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Observational Comparison of Geo-tagged and Randomly-drawn Tweets

机译:地理标记和随机绘制的推文的观察比较

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摘要

Twitter is a ubiquitous source of micro-blog social media data, providing the academic, industrial, and public sectors real-time access to actionable information. A particularly attractive property of some tweets is geo-tagging, where a user account has opted-in to attaching their current location to each message. Unfortunately (from a researcher's perspective) only a fraction of Twitter accounts agree to this, and these accounts are likely to have systematic diffences with the general population. This work is an exploratory study of these differences across the full range of Twitter content, and complements previous studies that focus on the English-language subset. Additionally, we compare methods for querying users by self-identified properties, finding that the constrained semantics of the "description" field provides cleaner, higher-volume results than more complex regular expressions.
机译:Twitter是微博社交媒体数据无处不在的来源,可为学术,工业和公共部门提供对可操作信息的实时访问。一些推文的一个特别吸引人的特性是地理标记,用户帐户已选择将其当前位置附加到每条消息上。不幸的是(从研究人员的角度来看),只有一小部分Twitter帐户同意这一点,并且这些帐户可能与一般人群存在系统性差异。这项工作是对整个Twitter内容中这些差异的探索性研究,并补充了以前针对英语子集的研究。另外,我们比较了通过自定义属性查询用户的方法,发现\“ description \”字段的约束语义比更复杂的正则表达式提供了更整洁,更大量的结果。

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