极化源人群传感

Md. Tanvir Al Amin, T. Abdelzaher, Dong Wang, B. Szymanski
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引用次数: 18

摘要

本文提出了一种新的群体感知应用模型,其中人类作为感知源来报告有关物理世界的信息。与之前关于该主题的工作相反,我们考虑了一个模型,其中所讨论的源是极化的。例如,在政治争端和涉及不同社区的情况下,可能就是这种情况,这些社区的信仰大相径庭,影响了他们对现实世界事件的解释和报道。当震源发生极化时,重建准确的地真值变得更加复杂。本文描述了一种在存在偏振源的情况下显著提高重构结果质量的算法。为了进行评估,我们记录了在最近埃及反对前总统的起义期间,Twitter上四个月的人类观察结果。然后,我们使用我们的算法来重建事件的一个版本,并将其与由最先进的算法产生的其他版本进行比较。我们对数据集的分析显示,在社交网络中存在两个明确定义的阵营,它们倾向于传播大量不相交的主张(这表明存在两极分化),以及第三个群体,其主张与前两个群体的子集重叠。实验表明,在存在极化的情况下,我们的重建比现有的算法更倾向于与物理世界中的真实情况保持一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Crowd-Sensing with Polarized Sources
The paper presents a new model for crowd-sensing applications, where humans are used as the sensing sources to report information regarding the physical world. In contrast to previous work on the topic, we consider a model where the sources in question are polarized. Such might be the case, for example, in political disputes and in situations involving different communities with largely dissimilar beliefs that color their interpretation and reporting of physical world events. Reconstructing accurate ground truth is more complicated when sources are polarized. The paper describes an algorithm that significantly improves the quality of reconstruction results in the presence of polarized sources. For evaluation, we recorded human observations from Twitter for four months during a recent Egyptian uprising against the former president. We then used our algorithm to reconstruct a version of events and compared it to other versions produced by state of the art algorithms. Our analysis of the data set shows the presence of two clearly defined camps in the social network that tend of propagate largely disjoint sets of claims (which is indicative of polarization), as well as third population whose claims overlap subsets of the former two. Experiments show that, in the presence of polarization, our reconstruction tends to align more closely with ground truth in the physical world than the existing algorithms.
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