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Real-Time Traffic Event Detection From Social Media

机译:社交媒体的实时交通事件检测

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摘要

Smart communities are composed of groups, organizations, and individuals who share information and make use of that shared information for better decision making. Shared information can come from many sources, particularly, but not exclusively, from sensors and social media. Social media has become an important source of near-instantaneous user-generated information that can be shared and analyzed to support better decision making. One domain where social media data can add value is transportation and traffic management. This article looks at the exploitation of Twitter data in the traffic reporting domain. A key challenge is how to identify relevant information from a huge amount of user-generated data and then analyze the relevant data for automatic geocoded incident detection. The article proposes an instant traffic alert and warning system based on a novel latent Dirichlet allocation (LDA) approach ("tweet-LDA"). The system is evaluated and shown to perform better than related approaches.
机译:智能社区由分享信息的组,组织和个人组成,并利用共享信息以获得更好的决策。共享信息可以来自许多来源,特别是,但不是完全来自传感器和社交媒体。社交媒体已成为可以共享和分析的近瞬时用户生成信息的重要来源,以支持更好的决策。社交媒体数据可以增加值的一个域是运输和流量管理。本文介绍了流量报告域中推特数据的开发。关键挑战是如何从大量用户生成的数据中识别相关信息,然后分析自动地理编码事件检测的相关数据。本文提出了一种基于新型潜在Dirichlet分配(LDA)方法的即时交通警报系统(“Tweet-LDA”)。该系统被评估并显示比相关方法更好。

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