Twitter Geolocation using Knowledge-Based Methods

NUT@EMNLP Pub Date : 1900-01-01 DOI:10.18653/v1/W18-6102
Taro Miyazaki, Afshin Rahimi, Trevor Cohn, Timothy Baldwin
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引用次数: 15

Abstract

Automatic geolocation of microblog posts from their text content is particularly difficult because many location-indicative terms are rare terms, notably entity names such as locations, people or local organisations. Their low frequency means that key terms observed in testing are often unseen in training, such that standard classifiers are unable to learn weights for them. We propose a method for reasoning over such terms using a knowledge base, through exploiting their relations with other entities. Our technique uses a graph embedding over the knowledge base, which we couple with a text representation to learn a geolocation classifier, trained end-to-end. We show that our method improves over purely text-based methods, which we ascribe to more robust treatment of low-count and out-of-vocabulary entities.
使用基于知识的方法进行Twitter地理定位
从微博的文本内容中自动定位微博尤其困难,因为许多位置指示术语都是罕见的术语,特别是实体名称,如地点、人员或当地组织。它们的低频率意味着在测试中观察到的关键术语在训练中通常是看不见的,这样标准分类器就无法为它们学习权重。我们提出了一种使用知识库对这些术语进行推理的方法,通过利用它们与其他实体的关系。我们的技术在知识库上使用图嵌入,我们将其与文本表示相结合,以学习端到端训练的地理位置分类器。我们表明,我们的方法比纯基于文本的方法有所改进,我们将其归因于对低计数和词汇表外实体的更健壮的处理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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