语义解析(GS P)的新型地形标准和地理标记技术来解决这些限制。 GSP在自由文本中标识位置引用,并提取相应的地理坐标。为了达到这个目标,我们采用了一个语义的注释器来识别输入文本的相关部分,并将它们链接到知识图中的相应实体。然后,我们设计和实验有几种有效的策略来遍历知识图,从而扩展了地形标准任务的可用信息集。最后,我们利用所有可用信息来学习回归模型,从而选择用于GeoTag输入文本的最佳实体。我们在众所周知的参考数据集中评估GSP,包括几乎10 k与事件相关的推文,实现F1 = 0.66。我们将结果与2个基线和3个最先进的地形标准技术进行了广泛的结果,实现了最佳性能。在同一数据集上,竞争对手获得F1 <= 0.55。我们通过对我们的结果进行深入分析,表明GSP的整体卓越性能主要是由于现有技术召回的巨大改善。

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