使用人类作为传感器:一个估计理论的观点

Dong Wang, Md. Tanvir Al Amin, Shen Li, T. Abdelzaher, Lance M. Kaplan, Siyu Gu, Chenji Pan, Hengchang Liu, C. Aggarwal, R. Ganti, Xinlei Wang, P. Mohapatra, B. Szymanski, H. Le
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引用次数: 190

摘要

社交网络内容的爆炸性增长表明,迄今为止最大的“传感器网络”可能是人类。本文在参与式感知模型的基础上,探讨了利用社会网络作为传感器网络的前景,从而产生了一个有趣的可靠感知问题。在这个问题中,个人由偶尔观察物理世界的传感器(数据源)表示。这些观察可能是对的,也可能是错的,因此被视为二元主张。可靠的感知问题是确定报告观测的正确性。从网络传感的角度来看,这种传感问题的不同之处在于,在人类参与者的情况下,不仅来源的可靠性通常是未知的,而且原始数据的来源也可能是不确定的。个人可能会把别人的观察报告为自己的。本文的贡献在于开发了一个模型,该模型考虑了这种信息共享对可靠感知的分析基础的影响,并将其嵌入到一个名为Apollo的工具中,该工具使用Twitter作为“传感器网络”来观察物理世界中的事件。利用基于twitter的案例研究进行的评估显示,阿波罗认为正确的观测结果与地面事实之间存在良好的对应关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using humans as sensors: An estimation-theoretic perspective
The explosive growth in social network content suggests that the largest “sensor network” yet might be human. Extending the participatory sensing model, this paper explores the prospect of utilizing social networks as sensor networks, which gives rise to an interesting reliable sensing problem. In this problem, individuals are represented by sensors (data sources) who occasionally make observations about the physical world. These observations may be true or false, and hence are viewed as binary claims. The reliable sensing problem is to determine the correctness of reported observations. From a networked sensing standpoint, what makes this sensing problem formulation different is that, in the case of human participants, not only is the reliability of sources usually unknown but also the original data provenance may be uncertain. Individuals may report observations made by others as their own. The contribution of this paper lies in developing a model that considers the impact of such information sharing on the analytical foundations of reliable sensing, and embed it into a tool called Apollo that uses Twitter as a “sensor network” for observing events in the physical world. Evaluation, using Twitter-based case-studies, shows good correspondence between observations deemed correct by Apollo and ground truth.
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