"I'm eating a sandwich in Glasgow": modeling locations with tweets

SMUC '11 Pub Date : 2011-10-28 DOI:10.1145/2065023.2065039
Sheila Kinsella, Vanessa Murdock, Neil O'Hare
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引用次数: 262

Abstract

Social media such as Twitter generate large quantities of data about what a person is thinking and doing in a particular location. We leverage this data to build models of locations to improve our understanding of a user's geographic context. Understanding the user's geographic context can in turn enable a variety of services that allow us to present information, recommend businesses and services, and place advertisements that are relevant at a hyper-local level. In this paper we create language models of locations using coordinates extracted from geotagged Twitter data. We model locations at varying levels of granularity, from the zip code to the country level. We measure the accuracy of these models by the degree to which we can predict the location of an individual tweet, and further by the accuracy with which we can predict the location of a user. We find that we can meet the performance of the industry standard tool for predicting both the tweet and the user at the country, state and city levels, and far exceed its performance at the hyper-local level, achieving a three- to ten-fold increase in accuracy at the zip code level.
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“我正在格拉斯哥吃三明治”:用推特为地点建模
像推特这样的社交媒体会产生大量关于一个人在特定地点的想法和行为的数据。我们利用这些数据来建立位置模型,以提高我们对用户地理环境的理解。了解用户的地理环境可以反过来提供各种服务,使我们能够呈现信息,推荐企业和服务,并在超本地级别放置相关广告。在本文中,我们使用从地理标记Twitter数据中提取的坐标来创建位置的语言模型。我们以不同的粒度级别对位置进行建模,从邮政编码到国家级别。我们通过预测单个tweet位置的程度来衡量这些模型的准确性,进而通过预测用户位置的准确性来衡量。我们发现,我们可以满足行业标准工具在国家、州和城市级别上预测推文和用户的性能,并且远远超过其在超本地级别上的性能,在邮政编码级别上实现了三到十倍的准确性提高。
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