基于纽带强度的社交媒体位置预测

Jeffrey McGee, James Caverlee, Zhiyuan Cheng
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引用次数: 160

摘要

我们提出了一种新的基于网络的社交媒体位置估计方法,该方法集成了用户之间社会联系强度的证据,以改进位置估计。具体地说,我们提出了一个位置估计器——FriendlyLocation——它利用了一对用户之间的联系强度和这对用户之间的距离之间的关系。基于对超过1亿条地理编码推文和7300万Twitter用户资料的检查,我们确定了几个因素,如关注者数量和用户互动方式,这些因素可以强烈地揭示一对用户之间的距离。我们使用这些因素来训练一个决策树来区分可能住在附近的用户对和可能住在不同区域的用户对。我们使用决策树的结果作为最大似然估计器的输入来预测用户的位置。我们发现,相对于最先进的技术,该方法显著改善了位置估计的结果。我们的系统仅使用来自用户朋友和朋友的朋友的信息,就将80%的Twitter用户的平均误差距离从40英里减少到21英里,这对于增强传统社交媒体和丰富基于位置的服务具有更精细和准确的位置估计具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Location prediction in social media based on tie strength
We propose a novel network-based approach for location estimation in social media that integrates evidence of the social tie strength between users for improved location estimation. Concretely, we propose a location estimator -- FriendlyLocation -- that leverages the relationship between the strength of the tie between a pair of users, and the distance between the pair. Based on an examination of over 100 million geo-encoded tweets and 73 million Twitter user profiles, we identify several factors such as the number of followers and how the users interact that can strongly reveal the distance between a pair of users. We use these factors to train a decision tree to distinguish between pairs of users who are likely to live nearby and pairs of users who are likely to live in different areas. We use the results of this decision tree as the input to a maximum likelihood estimator to predict a user's location. We find that this proposed method significantly improves the results of location estimation relative to a state-of-the-art technique. Our system reduces the average error distance for 80% of Twitter users from 40 miles to 21 miles using only information from the user's friends and friends-of-friends, which has great significance for augmenting traditional social media and enriching location-based services with more refined and accurate location estimates.
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