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Social media enabled human sensing for smart cities

机译:社交媒体使人类能够感知智慧城市

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摘要

Smart city initiatives rely on real-time measurements and data collected by a large number of heterogenous physical sensors deployed throughout a city. Physical sensors, however, are fraught with interoperability, dependability, management and political challenges. Furthermore, these sensors are unable to sense the opinions and emotional reactions of citizens that invariably impact smart city initiatives. Yet everyday, millions of dwellers and visitors of a city share their observations, thoughts, feelings and experiences, or in other words, their perceptions about their city through social media updates. This paper reasons why "human sensors", namely, citizens that share information about their surroundings via social media can supplement, complement, or even replace the information measured by physical sensors. We present a methodology based on probabilistic language modeling to extract and visualize such perceptions that may be relevant to smart cities from social media updates. Using more than six million geo-tagged tweets collected over regions that feature widely varying geographical, social, cultural and political characteristics and tweet densities, we illustrate the potential of social media enabled human sensing to address diverse smart city challenges.
机译:智慧城市计划依赖于实时测量和由遍布整个城市的大量异构传感器收集的数据。然而,物理传感器充满了互操作性,可靠性,管理和政治挑战。此外,这些传感器无法感知市民的意见和情感反应,这些意见和反应总是影响智慧城市的举措。然而,每天都有数以百万计的城市居民和游客通过社交媒体更新分享他们的观察,思想,感受和经验,或者换句话说,他们对城市的看法。本文说明了为什么“人类传感器”(即通过社交媒体共享有关周围环境的信息的公民)可以补充,补充甚至取代物理传感器所测量的信息。我们提出一种基于概率语言建模的方法,以从社交媒体更新中提取和可视化与智慧城市相关的感知。通过在地区,地理,社会,文化和政治特征以及推文密度变化广泛的地区收集的超过600万条带有地理标签的推文,我们说明了社交媒体使人类感知解决各种智能城市挑战的潜力。

著录项

  • 来源
    《AI communications 》 |2016年第1期| 57-75| 共19页
  • 作者单位

    Wright State Univ, Dept Comp Sci & Engn, Kno E Sis Res Ctr, Dayton, OH 45435 USA;

    Univ Connecticut, Dept Comp Sci & Engn, Storrs, CT USA;

    Univ Connecticut, Dept Comp Sci & Engn, Storrs, CT USA;

    ABB Corp Res, Ind Software Syst, Data Analyt Grp, Raleigh, NC USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Social media; smart cities; language modeling; geo-locations;

    机译:社交媒体;智能城市;语言建模;地理位置;

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