基于认知的移动社交网络自我网络检测系统

M. Mordacchini, A. Passarella, M. Conti
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引用次数: 3

摘要

在下一代移动系统中,关于用户社交网络结构的信息将是基础的,是社交网络应用程序的关键元素,也是个性化移动应用程序/服务行为的关键上下文信息。在本文中,我们特别关注自我网络的检测。它们是由个人(自我)和与她有社会关系的所有其他人组成的网络。我们提出了一种完全分散的算法,允许每个用户的移动设备识别其用户自我网络的结构。该算法监控自我与同伴之间的社会互动模式。它是完全去中心化的,只使用本地信息在每个单独的节点上运行,并随着网络规模的扩大而扩展。它不会揭示社会互动模式,并且能够动态检测自我网络结构的变化,具有自适应性。该算法基于社会认知启发式,即认知心理学文献中描述的人类大脑如何对社会关系进行分组的模型。因此,我们的方法在用户的个人移动设备中再现了人类用户用来理解自我网络结构的认知过程。我们在真实的交互数据集上进行了测试,这些交互数据集对应于(i)物理接触和(ii)在线社交网络中的信息交换。我们表明,在这两种情况下,检测到的社会结构与社会科学文献中描述的非常一致。此外,我们还研究了算法的动态行为,强调了这些结构如何随时间动态演变。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Cognitive-Based Ego Network Detection System for Mobile Social Networking
In future generation mobile systems information about social networking structures of users will be fundamental, being a key element for social networking applications, and a crucial contextual information for personalising the behaviour of mobile applications/services. In this paper, we focus specifically on the detection of ego networks. They are networks formed by an individual (ego) and all the other people she has a social relationship with. We propose a completely decentralised algorithm that allows each user's mobile device to identify the structure of its user's ego network. The algorithm monitors social interaction patterns between the ego and its peers. It is completely decentralised and runs at each individual node using local information only, scaling with the network size. It does not disclose social interaction patterns, and it is able to dynamically detect changes in the structure of the ego network, being self-adaptive. The algorithm is based on social cognitive heuristics, i.e. Models about how the human brain groups social relationships, described in the cognitive psychology literature. Therefore, our approach reproduces - in users' personal mobile devices - the cognitive processes used by their human users to understand their ego networks' structure. We test it on real datasets of interactions corresponding to (i) physical contacts and (ii) exchange of information in online social networks. We show that in both cases the detected social structures are remarkably consistent with those described in the social sciences literature. In addition, we study the dynamic behaviour of the algorithm, highlighting how such structures evolve dynamically over time.
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