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Stumbl: Using Facebook to collect rich datasets for opportunistic networking research

机译:Stumbl:使用Facebook收集丰富的数据集以进行机会网络研究

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Opportunistic networks use human mobility and consequent wireless contacts between mobile devices to disseminate data in a peer-to-peer manner. Designing appropriate algorithms and protocols for such networks is challenging as it requires understanding patterns of (1) mobility (who meets whom), (2) social relations (who knows whom) and (3), communication (who communicates with whom). To date, apart from few small test setups, there are no operational opportunistic networks where measurements could reveal the complex correlation of these features of human relationships. Hence, opportunistic networking research is largely based on insights from measurements of either contacts, social networks, or communication, but not all three combined. In this paper we report an experiment called Stumbl, as a step towards collecting rich datasets comprising social, mobility and communication ties. Stumbl is a Facebook application that provides participating users with a user-friendly interface to report their daily face-to-face meetings with other Facebook friends. It also logs user interactions on Facebook (e.g. comments, wall posts, likes). This way the contact graph, social graph, and activity graphs for the same set of users could be compared and analyzed. We report here preliminary results and analyses of a first experiment we have performed.
机译:机会网络使用人类移动性以及随之而来的移动设备之间的无线联系来以对等方式分发数据。为此类网络设计适当的算法和协议具有挑战性,因为它需要了解以下模式:(1)流动性(谁见谁),(2)社会关系(谁知道谁)和(3)通讯(谁与谁进行沟通)。迄今为止,除了少量的小型测试装置外,还没有可操作的机会主义网络在其中测量可以揭示人际关系这些特征的复杂关联。因此,机会网络研究主要基于对联系人,社交网络或通信的测量得出的见解,但并非三者结合。在本文中,我们报告了一个名为Stumbl的实验,这是朝着收集包含社交,流动性和沟通纽带的丰富数据集迈出的一步。 Stumbl是一个Facebook应用程序,为参与的用户提供了一个用户友好的界面,可以报告他们与其他Facebook朋友的日常面对面会议。它还会在Facebook上记录用户互动(例如评论,留言,喜欢)。这样,可以比较和分析同一组用户的联系图,社交图和活动图。我们在这里报告初步结果并分析了我们执行的第一个实验。

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