社会意识普遍网络的动态

W. Junior, P. Mendes
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引用次数: 4

摘要

具有社会意识的普适网络考虑用户的社会行为来克服间断的端到端连接,这是这种类型的网络所固有的:转发决策考虑有关节点行为的本地知识来预测未来的相遇。复杂网络分析(CNA)通过将连接图聚合成波动较小的社会图来支持联系预测。然而,这种图表的结构是动态的,因为用户的社交行为和互动在他们的日常生活中以及根据他们的移动性而变化。因此,聚合算法应该能够创建反映人们动态行为的社交图表。本文讨论了人类行为感知聚合,以允许基于人们日常生活中观察到的社会变化创建图形。通过关注网络的动态,我们展示了反映人类社会行为和流动性不同阶段的社交图,能够在不同的时间框架内利用网络潜在的小世界属性,提高社会意识机会转发的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamics of social-aware pervasive networks
Social-aware pervasive networks consider the users' social behavior to overcome intermittent end-to-end connectivity, inherent to this type of networking: forwarding decisions consider local knowledge about the behavior of nodes to predict future encounters. Complex Network Analysis (CNA) has been used to support contact prediction, by aggregating connectivity graphs into less volatile social graphs. Nevertheless, the structure of such graphs is rather dynamic, since users' social behavior and interactions vary throughout their daily routines and according to their mobility. Consequently, aggregation algorithms should be able to create social graphs that reflect the resulting dynamic behavior of people. This paper discusses on human behavior-aware aggregation to allow the creation of graphs based on social variations observed in people's daily routines. By focusing on the dynamics of the network, we show that social graphs, reflecting different stages of human social behavior and mobility, are able to take advantage of the potential small-world properties of networks in different time frames, improving the performance of social-aware opportunistic forwarding.
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