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Twitter user geolocation using web country noun searches

机译:推特用户Geolocation使用Web Country Noun搜索

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摘要

Several Web and social media analytics require user geolocation data. Although Twitter is a powerful source for social media analytics, its user geolocation is a nontrivial task. This paper presents a purely word distribution method for Twitter user country geolocation. In particular, we focus on the frequencies of tweet nouns and their statistical matches with Google Trends world country distributions (GTN method). Several experiments were conducted, using a recently created dataset of 744,830 tweets produced by 3298 users from 54 countries and written in 48 languages. Overall, the proposed GTN approach is competitive when compared with a state-of-the-art world distribution geolocation method. To reduce the number of Google Trends queries, we also tested a machine learning variant (GTN2) that is capable of matching the GTN responses with an 80% accuracy while being much faster than GTN.
机译:几个网络和社交媒体分析需要用户地理位置数据。虽然Twitter是社交媒体分析的强大来源,但其用户地理位置是一个非竞争任务。本文介绍了Twitter用户国家地理位置的纯粹字分配方法。特别是,我们专注于Tweet名词的频率及其与Google Trends世界国家分布(GTN方法)的统计匹配。使用来自54个国家的3298个用户生产的最近创建的744,830个推文的最近创建的数据集进行了几个实验,并用48种语言编写。总体而言,与最先进的世界分布地理定位方法相比,建议的GTN方法是竞争力的。为了减少Google趋势查询的数量,我们还测试了一种机器学习变体(GTN2),其能够将GTN响应与80%的精度匹配,同时比GTN快得多。

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