帮派网络、邻里与假日:社交媒体的时空模式

Nibir Bora, V. Zaytsev, Yu-Han Chang, R. Maheswaran
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引用次数: 9

摘要

由支持位置服务的移动设备产生的社交媒体产生了大量基于位置的内容。对这些数据的时空分析有助于为人类行为和流动模式建模提供新的方法。在本文中,我们使用超过1000万条来自洛杉矶市的地理标记推文作为对人类运动的观察,并应用它们来理解地理区域、社区和帮派领地之间的关系。使用基于图的街头帮派区域表示作为顶点,它们之间的相互作用作为边,我们训练机器学习分类器来区分竞争和非竞争链接。我们正确识别了89%的真正竞争网络,比标准基线高出约30%。观察更大的社区,我们能够证明离家的距离遵循幂律分布,位移方向,即运动方向的分布,可以用作识别物理(或地理)障碍的轮廓,当它不均匀时。最后,考虑到tweet的时间维度,我们通过识别tweet模式中的不规则性来检测城市周围发生的事件。
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Gang Networks, Neighborhoods and Holidays: Spatiotemporal Patterns in Social Media
Social media generated by location-services-enabled cellular devices produce enormous amounts of location-based content. Spatiotemporal analysis of such data facilitate new ways of modeling human behavior and mobility patterns. In this paper, we use over 10 millions geo-tagged tweets from the city of Los Angeles as observations of human movement and apply them to understand the relationships of geographical regions, neighborhoods and gang territories. Using a graph based-representation of street gang territories as vertices and interactions between them as edges, we train a machine learning classifier to tell apart rival and non-rival links. We correctly identify 89% of the true rivalry network, which beats a standard baseline by about 30%. Looking at larger neighborhoods, we were able to show that distance traveled from home follows a power-law distribution, and the direction of displacement, i.e., the distribution of movement direction, can be used as a profile to identify physical (or geographic) barriers when it is not uniform. Finally, considering the temporal dimension of tweets, we detect events taking place around the city by identifying irregularities in tweeting patterns.
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