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Efficient Routing Algorithms Combining History and Social Predictors in Mobile Social Networks

机译:高效的路由算法结合移动社交网络中的历史和社会预测因子

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A mobile Social Network (MSN) is a type of wireless networks formed by people moving around carrying mobile devices. In this paper, we specifically study the MSNs that are formed impromptu, e.g. when people gather together for a conference, event, or festival. We refer to them as Impromptu Mobile Social Networks (IMSNs), which allow people to communicate in a lightweight fashion based on contact opportunities via local wireless bandwidth. In IMSNs, node connections are time-dependent and short-term. The existing MSN routing algorithms using network analysis of social network graphs and static node social features may not be suitable for IMSNs. Thus, we propose novel hybrid routing algorithms based on two time-related factors node contact history and dynamic social features to capture node mobility in IMSNs. We first propose a hybrid algorithm called Hisso that makes a weighted combination of the history and the social predictors based on these two factors. And then we upgrade it to Enhanced Hisso by introducing a novel concept called social circle in the social predictor to improve message delivery. Simulation results comparing our algorithms with the existing ones and with the ones that only consider one factor show that our algorithms outperform the others in terms of delivery ratio and latency with a slight increase in the number of forwardings. The results also confirm the effectiveness of using a node's social circle in our algorithms.
机译:移动社交网络(MSN)是一种由携带移动设备周围移动的人形成的无线网络。在本文中,我们专门研究形成的MSNS即兴,例如:当人们聚集在一起会议,活动或节日。我们将它们称为Impromptu移动社交网络(IMSN),这允许人们根据通过当地无线带宽的联系机会以轻量级方式以轻量级方式沟通。在IMSN中,节点连接是时间依赖和短期。使用社交网络图和静态节点的网络分析的现有MSN路由算法可能不适合IMSN。因此,我们提出了基于两个时间相关的因素节点联系历史和动态社交功能的新型混合路由算法,以捕获IMSN中的节点移动性。我们首先提出了一种称为Hisso的混合算法,其基于这两个因素使历史和社会预测器的加权组合。然后,我们通过在社会预测指标中引入一个名为社会圈的新颖概念来提高Hisso来增强Hi​​sso,以改善信息传递。仿真结果与现有的算法与现有算法进行比较,并且只考虑一个因素显示我们的算法在交付比率和延迟方面优于其他因素,并且转发数量略有增加。结果还确认了在算法中使用节点的社交圈的有效性。

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